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EFFECTS OF WORKING CAPITAL MANAGEMENT ON FINANCIAL PERFORMANCE OF ENERGY AND PETROLEUM COMPANIES LISTED AT NAIROBI SECURITIES EXCHANGE BY PAUL MASINDE SIMIDI A RESEARCH SUBMITTED IN PARTIAL FULFILLMENT OF THE REQUIREMENTS OF MASTER OF BUSINESS ADMINISTRATION (MBA), SCHOOL OF BUSINESS, UNIVERSITY OF NAIROBI OCTOBER, 2015 i DECLARATION This research project is my original work and has not been submitted for a degree in any other university. Signed……………………………………….…………………..…Date………………… Paul Masinde Simidi Reg. No. D61/68512/2013 This research project has been submitted for examination with my approval as the University supervisor. Signed……………………………………….………Date……………………… Dr. Duncan Elly Ochieng, PhD, CIFA Lecturer, Department of Finance and Accounting University of Nairobi ii DEDICATION This research project is dedicated to my family Caroline, Breana, Ryan and Prince. iii ACKNOWLEDGEMENT I want to pass my gratitude to my supervisors Dr. Duncan Elly Ochieng, for having provided valuable guidance during the research period. I also owe gratitude to University of Nairobi campus for great atmosphere, competent personnel and interesting courses offered during my study. I want to acknowledge the support of my family Caroline, Breana, Ryan and Prince. My sincere hope is that the findings of this research project will stimulate and benefit the research about working capital management in the future. iv TABLE OF CONTENTS DECLARATION .......................................................................................................... ii DEDICATION ............................................................................................................. iii ACKNOWLEDGEMENT ........................................................................................... iv TABLE OF CONTENTS ..............................................................................................v LIST OF TABLES ..................................................................................................... viii LIST OF ABBREVIATIONS ...................................................................................... ix DEFINITION OF KEY TERMS ..................................................................................x ABSTRACT……..………………………………………………………………………xi CHAPTER ONE – INTRODUCTION .........................................................................1 1.1. Background of the study ...........................................................................................1 1.1.1 Working Capital Management .........................................................................2 1.1.2 Firm’s Performance .........................................................................................5 1.1.3 Relationship between WCM and Firm’s Performance ......................................6 1.1.4 Energy and Petroleum Sector in Kenya ...........................................................7 1.2. The Research Problem ..............................................................................................8 1.3. Research Objective ................................................................................................. 10 1.4. Value of the Study .................................................................................................. 10 CHAPTER TWO- LITERATURE REVIEW ............................................................ 13 2.1. Introduction ............................................................................................................ 13 2.2. Theoretical Review ................................................................................................. 13 v 2.3. Determinants of firm’s Performance ....................................................................... 16 2.3.1. Corporate Governance .............................................................................. 17 2.3.2. Economic Conditions ............................................................................... 17 2.3.3. Capital Structure....................................................................................... 18 2.3.4. Risk Appetite............................................................................................ 18 2.4. Empirical Review ................................................................................................... 18 CHAPTER THREE – RESEARCH METHODOLOGY ........................................... 24 3.1 Introduction ............................................................................................................. 24 3.2 Research Design ...................................................................................................... 24 3.4. Data Collection Method .......................................................................................... 25 3.4.1. Data Collection Tool ................................................................................ 25 3.5. Data Analysis.......................................................................................................... 26 3.5.1. Analytical Model ...................................................................................... 26 3.5.2. Operationalization of Study Variables ...................................................... 27 3.5.3. Test of Significance .................................................................................. 28 CHAPTER FOUR - DATA ANALYSIS, RESULTS AND DISCUSSION................ 29 4.1. Introduction ............................................................................................................ 29 4.2. Descriptive Statistics ............................................................................................... 29 4.3. Diagnostic Tests ..................................................................................................... 30 4.4. Correlation Analysis ............................................................................................... 33 4.5. Effects of WCM on Financial Performance ............................................................. 38 vi CHAPTER FIVE – SUMMARY, CONCLUSIONS AND RECOMMENDATIONS ...................................................................................................................................... 42 5.1. Introduction ............................................................................................................ 42 5.2. Summary of Findings .............................................................................................. 43 5.3. Conclusions ............................................................................................................ 45 5.4. Limitation of the study ............................................................................................ 46 5.5. Recommendations................................................................................................... 47 5.6. Suggestions for further research .............................................................................. 49 REFERENCES ............................................................................................................ 51 APPENDICES ............................................................................................................. 57 APPENDIX I: DATA COLLECTION TOOL .............................................................. 57 APPENDIX II: ENERGY AND PETROLEUM COMPANIES LISTED AT NSE ....... 58 APPENDIX III: NORMALITY DISTRIBUTION OF ROA ........................................ 59 APPENDIX IV: NORMALITY DISTRIBUTION OF ICP ........................................... 60 APPENDIX V: NORMALITY DISTRIBUTION OF ACP ........................................... 61 APPENDIX VI: NORMALITY DISTRIBUTION OF APP .......................................... 62 APPENDIX VII: NORMALITY DISTRIBUTION OF CCC ........................................ 63 vii LIST OF TABLES Table 4.1: Descriptive Statistics ..................................................................................... 29 Table 4.2a: Tests of Normality ....................................................................................... 31 Table: 4.2b Durbin-Watson test ..................................................................................... 32 Table 4.3: Correlations .................................................................................................. 33 Table 4.4a: Combined Model Summary ......................................................................... 38 Table 4.4b: Combined ANOVAa ................................................................................... 39 Table 4.4c: Coefficientsa ................................................................................................ 39 viii LIST OF ABBREVIATIONS ACP -Accounts Collection Period APP - Account Payable Period CCC - Cash Conversion Cycle EAC- East African Community EBIT - Earnings before Interest & Tax EPS - Earnings per Share ERC - Energy Regulatory Commission GPM - Gross Profit Margin ICP - Inventory Conversion Period KENGEN - Kenya Electricity Generating Company Limited KIPRA – Kenya Institute for Public Policy Research And Analysis KPLC - Kenya Power and Lighting Company MOE - Ministry of Energy NPM - Net Profit Margin NPV - Net Present Value NSE - Nairobi Securities Exchange NTC - Net-Trade Cycle NYSE - New York Stock Exchange OPEC - Organization of the Petroleum Exporting Companies OPM - Operating Profit Margin PIEA - Petroleum Institute of East Africa RCP - Receivable Collection Period ROCE - Return on Capital Employed ROI - Return on Investment RONW - Return on Net Worth SMEs - Small Medium Enterprises WCM - Working Capital Management ix DEFINITION OF KEY TERMS Account Collection Period (ACP) - is the average length of time required by a firm to convert the firm’s receivables into cash. Accounts Payable Period (APP) - is the average length of time between the purchase of materials and labor from suppliers and the settlement (payment) of payable accounts. Cash Conversion cycles (CCC) - Is the length of time between when the company makes payments for inventories and when it receives cash inflows from the sales. Inventory Conversion Period – Number of days it takes to convert inventories into sales. Profitability - Is the income available to common shareholders which is revenues less expenses, taxes and preferred dividends but before paying common dividend. ABSTRACT x The Kenya’s Vision 2030 plan has identified Energy and Petroleum sector as a key foundation and one of the infrastructural enablers upon which the economic, social and political pillars of its long-term development strategy will be built. However, energy and petroleum sector in Kenya faces challenges such as low access to energy, high costs, irregular supply as well as heavy capital investment requirements. Such challenges have made Energy and Petroleum companies to maintain either excessive or inadequate working capital levels. The objective of the study was to establish the effect of working capital management on the financial performance of Energy and Petroleum Companies listed at the Nairobi Securities Exchange. The census research adopted a correlation design. A data collection sheet was used to collect secondary data from the published financial statements of all Energy and Petroleum companies listed at Nairobi Securities Exchange for a period of eight years between 2007 and 2014. Both descriptive and quantitative analyses were adopted. Pearson correlation, regression and ANOVA analysis were conducted. The research indicated that WCM influence the ROA significantly. 17.8% of the variations in profitability was influenced by variations in WCM. The study established that the influence of WCM on profitability is statistically significant. It is therefore incumbent upon the Finance Managers of Energy and Petroleum companies listed at NSE to understand the business operations, and put in place robust WCM policy framework because of its implications on the financial performance of these companies. Adoption of these recommendations will lead to a vibrant and profitable Energy and Petroleum sector which is key to the achievement of Kenya’s Vision 2030. xi CHAPTER ONE – INTRODUCTION 1.1.Background of the study Working Capital Management (WCM) occupies the major portion of a finance Manager’s time and attention (Richard & Laughlin, 1980). This is because of its implication on both liquidity and performance of a firm. Managers are coming to realization that incorrect evaluation of the liquidity implications of the firm’s working capital needs may, in turn subject creditors and investors to an unanticipated risk of default (Richard &Laughlin, 1980).WCM remains one of the most important issues in the organization where many financial executives are struggling to identify the basic working capital drivers and the appropriate level of working capital (Lamberson, 1995). The main objectives of working capital management are therefore to minimize these risks by ensuring seamless business operations and at the same time ensuring the business is in a better position to meet its short-term obligations. Keynesians Theory, Operating Cycle Theory and Cash Conversion Cycle Theory are some of the theories that provide guidance on effective WCM. These theories emphasize the need to establish an optimal level of working capital. This need was arrived after realization that working capital elements including cash, inventories, accounts receivables, accounts payables are key to the smooth operation of the business but on the other hand bear a cost to the business. Baumal (1952) and Tobin (1956) noted that optimal cash balances, just like inventory models have cost associated with sourcing, maintenance, beside the benefits that firms derive from optimal cash levels. 1 Baumal (1952) developed the Economic Order Quantity (EOQ) of inventory management. The model strives to balance marginal cost associated with ordering and holding the inventory to minimum. Brigham & Ehrhardt (2012) held similar views where they observed that the twin goals of inventory management are to ensure sustainable operations as well as hold cost of ordering and carrying inventories to the lowest possible level. WCM management is therefore, a tradeoff between risk and profitability of the firm (Pandey, 1995). It is therefore incumbent upon Finance Managers to critically review working capital components to establish optimal levels. Oduor (2013) noted that the main goal for the energy sector in Kenya is to provide affordable, sustainable and reliable supply of energy that will stimulate high and sustained economic growth leading to higher income, increased employment and reduced poverty. Kenya National Bureau of Statistics (2015) noted that in 2014, Kenya spent a total of Kshs.333.1 billion in importation of petroleum products by various Oil and Petroleum companies which was 11.7% increment over the previous year. This is a huge investment and consequently working capital management is critical to meet the desired goals of the sector. 1.1.1 Working Capital Management Brigham and Ehrhardt (2012) noted that working capital refers to the current assets used in the operations of a firm. The net operating working capital is the current assets minus the current liabilities. A firm can operate either a relaxed or restricted WCM Policy. 2 Brigham and Ehrhardt (2012) noted that in a relaxed WCM policy, a firm would hold relatively large amounts of each type of current asset while in a restricted WCM policy; a firm would hold minimum amounts of each type of the current assets. Raheman and Nasr (1998) noted that WCM is the management of current assets to meet short term obligations of the company. Kallberg and Parkinson (1993) observed that in short-term financial management, a great deal of emphasis is placed on the levels and changes in current assets and liabilities. Horngren, Datar and Foster (2013) described inventory managements as the planning, coordinating and controlling activities related to the flow of inventory through and out of an organization. Brigham and Houston (2002) observed that inventory may be classified as Supplies, Raw materials, Work in progress and finished goods. Brigham and Ehrhardt (2012) noted that the twin goals of inventory management are to ensure the inventories needed to sustain the operations are available and that the firm should hold the cost of ordering and carrying inventories are held at lowest level possible. Pandey (1995) observed three motives why firms hold inventories: transactional, precautionary and speculative motives. A firm cam measure inventory management by analysis of the Inventory Conversion Period (ICP). Firms generally sell on cash basis. However, competitive pressure forces firms to offer credit. Brigham and Ehrhardt (2012) noted that carrying receivables has both direct and indirect cost, but also has an important benefit of increased sales. Martin, Petty, Keownand Scott (1991) observed that Accounts Receivables (AR) makes up a very large portion of 3 the firm’s assets; they actually composed of 25.97 % of a typical firm asset. Brigham and Ehrhardt (2012) added that receivables management begins with credit policy which summarizes credit period, discounts, and credit standards and collections terms. Kallberg and Parkinson (1993) noted that monitoring on both the aggregate and the individual level is commonly based on ageing schedule and on measuring Accounts Collection Period (ACP). Brigham and Ehrhardt (2012) observed that ACP is the average length of time required by a firm to convert the firm’s receivables into cash. Brigham and Ehrhardt (2012) explained that firms hold cash for transaction, precautionary purposes and compensation to the banks for providing loan and services. Brigham and Ehrhardt (2012) explained that Cash conversion cycles (CCC) focuses on the length of time between when the company makes payments and when it receives cash inflows. Berk and Demerzo (2011) observed that an important consideration for all firms is the ability to finance the transition from cash to inventories to receivables and back to cash. Pandey (1995) further noted that a firm should develop strategies regarding cash management which involves cash planning, managing the cash flow, optimal cash levels and investing surplus cash. Pandey (1995) noted that the cost of excess cash and the dangers of cash deficiency should be matched to determine the optimal level of cash balances. Firms generally make purchases from other firms on credit, recording debts as an account payable. Brigham and Ehrhardt (2012) noted that trade credit (Accounts payables) is the largest single category of operating current liability representing about 40% of the current liabilities of the average nonfinancial firm. Brigham and Ehrhardt (2012) further noted that 4 Accounts Payable Period (APP) is the average length of time between the purchase of materials and labor and the payment of cash for them. 1.1.2 Firm’s Performance Performance is the process of measuring the results of the firm’s policies and operations in monetary form (Metcalf & Titard, 1976). Brigham and Ehrhardt (2012) defined profitability as the income available to common shareholders which is revenues less expenses, taxes and preferred dividends but before paying common dividend. Shareholder value creation is the primary goal of all firms. In the absence of profitability the business will not survive in the long run. Measuring current and past profitability and projecting future profitability is very important. Measuring firm’s profitability is a strategic part of any successful business entity because the long term survival depends on its performance. Profitability is measured with a statement of comprehensive income. Ochieng (2012) noted that there exist an array of measures of firm performance, though there is yet to be a consensus on a universally acceptable measure of performance. Some of the performance measures of profitability include Net Income (NI), Return on Capital Employed (ROCE), Return on Investment (ROI), Operating Margins (OM) and Net Profit (NP). Brigham and Ehrhardt (2012) considers the measurement of Return on Capital Employed (ROCE) as a more comprehensive profitability measures because it gauges management’s ability to generate earnings from a capital investment. 5 1.1.3 Relationship between WCM and Firm’s Performance Peel and Wilson (1996) noted that there is a negative relationship between profitability and the cash conversion cycle, inventory receivable days, accounts payable days and accounts receivable days which were used as measures of working capital management efficacy. Peel and Wilson (1996) further observed that efficient WCM and more recently good credit management practice are pivotal to the health and performance of the small firm sector. Therefore it seems that operational profitability will determine how managers or owners will behave in terms of managing the working capital of the firm. Gul, Khan, Rehman, Khan, Khan and Khan (2013) noted that APP, growth and size have positive association with Profitability whereas ACP, ICP, CCC and DR have inverse relation with profitability. Gakure, Cheluget, Onyango and Keraro (2012) found that there is a negative coefficient relationship between ACP, APP, ICP and profitability but CCC was found to be positively correlated with profitability. Sharma and Kumar (2011) concluded that ICP and APP negatively correlated with a firm’s profitability, whereas number of ACP and cash CCC exhibit a positive relationship with profitability of the company. Gill, Biger and Mathur (2010) established significant relationship between the CCC and profitability, measured using GPM. The findings implied that firm’s management can create profits for their companies by handling correctly the CCC and by keeping accounts receivables at an optimal level. Overall from these studies done in the past, there is a relationship between working capital management and firm profitability in various 6 markets. There are various conclusions, but a majority of studies conclude a negative relationship between working capital management and firm profitability. 1.1.4 Energy and Petroleum Sector in Kenya The Kenyan Economy, population and industry are all expanding at such a rate that there is currently a 13.5% annual increase in demand for electricity demand in the country with demand expected to reach 15 GW in year 2030 (Ministry of Energy, 2013). Energy is essential to economic and social development and to improve the quality of life of the people and also an important development indicator (MOE, 2013). In Kenya, the main sources of energy are wood fuel, petroleum and electricity accounting for 69%, 22%, and 9% of the total energy respectively (Ministry of Energy, 2013). More precisely, 67.5% of electricity is generated using renewable energy sources which are predominantly Hydro with 47.8% and Geothermal with 12.4% respectively, while 32.5% is from fossil fuels (Ministry of Energy, 2013). The total electricity which is generated is shared by 20% of the population while the rest of the population remains without electricity (Ministry of Energy, 2013). Ministry of Planning and National Development (2007) reported that Kenya Vision 2030 has identified Energy sector as a key foundation and one of the infrastructural enablers upon which the economic, social and political pillars of its long-term development strategy will be built. The report further explained that the growth agenda is pegged on the Kenya Vision 2030, which aims at creating a globally competitive and prosperous country with a high quality of life by 2030. The petroleum sector boasts of over 30 oil importing and marketing companies comprising 7 of five major companies namely Shell, Total Kenya, KenolKobil, Oil Libya, Chevron and other emerging oil companies which include Government of Kenya (GoK) owned National Oil Corporation of Kenya (NOCK). At Nairobi Securities Exchange (NSE) only five Energy and Petroleum companies have been listed and they include: Total Kenya, KenolKobil, Kenya Electricity Generating Company Limited (KenGen), Umeme Ltd and the Kenya Power &Lighting Company ltd (KPLC). In Kenya, the price of petroleum products is regulated by the Energy regulatory Commission (ERC) that set the prices for various petroleum products. Globally Oil and Gas sectors has experienced price fall attributed to sharp growth in Non-Organization of the Petroleum Exporting Companies (OPEC) oil suppliers, sluggish oil demand brought about by 2008-9 financial crisis and subsequent global recession (OPEC, 2015). 1.2.The Research Problem Peel and Wilson (1996) observed that efficient WCM and more recently good credit management practice is pivotal to the health and performance of the small firms. WCM requires businesses to be run both efficiently as well as profitable. WCM management is therefore, a tradeoff between risk and profitability. Risk and profitability mismatch may increase firm’s profitability in the short run but at a risk of insolvency (Pandachi, 2006). Managers are therefore coming to realization that incorrect evaluation of the liquidity implications of the firm’s working capital needs may, in turn subject creditors and investors to an unanticipated risk of default (Richard &Laughlin, 1980). Contrary to the relative importance of WCM, the practice of WCM has been neglected (Smith, 1980). Energy is consumed in all sectors of economy including transport, manufacturing, 8 commercial, and residential. Energy and petroleum sector remain an engine for development globally as well as locally. Ministry of Planning and National Development (2007) has noted that Kenya is expected to be a middle income economy by year 2003. The ministry has further identified Energy sector as a key foundation and one of the infrastructural enablers upon which the economic, social and political pillars of its longterm development strategy will be built. However, energy sector in Kenya faces challenges such as low access to energy, high cost of energy, irregular supply and high cost of energy investments (KIPRA, 2013). It will therefore be in the interest of Kenya as a nation, to reduce the cost of production which includes cost of energy. Globally, the petroleum energy supply has outpaced demand resulting in oil prices tumbling by approximately 42% from the June 2014 peak (PIEA, 2015). The considerable low crude Oil prices are delivering a short term stimulus, not only to the East Africa Community (EAC) countries but also for many other countries around the work (PIEA, 2015). It is anticipated that the historic decline in crude Oil prices, will reduce inflation, the oil import bill, fiscal deficit and interest rates (PIEA, 2015). Price is a component of revenue and therefore international price changes will have an impact on the working capital component particularly inventories, receivables as well as cash for Energy and Petroleum companies. Various studies have been done internationally as well as locally on the effect of WCM on firm’s performance. Internationally, Deloof (2003), Falope and Ajilore (2009), Sharma and Kumar (2011), Garcia and Martinez (2007), Gill, Biger and Mathur (2010), Gul, Khan, 9 Rehman, Khan, Khan and Khan (2013),Shin and Soenen (1998) have all researched on WCM and its impact on performance of companies. Similarly, local studies by Gakure, Cheluget, Onyango and Keraro (2012), Mathura (2009), Akoto, Awunyo and Angmor (2013), Nyambwaga et al. (2012) have been conducted on Kenya firms. All these studies have established that WCM impacts on the profitability of a firm. However, these studies do not establish the impact of WCM on profitability of Energy and Petroleum companies. This is because minimal studies that have been conducted in the Kenyan economy particularly the Energy and Petroleum sector on the impact of working capital management and company’s performance. This research therefore aimed at addressing this gap. Secondly, previous studies have given conflicting findings. Nyambwaga et al. (2012) established a positive relationship between WCM and firm’s performance. Deloof (2003) on the other hand, noted a negative relationship between WCM and firms performance. This study therefore, sought to iron out these differences. The research therefore sought answers to the following research question: What are the effect of WCM practices on the performance of Energy and petroleum Companies listed at NSE? 1.3. Research Objective Objective of the study was to establish the effect of WCM on the financial performance of Energy and Petroleum firms listed on the Nairobi Securities Exchange. 1.4. Value of the Study There are various stakeholders and other parties such as regulators, scholars, practitioners of Finance and providers of capital who are more informed by this study as follows: 10 Regulators: Institutions such as Energy Regulatory Commission (ERC) are more informed on the impact of price controls on working capital components such as fuel inventories and reserves particularly its implication of the performance of Energy and Petroleum companies. Regulator can now make informed and prudent price control decisions. Ministry of Planning and National Development (2007) in its Vision 2030, has identified Energy sector as a key foundation and one of the infrastructural enablers upon which the economic, social and political pillars of its long-term development strategy will be built. Corporate WCM policy changes are more informed by the outcome of this research which will lead to a vibrant and well managed Energy and Petroleum sector, which will be a key milestone in the achievement of Kenya’s Vision 2030. Scholars and Researchers: There are still minimal studies that have been conducted in the Kenyan economy particularly the Energy and Petroleum sector on the impact of working capital management and company’s performance. This study was a contribution to fill this gap by estimating the relationship between working capital management variables and firm profitability of Energy and Petroleum companies in Kenya. Practice of Corporate Finance: This study enlightened the management of Energy and Petroleum companies firms to come up with working capital management policies such as credit policies, Treasury Policies, Inventory Management policies, Accounts Payable policies which will ensure improved company profitability through prudent WCM practices. 11 Providers of Capital: The findings of this study informed the providers of funds to better understand the implication of WCM practices on the performance of a company. The study provided more information for making informed decision to extend credit facilities to companies in the Energy and Petroleum sector. 12 CHAPTER TWO- LITERATURE REVIEW 2.1. Introduction Chapter two examined the literature relating to the objectives of the study. This chapter covered the key theories that guided the study as well as WCM practices and measurement. The chapter further reviewed the various determinants and measurements of the company performance. Lastly, this chapter concluded on the relevant empirical studies internationally and locally on WCM in order to outline the research gap. 2.2. Theoretical Review This study was guided by various theories of Working Capital Management (WCM). They include Keynesian Theory of Money, Operating Cycle Theory and Cash Conversion Cycle Theory. 2.2.1. Keynesian Theory of Money Keynes (1935) developed the General Theory of Employment, Interest and Money in which he argues three motives for holding cash namely transactional, precautionary and speculative motives. Transactional motive is the need for cash for the current transactions of personal or business exchanges (Keynes, 1935). Precautionary motive is the desire for security as to the future equivalent of a certain proportion of total resources (Keynes, 1935). The firm can also hold money for speculative motive which is the object of securing profits from knowing better than the market what the future will bring forth. 13 Brigham and Ehrhardt (2012) held similar views and explained that firms hold cash for two reasons namely for transactional reasons and for compensations to banks for providing loans and services. Brigham and Ehrhardt (2012) identified techniques such as synchronizing cash flows, speeding up cheque-clearing process, use of float and speeding up receipts as Cash as some of the WCM techniques. On synchronizing cash flows, firms can improve their forecast and by timing cash receipts to coincide with cash requirements, such firms can hold transactional balance to minimum (Brigham & Ehrhardt, 2012). Lockbox plans and payment by wire (automatic debts) are two major techniques largely used both to speed up collection and get funds where they are needed. A lockbox system is where the cheques are sent to post office boxes for direct banking, rather than to corporate headquarters (Brigham & Ehrhardt, 2012). An automatic debit is where payments are deducted from one account (customer) and added to other (recipient) account thereby speeding up the collection process. The Keynesian Theory of Money was key to this research because as noted by Baumal (1952) and Tobin (1956), the optimal cash balances, just like inventory models have cost associated with sourcing, maintenance, beside the benefits that firms derive from optimal cash levels. Therefore the levels of cash as WCM component will have an impact of the performance of the firm. 2.2.2. Operating Cycle Theory This theory was developed by Richard and Laughlin (1980). Incorporating accounts receivable and inventory turnover measures into the operating cycle concept provides a 14 more appropriate view of liquidity measurement than does reliance on current and acidtest ratios indicators of solvency (Richard & Laughlin, 1980). This additional liquidity measures explicitly recognizes that the life expectancies of some working capital component depends upon the extent to which three basis activities namely production, distribution (sales) and collection are non-instantaneous and unsynchronized (Richard & Laughlin, 1980). The theory explains that the cumulative per turnover for accounts receivable and inventory investment approximates the length of the firm’s operating cycle. Richard and Laughlin (1980) noted that operating cycle concept is deficient as a cash flow measures in that it fails to consider the liquidity requirements imposed on a firm by the time dimension of the current liability commitments. Liquidity is the ability of the firm to meet its obligation as and when they fall due and therefore cannot be ignored in studying the performance of a firm. In-depth understanding of Operating Cycle Theory is therefore key to this research. By analyzing the various levels of WCM component, the researcher was able to establish how liquidity contributes to the performance of Energy and Petroleum Companies. 2.2.3. Cash Conversion Cycle Theory Richard and Laughlin (1980) noted that by reflecting the net interval between actual cash expenditure of a firm’s purchases of productive resources and the ultimate recovery of cash receipts from product sales establishes the period of time to convert a dollar of cash disbursement back into a dollar of cash inflow from a firm’s regular course of operations. Richard and Laughlin (1980) explained that a movement towards a longer cash conversion 15 cycle will produce a larger required commitment to cash, as well as non-cash, currents assets, investment in less extensive relative ability to finance these investments with current liabilities. Understanding the cash conversion cycle of the firm is an effective way if evaluating the efficiency of the firm operations. Berk and Demerzo (2011) observed that an important consideration for all firms is the ability to finance the transition from cash to inventories, to receivable and back to cash. Pandey (1995) added that firms should develop strategies regarding cash management which involves cash planning, optimal cash levels and investing surplus cash. It is through the understanding of this Cash Conversion Cycle Theory that the researcher was able to evaluate the efficiency in the management of WCM components and how it impact on the performance of the Energy and petroleum companies In summary, the WCM theories emphasized on the need to ensure optimal levels of working capital for a smooth operation of the firm as well minimize the cost to the firm. Incorrect evaluation of the liquidity implications of the firm’s working capital needs may, in turn subject creditors and investors to an unanticipated risk of default (Richard & Laughlin, 1980). It is therefore incumbent upon the Finance Management practitioners to understand the business operations, and put in place robust WCM policy framework because of its implications on the performance of the business. 2.3. Determinants of firm’s Performance There are several factors internally and externally that can affect the firm’s performance. 16 The success of the firm performance is how well these factors are incorporated in strategic decision of the firm. Johnson, Scholes and Whittington (2008) observed that a business strategy is the direction and scope of an organization over the long term, which achieves advantage in a changing environment through its configuration of resources and competences with the aim of fulfilling stakeholder expectations. Some of these factors are discussed below. 2.3.1. Corporate Governance Chugh, Meador and Kumar (2009) noted that good corporate governance practices enhance the performance of a firm. Corporate governance practices here include structure and behaviors adopted by a firm in pursuit of its objectives. Shareholder model and stakeholder model are the two models of corporate governance stricture (Chugh et al, 2009). Shareholder model focuses on shareholder wealth creation whereas the stakeholder model focuses on welfare of the numerous stakeholders in the firm. 2.3.2. Economic Conditions Economic conditions particularly the cost of borrowing can negatively influence profitability (Ntim, 2009). Very high inflation, cost of imports, exorbitant utility costs, low incomes level for consumers can reduce the demand for goods and services thereby adversely affecting firm’s performance (Forbes, 2002). According to the agency there of the firm, if managers also have ownership stake, they are likely to maximize shareholders’ wealth (Dutta, 1999). Based on this theory, it can therefore be concluded that ownership structure has an impact on the forms performance. 17 2.3.3. Capital Structure Capital structure is another factor that has a bearing on the performance of a firm. To finance operations, a firm can generate funds internally or source the required capital externally through loans. Lewellen and Lewellen (2004) observed that capital generated internally has highest opportunity cost because retained profits can affect shareholder trust since it could have been paid out as dividend. Pandey (1995) on the other had observed that externally generated capital such as loans are cheaper because of the tax shield. Therefore capital structure will have an impact on the profitability of a firm. 2.3.4. Risk Appetite Mirza and Javed (2013) noted that risk management of a firm may also impact on its performance. The relationship of risk and return has to be managed so that the investors do get the return associated with the risk they are bearing (Mirza & Javed, 2013). Other determinants of firm’s performance include size (Love & Rachinsky, 2007) and sales (Forbes, 2002). In addition, other factors include liquidity, dividend, and growth rate (Gurbuz et al., 2010). 2.4. Empirical Review Various researches have been conducted by different scholars locally and internationally to test the relationship between WCM and company profitability. Akoto, Awunyo and Angmor (2013) analyzed the relationship between WCM practices and profitability of listed manufacturing firms in Ghana. The study used data collected from annual reports of 18 all the 13 listed manufacturing firms in Ghana covering the period from 2005-2009. Using panel data methodology and regression analysis, the study found a significant negative relationship between Profitability and ACP. However, the firms’ CCC, Current Asset Ratio, Size, and Current Asset Turnover significantly positively influence profitability. The study suggests that managers can create value for their shareholders by creating incentives to reduce their ACP to 30 days. The research further recommended that, enactments of local laws that protect indigenous firms and restrict the activities of importers are eminent to promote increase demand for locally manufactured goods both in the short and long runs in Ghana. Gul, Khan, Rehman, Khan, Khan and Khan (2013) investigated the influence of WCM on performance of small medium enterprises (SMEs) in Pakistan. The duration of the study was seven years from 2006 to 2012. The data used in this study was taken from Karachi Stock Exchange, tax offices and individual companies. The dependent variable of the study was Return on Assets (ROA) which was used as a proxy for profitability. Independent variables were ACP, ICP, CCC and APP. In addition to these variables some other variables were used which included Firm Size (SIZE), Debit Ratio (DR) and Growth (GROWTH). Regression analysis was used to determine the relationship between WCM and performance of SMEs in Pakistan. Results suggested that APP, GROWTH and SIZE have positive association with Profitability whereas ACP, ICP, CCC and DR have inverse relation with profitability. Gakure, Cheluget, Onyango and Keraro (2012) analyzed the relationship between WCM and performance of 15 manufacturing firms listed at the NSE from 2006 to 2010. They 19 used secondary data from a sample of 18 companies at the NSE. A regression model was used to establish the relationship between the dependent variable and the independent variables. Pearson’s correlation and regression analysis were used for the analysis. The results indicated that there is a strong negative relationship between firm’s performance and liquidity of the firm. The study found that there is a negative coefficient relationship between ACP, APP, ICP and profitability. CCC was found to be positively correlated with profitability. Nyambwaga et al. (2012) researched on the effects of WCM on SME’s in Kisii District, Kenya. They focused on 159 SME’s including 101 trading and 58 manufacturing. Crosssectional design was used, based on primary quantitative data obtained through structured questionnaire. A sample of 113 SMEs was used through stratified random sampling. Descriptive and inferential statistics was used to analyze data. The research revealed that performance was positively related CCC, ACP, ICP at 0.01 significance level. Sharma and Kumar (2011) examined the effect of WCM on profitability of Indian firms. They collected data about a sample of 263 non-financial firms out of 500 firms listed at the Bombay Stock Exchange (BSE) from years 2000 to 2008 and evaluated the data using OLS multiple regression. The results revealed that WCM and profitability are positively correlated. ICP and APP were negatively correlated with a firm’s profitability, whereas ACP and CCC exhibit a positive relationship with profitability of the company. Gill, Biger and Mathur (2010) studied the relationship between WCM and profitability. A total of 88 American firms listed on New York Stock Exchange (NYSE) were selected for 20 a period of 3 years from 2005 to 2007. The data was analyzed using Pearson Bivariate Correlation Analysis and Weighted Least Squares (WLS) Regression techniques. The research established significant relationship between the CCC and profitability, measured using GPM. The findings implied that firm’s management can create profits for their companies by handling correctly the CCC and by keeping accounts receivables at an optimal level. Falope and Ajilore (2009) researched on relationship WCM and corporate profitability. They used a sample of 50 Nigerian quoted non-financial firms for the period 1996 -2005. Their study utilized panel data econometrics in a pooled regression, where time-series and cross-sectional observations were combined and estimated. The research established a significant negative relationship between net operating profitability and the ACP, ICP, APP and CCC. Furthermore, the research noted no significant variations in the effects of WCM between large and small firms. Mathura (2009) examined the influence of WCM on corporate profitability by using a sample of 30 firms listed on the NSE for the periods 1993 to 2008. The researchers used Pearson and Spearman’s correlations, the pooled ordinary least square (OLS), and the fixed effects regression models to conduct data analysis. The research found out that there exist a significant negative relationship between ACP and profitability. The research also established a highly significant positive relationship between ICP and profitability. Further, the research revealed a highly significant positive relationship between APP and profitability. 21 Garciaand Martinez (2007) collected a panel of 8,872 small to medium-sized enterprises (SMEs) from Spain covering the period 1996 - 2002. They tested the effects of WCM on SME profitability using the panel data methodology. The results demonstrated that managers could create value by reducing their inventories and ACP. Moreover, shortening the cash conversion cycle also improves the firm's profitability. Deloof (2003) tested the relationship between WCM and corporate profitability. A sample of 1,009 large Belgian non-financial firms for a period of 1992-1996 was used. By using correlation and regression tests, he found significant negative relationship between gross operating income and the ACP, ICP, and APP of Belgian firms. Based on the study results, the researcher suggested that managers can increase corporate profitability by reducing the ACP and inventories. Shin and Soenen (1998) researched the relationship between WCM and value creation for shareholders. The standard measure for WCM was CCC. The CCC period reflects the time span between disbursement and collection of cash. It is measured by estimating the ICP and ACP less the APP. The study used Net-Trade Cycle (NTC) as a measure of WCM. NTC is basically equal to the CCC where all three components are expressed as a percentage of sales. NTC may be a proxy for additional working capital needs as a function of the projected sales growth. They examined this relationship by using correlation and regression analysis, by industry, and working capital intensity. Using a COMPUSTAT sample of 58,985 firm years covering the period 1975-1994, the research noted a strong 22 negative relationship between the length of the firm's net-trade cycle and its profitability. Based on the findings, they suggest that one possible way to create shareholder value is to reduce firm’s NTC. 2.5. Literature Review Summary International studies by Deloof (2003), Falope and Ajilore (2009), Sharma and Kumar (2011), Garcia and Martinez (2007),Gill, Biger and Mathur (2010), Gul, Khan, Rehman, Khan, Khan and Khan (2013),Shin and Soenen (1998) have extensively focused WCM and its impact on performance of companies. Locally, studies by Gakure, Cheluget, Onyango and Keraro (2012), Mathura (2009), Akoto, Awunyo and Angmor (2013) have also researched on WCM impact on the profitability of a firm From these empirical reviews, it was established that WCM impacts on the performance of a firm. Some findings have been contradictory. Nyambwaga et al. (2012) established a positive relationship between WCM and firm’s performance. Deloof (2003) on the other hand, noted a negative relationship between WCM and firms performance. This study therefore, seeks to iron out these differences. Beside differences in the research outcomes, previous researches concentrated either on Manufacturing Sector, SME’s sectors or all firms listed on NSE. However, there were minimal studies that have been done focusing on Energy and Petroleum companies listed at NSE. This study therefore aimed at addressing this gap as well. 23 CHAPTER THREE – RESEARCH METHODOLOGY 3.1 Introduction This chapter presents the research methodology. Section 3.2 discusses the research design. Section 3.3 presents the population and sample. Section 3.4 presents the data and data collection instruments. Section 3.5 presents the data analysis model. Section 3.6 presents the variables in the analysis model. 3.2 Research Design The study adopted a quantitative approach which involved collection and analysis of numerical data. Using a correlation design, the researcher investigated the effect of WCM on the performance of the Energy and Petroleum companies listed on NSE. Correlation design investigates a range of factors including the nature of relationships between two or more variables and the theoretical model that might be developed and tested to explain these resultant correlations (Grimm and Yarnold, 2000). The purpose of correlation design was therefore to determine the relations between two variables two or more variables. Correlation design was found to be suitable for this study since it will be used to test impact and relationship direction between WCM components and financial performance. There researcher will therefore be able to establish changes in one variable as a result of changes in another variable. Gakure, Cheluget, Onyango and Keraro (2012), Gill, Biger and Mathur (2010) used correlative analysis in their studies on the effect of WCM on performance. Therefore, this design helped the researcher compare the research findings with those from previous studies. 24 3.3. Population of the study This was a census study. The study population therefore included all the five Energy and Petroleum companies listed on Nairobi Securities Exchange. These companies include KenolKobil ltd, Total Kenya Ltd, KenGen Ltd, Umeme Ltd and the KPLC. Companies listed on the NSE were preferred for this study because of data availability as well as reliability of the data since they are subject to statutory audits. 3.4. Data Collection Method To investigate the effects of WCM on performance of Energy and Petroleum companies listed on NSE, the researcher used secondary data. Secondary sources of data specifically published Financial Statements for eight years between 2007 and 2014 were used. It is from these financial statements that variables such as ROCE, ACP, APP, ICP and CCC were generated. The published financial statements were obtained from individual company websites, Ministry of Energy (MOE) and the Petroleum Institute of East Africa (PIEA). 3.4.1. Data Collection Tool Table (Appendix I) was used to collect data from the published financial statements specifically of WCM component and performance. The data in the tables was then fed into the Statistical Package for Social Science (SPSS) for analysis. 25 3.5. Data Analysis The researcher sought to establish the impact of WCM on the performance of the five Energy and Petroleum companies listed at NSE for the period between 2007 and 2014. To be consistent with previous researches, the firm’s performance was modeled as a function of the four core WCM measures. 3.5.1. Analytical Model The effects of WCM on the firm’s performance were modeled using the following equations to obtain the estimates: ROAt = β1 (ACPt) + β2 (ICPt) +β3 (APPt) +β4 (CCCt) +ε Where: ROAt= Return on Assets of the firm o at time t: =1, 2, 3 β1... β4 =coefficient of the variables t = time years 1, 2, 3 ACP = Accounts Collection Period ICP= Inventory Conversion Period APP= Average Payable Period CCC = Cash Conversion Cycle ε = Error Term 26 3.5.2. Operationalization of Study Variables For comparison with other researches on the effects of WCM on the firm’s performance, the researcher used the Return on Assets (ROA) as the dependent variable to measure the firm’s performance. ROA will be measured as follows: Return on Assets (ROA) = Earnings before Interest and Tax (EBIT) Capital Employed x 100 On independent variables, the researcher used Inventory Conversion Period (ICP), Account Payable Period (APP), Accounts Collection Period (ACP) and Cash Conversion Cycle (CCC) as a comprehensive measure of WCM. These measures were determined as follows: Inventory Conversion period (ICP) = Inventory x 365 Cost of Goods Sold Account Payable Period (APP) = Payables x 365 Purchases Per Day Accounts Collection Period (ACP) = Receivables x Sales Per Day 365 Cash Conversion Cycle (CCC) = ICP + ACP - APP To determine direction and relationship between WCM and Performance, the researcher used both descriptive and quantitative analysis. Mean, Median and Standard Deviation are examples of descriptive statistic that were used to explain various variables. The descriptive and quantitative analyses were done using Statistical Package for Social Science (SPSS). 27 3.5.3. Test of Significance The significance was tested at 95% confidence level. This was established by standard error test, t-statistics, F-statistics, Durbin-Watson statistics and Prob (F-statistic). 28 CHAPTER FOUR - DATA ANALYSIS, RESULTS AND DISCUSSION 4.1. Introduction Chapter four presents the analysis of the study findings on the impact of WCM on the financial performance of the Energy and Petroleum companies listed at NSE. It analyzed the variables involved as well as the estimate of the model. The data used for the study was obtained from the financial statements of five companies listed under the category Energy and Petroleum sector at the NSE. The data covered eight year period between 2007 and 2014. The data collected was analyzed using different statistical tools including financial ratios, Pearson correlation analysis and regression analysis. 4.2. Descriptive Statistics Table 4.1 below shows the descriptive statistics for all the variables. It shows the numbers of observation for all variables, their average values and their standard deviation. It shows the minimum and maximum values. Table 4.1: Descriptive Statistics N Minimum Maximum Statistic Statistic Statistic Mean Statistic Std. Deviation Skewness Statistic Statistic Lnroa 38 .00 3.02 1.8285 .65006 -.574 Lnicp 38 1.70 5.07 3.5696 .74061 -.523 Lnacp 38 1.49 5.29 3.9641 .86595 -.773 Lnapp 38 .00 6.04 4.0051 1.43874 -1.123 Lnccc 38 -.51 4.94 2.3502 1.91357 -.376 Valid N (listwise) 38 Source: Researcher (2015) 29 The descriptive statistics shows that there were 38 observations for all variables. The skewness measured the degree and direction of a symmetry. A distribution that is skewed to the left, for example when the mean is less than the median, has a negative skewness. The dependent variable (ROA) had an average value of 1.8285 with a minimum value of 0.00 and a maximum value of 3.02. The standard deviation of ROA was 0.65006. The independent variable, Inventory Conversion Period (ICP) had an average value of 3.5696, a minimum value of 1.7 and a maximum value of 5.07 with a standard deviation of 0.74061. Accounts Collection Period (ACP) had an average value of 3.9641, minimum value of 1.49, and maximum value of 5.29 with a standard deviation of 0.86595. The Accounts Payable Period (APP) had a mean value of 4.0051, a minimum value of 0.00, and maximum value of 6.04 with a standard deviation of 1.43874. The Cash Conversion Cycle (CCC) had a mean value of 2.3502, a minimum value of -0.51, and a maximum value of 4.94 with a standard deviation of 1.91357. 4.3. Diagnostic Tests The statistical methods applied assumed that variables were normally distributed. Multivariate statistics were adopted with the assumption that the combination of variables follows a multivariate normal distribution. Since there was direct test for multivariate normality, the study tested each variable individually and assumed that they are multivariate normal if they are individually normal. Normality test were undertaken and the results were as shown in the table 4.2a below. 30 Table 4.2a: Tests of Normality Inroad Lnicp Lnacp Lnapp Lnccc Kolmogorov-Smirnova Shapiro-Wilk Statist Df Sig. Statistic df Sig. ic .094 38 .200* .973 38 .479 * .089 38 .200 .963 38 .241 * .102 38 .200 .949 38 .082 .235 38 .000 .874 38 .001 .259 38 .000 .794 38 .000 This is a lower bound of the true significance. * Lilliefors Significance Correctiona Source: Researcher (2015) From the table 4.2a above, ROA was normally distributed. The sig value of the ShapiroWilk Test was 0.479 which is greater than 0.05. From the normal Q-Q Plot of ROA (appendix iii) it was noted that the observed variable ROA was normally distributed and close to the expected values. The study noted that ICP on other had was also normally distributed. The sig value of the Shapiro-Wilk Test was 0.241 which is greater than 0.05. From the normal Q-Q Plot of ICP (appendix IV) it was noted that the observed variable ICP was normally distributed and close to the expected values. ACP was normally distributed. The sig value of the Shapiro-Wilk Test was .082which is greater than 0.05. From the normal Q-Q Plot of ACP (appendix V) it was noted that the observed variable ACP was normally distributed and close to the expected values. The APP was not normally distributed. The sig value of the Shapiro-Wilk test was .001which is less than 0.05. From the normal Q-Q Plot of APP (appendix VI) it was noted that the observed variable APP were not normally distributed and were not close to the 31 expected values. The CCC was equally not normally distributed. The sig value of the Shapiro-Wilk test was .000 which is less than 0.05. From the normal Q-Q Plot of CCC (appendix VII) it was noted that the observed variable CCC were not normally distributed and not close to the expected values. In general from the normality test, it was concluded that the variables are normally distributed that is, the ROA, ICP, ACP, APP and CCC of the Energy and Petroleum companies listed at NSE are even distributed. Statistically, the researcher was therefore able to draw accurate and reliable conclusions about reality of the impact of WCM on the profitability of Energy and Petroleum companies listed at NSE. The assumption of the regression model adopted was that the error term was independent and normally distributed, with a mean zero and a constant variance. To test for the independence of the variables, Durbin-Watson statistical analysis was undertaken. This analysis was used to test for the presence of auto correlation among the residuals. Residual was the difference between the observed value and the predicted value of the variables. Table 4.3b below shows the results of Durbin-Watson analysis. Table: 4.2b Durbin-Watson test Mode l R R Square Adjusted R Square Std. Error of the Estimate 1 .517a .267 .178 .58920 a. Predictors: (Constant), lnccc, lnacp, lnicp, lnapp b. Dependent Variable: inroad Source: Researcher (2015) DurbinWatson 1.528 From the table 4.2b above, the Durbin-Watson value was 1.528 meaning the residuals 32 values were uncorrelated since it falls within the acceptable range of 1.50 and 2.50. This means the size of the residual for one variable has no impact on the size of the residual for the next variable. 4.4. Correlation Analysis The Correlation Analysis indicated the relationship between the variables in the model. The correlation showed the direction of the relationship between the WCM as the independent variables and the ROA as the dependent variable. The correlation further indicated the strength of the linear relationship between the variables as shown in the table 4.3 below. Table 4.3: Correlations Lnroa lnicp Lnacp Lnapp Lnccc Lnroa 1 Lnicp -.269 1 Lnacp -.350* .539** 1 Lnapp -.301 .470** .617** 1 Lnccc -.227 .212 .052 -.455** 1 *Correlation is significant at the 0.05 level (2-tailed), **. Correlation is significant at the 0.01 level (2-tailed). Source: Researcher (2015) From the correlation in Table 4.3 above, the Pearson correlation between ROA and ICP was analyzed and the results indicated a negative correlation of -.269. However, there was a weak liner relationship between these two variables. This means that if there is an increase in ICP then it will be associated with a reduction in the ROA and vice versa. Gul, Khan, 33 Rehman, Khan, Khan and Khan (2013), established similar findings with negative correlation between ROA and ICP. This negative relationship was also established by Sharma and Kumar (2011) who also noted that ICP negatively correlated with a firm’s profitability. The inventory conversion period (ICP) is the number of days it takes to convert the inventories into sales. This means that in the Energy and Petroleum sector, the longer it takes for a company to convert the inventories into sales, the less is the firm’s ROA. On the other hand, lesser ICP was associated with higher ROA. Since the aim of the company is to increase the ROA, then it means such a company will target a reduction in the ICP. To reduce the ICP, a firm has to increase its sales. This is because the cost of sales is a factor in the calculation of ICP. A firm can use different strategies to increase sales. One of the strategies is market development. This is a strategy where the company expands its operations into new markets which could be new geographical areas. Umeme ltd for instance, is an Energy and Petroleum Company incorporated in the republic of Uganda but registered on the NSE. Such company can increase its sales by extending its Energy and Petroleum operations beyond the borders of Uganda to cover Kenya, Tanzania and other countries as well. Market development will require changes to marketing strategy that is the new distribution channels, different pricing policy, and a new promotion strategy, to attract different types of customers in the new market. By developing and implementing a robust marketing plan such companies can increase sales thereby reducing on the ICP. The Kenyan market is semi-regulated with the pump or retail prices set by the Energy Regulatory Commission (ERC) whereas other lines of business such as Liquefied 34 Petroleum Gas (LPG) and wholesale business is not regulated. To avoid such price controls that can limit growth in sales, such companies can diversify its operation to other deregulated markets where they can make enormous growth. In conclusion since the firm’s target is to increase the ROA, it means the business strategies should aim at reducing the ICP through increasing sales. The ROA and ACP had a negative correlation value of -.350 which is a weak correlation. This means that if there is an increase in ACP, then such a scenario will be associated with a reduction in the ROA and vice versa. Gakure, Cheluget, Onyango and Keraro (2012) established similar findings where they found that there is a negative coefficient relationship between ACP, APP, ICP and profitability for 15 manufacturing companies listed at NSE for the period between 2006 and 2010. Nyambwaga et al. (2012) researching on the effects of WCM on SME’s in Kisii District came to a different conclusion that performance of the SME’S was positively related CCC, ACP, ICP at 0.01 significance level. The different conclusions could be attributed to the nature of the industry. The ACP is the average length of time required by the firm to convert its receivables into cash. This means the longer it takes to convert receivables into cash, then the lesser such a company will achieve ROA. Since the bottom line is to increase the ROA, it means that the firm will target a reduction in the ACP. In a strictly controlled organization, the accounts receivable should be managed through a Credit Policy framework. Such a framework will stipulate the conditions under which a firm will grant a credit sale, the discounts as well as the credit period. Since the target is to 35 reduce the amount of credit sales, then the credit policy should be strict on the qualification for credit sales. The longer the credit period, the higher is the amount of receivables that will be held at the end of the period. The credit policy should have a shorter credit period, meaning the customers will be required to settle their accounts in a shorter period. Debt recovery strategies can enable a firm to minimize the amount of accounts receivables held at the end of the period. Energy and Petroleum Companies will then be required to established credit control departments tasked with debt recovery responsibilities. Such departments should adequately manned and resourced to ensure debts are collected on time. Putting in place a guarantee or a security to mitigate the credit default risk as another strategy to minimize the amount receivables held at the end of the period. This is because in the event of customer’s default to settle the debt, the firm will have a fallback position to recover the debt by liquidating the security. At the end, accounts receivables will be minimized, ACP reduced and the ROA increased. The ROA and APP had a negative correlation of value of -.301, meaning that if there is an increase in APP, then there will be reduction in the ROA and vice versa. However, this was a weak correlation. Falope and Ajilore (2009) established similar findings where they established a negative relationship between net operating profitability and the ACP, ICP, APP and CCC for a sample of 50 Nigerian quoted non-financial firms for the period 1996 -2005. Deloof (2003) also came to the same conclusion where he found a negative relationship between gross operating income and the ACP, ICP, and APP of Belgian firms. The APP is the average length of time it takes a firm to pay its suppliers. The negative coefficient means the longer it takes to pay the supplier the lesser is the ROA. 36 On the other hand a shorter APP is associated with higher ROA. Since a firm in the Energy and Petroleum sector would target to increase the ROA, it then implies that measures have to be put in place to pay the suppliers in the shortest time possible. There are several measures that a firm can put in place to reduce the APP. A cash flow planning is one such a tool that a firm can use to project its cash inflows and cash outflows to ensure cash is available as and when suppliers need to be paid. This minimizes delay in supplier payments occasioned by unavailability of funds. Liquidity is therefore critical to ensure faster settlement of suppliers. Automation of the Procure-To-Pay process is another strategy a firm can use to shorten the supplier payment period. Automation minimizes payment errors, ensure accurate and complete recording of supplier invoices in the payment process. Electronic payment systems are faster and less error prone than manual payments systems. To achieve a shorter APP and a higher ROA will therefore mean that the Energy and Petroleum companies will have to invest in automation of the payment process. ROA and CCC had a negative correlation value of -.227. This is a weak correlation. Shin and Soenen (1998) reached at similar conclusion where they noted a negative relationship between the length of the firm's net-trade cycle and its profitability for a sample of 58,985 firm years covering the period 1975-1994. Gul, Khan, Rehman, Khan, Khan and Khan (2013), also established similar findings of negative correlation between ROA and CCC. Negative correlation means that if there is an increase in CCC, then there will be reduction in the ROA and vice versa. Garciaand Martinez (2007) also reached at the same conclusion that shortening the cash conversion cycle, it improved the firm's profitability for a panel of 37 8,872 small to medium-sized enterprises (SMEs) from Spain covering the period 1996 2002. The CCC is the length of time between when the company makes payments of stock purchases to the period cash is received from the sales made. It is therefore a summation of ICP plus ACP less APP. The firms target is to reduce the CCC in order to increase the ROA. This means the components of CCC which are mainly the ICP, ACP and APP should be dealt with as discussed above, with an objective of shortening CCC in order to increase ROA. 4.5. Effects of WCM on Financial Performance From the Table 4.4a below, using the Adjusted R Square, it can be noted that 17.8% of the variability in the Return on Assets (ROA) can be explained by variability in the Inventory Conversion Period (ICP), Cash Conversion Cycle (CCC), Accounts Collection Period (ACP) and Accounts Payable period (APP). It also follows that 82.2% of the changes in ROA cannot be explained by the changes in the model variables hence the error term. Table 4.4a: Combined Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate 1 .517a .267 .178 .58920 Source: Researcher (2015) ANOVA was used to test the weight of the linear model. Table 4.4b below, indicates a good result for a multiple linear relationship between the WCM variables and the ROA. It was noted that WCM influence the ROI significantly. The analysis indicated an F statistics of 3.010 with a P value is 0.032 which is less than 0.05. This confirmed that the model’s goodness is fit to explain the variations as well as validate the independent variables effect on the dependent variable. It can be concluded that all variables ICP, ACP, APP and CCC 38 have a significant combined effect on ROA and therefore these independent variables can be used to predict ROA. Table 4.4b: Combined ANOVAa Model Sum of df Mean Squares Regression 1 F Sig. Square 4.179 4 1.045 Residual 11.456 33 .347 Total 15.635 37 3.010 .032b Source: Researcher (2015) The coefficients explained the relationships between variables as shown in the Table 4.3c below. The coefficients looked at the change in the dependent (ROA) variable, when independent variables (WCM) increases by one. Table 4.4c: Coefficientsa Model Unstandardized Standardized Coefficients Coefficients B (Constant) 1 Std. Error 2.985 .532 Lnicp .114 .178 Lnacp -.031 Lnapp Lnccc t Sig. Beta 5.614 .000 .130 .639 .527 .163 -.042 -.192 .849 -.257 .122 -.569 -2.109 .043 -.174 .072 -.512 -2.399 .022 Dependent Variable: lnroa Source: Researcher (2015) The relationship between the dependent and independent variables can therefore be summarized with a linear equation as follows: 39 ROAt = 2.985 + 0.114 (ICPt) – 0.031 (ACPt) – 0.257 (APPt) – 0.174 (CCCt) +ε The constant in the model was 2.985. This means that if there was no changes in the independent variables (WCM), then the dependent variable (ROA) will have a value of 2.985. The Inventory Conversion Period (ICP) had a positive coefficient of 0.114. This means that for every one unit change in ICP, then ROA will increase by 0.114. This also means that that the more optimal level of ICP, the higher is the level of ROA although the relationship is not statistically significant since p=0.527. Mathura (2009) held similar findings of a positive relationship between ICP and profitability. The focus of the Energy and Petroleum companies will therefore be to increase ICP. The regression coefficient on Accounts Collection period (ACP) was negative (-0.031). This means that one unit change in ACP will lead to a 0.031 reduction in the ROA. Peel and Wilson (1996) observed that efficient WCM and more recently good credit management practice are pivotal to the health and performance of the small firm sector. Angmor (2013) suggested that managers can create value for their shareholders by creating incentives to reduce their ACP to 30 days. The implication of this findings is that Finance Managers of Energy and Petroleum companies listed at the NSE will be required to put in place a robust Credit Policy which focuses on minimizing accounts collection period, reduction in accounts receivable investment in order to improve the financial performance of the companies. The relationship is statistically not significant since the P=0.849. This means that ACP on its own does not have a major impact on the ROA. The results 40 also indicated that Accounts Payable Period (APP) coefficient was negative (-0.257). This means that one unit change in the APP will lead to a 0.257 reduction in the ROA. The relationship is statistically significant since the P=0.043 which is less than 0.05 significant level. Falope and Ajilore (2009) established similar findings where they established a negative relationship between net operating profitability and the APP. The Finance Managers of Energy and Petroleum companies should therefore put in place measures to reduce APP in order to increase ROA. Automation of procure to pay process, cash flow planning, negotiations of better trading terms from suppliers are some of the measures such companies can adopt to reduce APP in order to increase ROA. The Cash Conversion Cycle (CCC) coefficient was negative (-0.174) meaning that for one unit increase in the CCC, will lead to a 0.174 reduction in the ROA. Berk and Demerzo (2011) observed that an important consideration for all firms is the ability to finance the transition from cash to inventories to receivables and back to cash. Shin and Soenen (1998) arrived at similar conclusion where they observed that one possible way to create shareholder value is to reduce firm’s CCC. The relationship is statistically significant since the P=0.022 which is less than 0.05 significant level. Finance Managers of Energy and Petroleum companies should therefore put in place measures to reduce CCC in order to increase ROA. Since CCC is a product of ICP, ACP and APP then it follows that reduction in the CCC can be achieved by effective management of individual components as described above. From the Coefficients Table 4.4c above, the t-values indicates that Inventory Conversion Period (ICP) is the most useful predictor ROI (t=0.639) followed by ACP (t=-0.192), Accounts Collection Period (t=-2.109) and last Cash Conversion Cycle 41 (t= -2.399). CHAPTER FIVE – SUMMARY, CONCLUSIONS AND RECOMMENDATIONS 5.1. Introduction The main objective of this research was to establish the effects of WCM on financial 42 performance of Energy and Petroleum companies listed at the NSE. The research sought to establish if the Inventory Conversion Period, Accounts Collection Period, Accounts Payable Period and Cash Conversion Cycle had any effects on financial performance of Energy and Petroleum companies listed at the NSE. This chapter therefore presents the summary of the findings, conclusions, limitations as well as the recommendations. 5.2. Summary of Findings The study sought to establish the combined effect of WCM on the financial performance of the Energy and Petroleum companies listed on the NSE. Linear regression was used to analyze the relationship between variables, out of which inferential statistics analysis was made for every variable. Multiple linear regression was used to establish the combined effect of all independent variables (WCM) on the dependent variable (ROA). Normality tests, were undertaken which established that the variables (ROA, ICP, ACP, APP and CCC) of the Energy and Petroleum companies listed at NSE were normally distributed. Statistically, the researcher was therefore able to draw accurate and reliable conclusions about reality of the impact of WCM on the profitability of Energy and Petroleum companies listed at NSE. The study indicated that WCM influence the ROA significantly. Using the Adjusted R Square, it can be noted that 17.8% of the variability on the Return of Assets (ROA) can be explained by variations in the Inventory Conversion Period (ICP), Cash Conversion Cycle (CCC), Accounts Collection Period (ACP) and Accounts Payable period (APP). It can be concluded that all variables ICP, ACP, APP and CCC have a combined significant impact on ROA and therefore these independent variables can be used to predict ROA. 43 The Pearson correlation coefficient between ROA and ICP was negative and weak. This means that if there is an increase in ICP then it will be associated with a reduction in the ROA and vice versa. The ROA and ACP have a negative correlation. This means that if there is an increase in ACP, then such a scenario will be associated with a reduction in the ROA and vice versa. However the linear correlation between these two variables exhibited a weak linear relationship. The ROA and APP also have a negative correlation even though the linear relationship was weak. An increase in APP will be associated with a reduction in the ROA and vice versa. Similarly, the ROA and CCC have a negative correlation even though the linear relationship is weak. If there is an increase in CCC, then there will be reduction in the ROA and vice versa. The CCC is the length of time between when the company makes payments of stock purchases to the period cash is received from the sales made. It is therefore a summation of ICP plus ACP less APP. The firms target is therefore to reduce the CCC in order to increase the ROA. Based on the t-values, ICP is the most useful predictor of ROA followed by ACP, APP and lastly CCC. The main objective of WCM is to minimize risks by ensuring seamless business operations and at the same time ensuring the business is in a better position to meet its short-term obligations. Incorrect evaluation of the liquidity implications of the firm’s working capital needs may, in turn subject creditors and investors to an unanticipated risk of default (Richard & Laughlin, 1980). It is therefore requisite upon the Finance Managers of these Energy and Petroleum companies listed at NSE to understand the business operations, and put in place robust WCM policy framework because of its implications on the performance of the business. 44 5.3. Conclusions The variables (ROA, ICP, ACP, APP and CCC) of the Energy and Petroleum companies listed at NSE are normally distributed. Statistically, the researcher was therefore able to draw accurate and reliable conclusions about reality of the impact of WCM on the profitability of Energy and Petroleum companies listed at NSE. The study has established that WCM influenced the ROA significantly for the Energy and Petroleum companies listed at NSE. It can be concluded that all variables ICP, ACP, APP and CCC have a combined significant impact on ROA and therefore these independent variables can be used to predict ROA. It was concluded that ROA and ICP have a negative correlation even though the correlation was weak. This means that if there is an increase in ICP, then it will be associated with a reduction in the ROA and vice versa. Since the objective of the Energy and Petroleum Companies is to increase the financial performance (ROA), it can therefore be concluded that Finance Managers of such companies will strive to minimize the ICP in order to enhance the ROA. It was concluded that ROA and ACP have a negative correlation. This means that if there is an increase in ACP, then such a scenario will be associated with a reduction in the ROA and vice versa. Similarly it can be concluded that Finance Managers of such companies will strive to minimize the ACP in order to enhance the ROA. It was also concluded that ROA and APP also have a negative correlation even though the linear relationship was weak. An increase in APP will be reduction in the ROA and vice versa. It is therefore incumbent upon the Finance Managers of Energy and Petroleum companies listed at NSE 45 to minimize the APP in order to enhance the ROA. It was also concluded that ROA and CCC have a negative correlation even though the linear relationship is weak. If there is an increase in CCC, then there will be reduction in the ROA and vice versa. Finance Managers of these Energy and Petroleum companies listed at NSE will have to focus on minimizing the CCC in order to enhance the ROA. In relation to previous studies, it was concluded that the results of this study are similar to the findings earlier international studies particularly Deloof (2003), Falope and Ajilore (2009), Sharma and Kumar (2011), Garcia and Martinez (2007),Gill, Biger and Mathur (2010), Gul, Khan, Rehman, Khan, Khan and Khan (2013),Shin and Soenen (1998) who have all researched on WCM and its impact on performance of companies. Locally, the study findings are similar to the conclusions arrived at by Gakure, Cheluget, Onyango and Keraro (2012), Mathura (2009), Akoto, Awunyo and Angmor (2013) who have also established that WCM impacts on the profitability of a firm. 5.4. Limitation of the study The study was limited to WCM particularly Inventory Conversion Period (ICP), Accounts Collection Period (ACP), Accounts Payable Period (APP) and Cash Conversion Cycle (CCC) and its effect on the financial performance of Energy and Petroleum Companies listed at the NSE. There are other factors such as capital structure, risk appetite, corporate governance, economic conditions, government regulations, and volatility of international oil prices which could have an impact on the financial performance (ROA) of the Energy and Petroleum Companies listed at the NSE but were not factored in during this study. Restriction to WCM components only was therefore limiting. 46 The petroleum sector in Kenya has over 30 oil importing and marketing companies. The major five major companies are Shell, Total Kenya, KenolKobil, Oil Libya and Chevron. Other emerging oil companies include Government of Kenya (GoK) owned National Oil Corporation of Kenya (NOCK). This research was limited to only five companies listed at the Nairobi Securities Exchange (NSE). These companies are Total Kenya, KenolKobil, Kenya Electricity Generating Company Limited (KenGen), Umeme Ltd and the Kenya Power &Lighting Company ltd (KPLC). The sample of 5 companies was limiting and represents a small portion of the population of the Energy and Petroleum companies on Kenya. A multiple regression was used to study the effects of working capital management on the financial performance of Energy and Petroleum companies listed at the NSE. The financial performance was measured by the Return on Assets (ROA). There are other measure of financial performance such as Gross Profit (GP), Net Profit (NP), Return on Equity (ROE), Earning Per Share (EPS) among others that were not used in this study. The use of ROA was therefore limiting. 5.5. Recommendations In overall, the research has indicated that WCM influence the ROA significantly. The following recommendation can be made regarding the effective WCM of Energy and Petroleum companies listed on the NSE in order to enhance the financial performance (ROA). 47 Practice of Corporate Finance: Financial Managers should review specific policies regarding each component of WCM since they have a combined significant impact on financial profitability of Energy and Petroleum companies. On credit policy, Finance Managers should encourage credit sales to boost profitability but at the same time minimize the risk of bad debts. Credit terms should be clearly spelled out in a credit Policy. Customer should be vetted for credit qualification before extending credit facilities to the customer. Credit control department should be established, adequately manned and provided with budgetary resources to ensure timely collection of receivables from customers. Optimal Accounts Collection Period (ACP) should be set as a performance target for the Financial Managers. The Finance Managers should have a documented Inventory Management Policy. This should guide the effective inventory management practices. Inventory Management techniques such as Economic Order Quantities should be deployed to ensure optimal level of inventory. Financial Managers should also adopt technology for effective inventory management practices. Vetting and prequalification of inventory suppliers will ensure product quality, timely delivery of inventory to meet sales orders. The Finance Managers should ensure an Accounts Payable Policy is in place. The policy should stipulate the target Accounts payable Period (APP) which should be embedded in the performance targets for the Finance Managers. Strained relationship with suppliers due to late or non-payment of suppliers will negatively affect the ability of Energy and Petroleum companies to maintain optimal inventories. Weekly and or monthly cash flow projections practices should be encouraged to ensure suppliers are paid on time. Monthly 48 ageing of payable reports should be reviewed by Finance Managers to ensure Accounts Payable Policies are being complied with. Regulators: The Professional competence for the Finance Managers should be monitored regularly. The Institute of Certified Public Accountant of Kenya (ICPAK) should ensure Financial Managers meet Continuous Professional Education (CPE) requirements as a means to ensure professional financial management practices are embedded in the management of Energy and petroleum companies listed at the NSE. Kenya Government regulates the price of petroleum products through Energy regulatory Commission. Such price regulations will certainly impact on the valuation of inventories since price is a factor in valuation of inventory. ERC should regularly review their pricing mechanism not to negatively affect the performance of the Energy and Petroleum companies listed at the NSE. Non-Organization of the Petroleum Exporting Companies (OPEC) should continuously monitor the production and export of petroleum product based on demand and supply. This is because inadequate production of petroleum products will have a direct impact on the inventory availability for the petroleum trading companies. 5.6. Suggestions for further research The study was limited to few components of WCM particularly Inventory Conversion Period (ICP), Accounts Collection Period (ACP), Accounts Payable Period (APP) and Cash Conversion Cycle (CCC). There are other factors such as capital structure, risk appetite, corporate governance, economic conditions, government regulations, and volatility of international oil prices which could have an impact on the financial 49 performance (ROA) of the Energy and Petroleum Companies listed at the NSE. These factors could form a basis for future research. The study was also limited to five Energy and Petroleum companies listed at the NSE. The sample of 5 companies therefore represents a small portion of the population of the Energy and Petroleum companies on Kenya. The petroleum sector in Kenya has over 30 oil importing and marketing companies. The entire population could form the basis of future research that can focus on all Energy and Petroleum companies in Kenya. A multiple regression was used to establish the effects of WCM on the financial performance of Energy and Petroleum companies listed at the NSE. Financial performance was measured by the Return on Assets (ROA). Companies can also measure financial performance using other measures such as Gross Profit (GP), Net Profit (NP), Return on Equity (ROE), Earning Per Share (EPS) among others. The use of ROA was therefore limiting. 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Kenya Power &Lighting Company ltd (KPLC). 58 APPENDIX III: NORMALITY DISTRIBUTION OF ROA 59 APPENDIX IV: NORMALITY DISTRIBUTION OF ICP 60 APPENDIX V: NORMALITY DISTRIBUTION OF ACP 61 APPENDIX VI: NORMALITY DISTRIBUTION OF APP 62 APPENDIX VII: NORMALITY DISTRIBUTION OF CCC 63