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Eco-efficiency of Urban Water and Wastewater Management: Some Preliminary Observations Jayanath Ananda School of Business Outline • • • • • Background Research objectives Methodology Preliminary results Concluding remarks Page 2 Background • The worst recorded drought in history and dwindling water supplies – Long-term degradation of fragile river systems • Policy responses – Stringent permanent water restrictions – Long-distance pipelines – Desalinisation • (1) Water policy reforms continue – Corporatization and competition policy – Highly variable institutional and operational structures – Complex regulatory and funding arrangements Page 3 Background • (2) Sustainable urban water management policy goal • Pressure to enhance water supply augmentation and formulate water supply and demand strategies • Increased targets of water recycling, wastewater & grey water, stormwater management and advancements in treatment • (3) Climate change policy – Stern report (2006); Task Group Report on Emission Trading (2007); Garnaut (2008) – Australian National Emission Trading Scheme (2008) Page 4 Climate Change Policy • Carbon Pollution Reduction Scheme – 2010 – A Cap and Trade System • Firms with more than 25,000 tonnes of CO2/yr to be included in the scheme • Australian urban water sector vulnerable to climate change – The highest growth in emissions (47% increase) – Although the overall contribution small (6.4%) • Greenhouse Emissions Reduction Strategy for water industry Page 5 Water industry (Vic) electricity consumption forecast Source: WISA, 2006 Sources of GHG emissions for a water business (Vic) Page 7 Sources of GHG emissions for a water business Source: WISA, 2006 Exogenous drivers of emission efficiency – Institutional structure (Private, State-owned company, Statutory Authority, Local council) – Network density (length of water and sewage mains) – Compliance with environmental regulators – Public disclosure of wastewater performance – Age of capital stock (water loss as a proxy) – Size of population being served (customer base) – % water sourced from non-catchment sources – Topography of the service area – Temperature – Rainfall Page 9 Objective • To examine GHG emission efficiency of selected urban water businesses – Guide GHG emission target setting – Benchmark the emission performance and to identify the ‘industry best practice’ in GHG efficiency Methodology • Standard DEA measures the efficiency of homogenous set of DMUs using inputs and outputs (‘goods’) - ‘best practice frontier’ – Does not require a priori functional form or weights – Potential outlier and error term problems (Fried et al. 1993) – Input and output orientations • Modelling ecologically undesirable outputs (‘bads’) eg. waste or emissions – Many approaches: Level of analysis and the treatment of ‘bads’ Page 11 Extending DEA to measure EE • Treatment of environmental effects: – As ordinary outputs (taking reciprocals), inputs – As undesirable ‘inputs’ (Tyteca, 1997; Ball et al. 2000; Sarkis & Talluri, 2005) – As undesirable outputs (Färe et al. 1989; Ball et al. 1994; Pittman, 1983) – As undesirable outputs with non-discretionary inputs (Banker & Morey, 1986) – Abatement inputs vs. traditional inputs (Shadbegian & Gray, 2005) – As joint production (byproducts) Input-oriented DEA • Since urban water utilities’ key output (urban water supplied) is exogenous, the input-orientation was selected • Pollutants are assumed to be weakly disposable (Shephard, 1970; Färe et al. 1989) and modelled as an undesirable input. • Overall TE indicates the maximum reduction of all inputs subject to the constraints imposed by the observed outputs and the technology • Subvector inefficiency (Eg. emissions) indicates the possibility to contract emissions while holding other input and output constant (Färe et al.1994). Page 13 DEA Model specification • Core Variables – Good output – Total urban water supplied (ML), % sewage treated to a secondary level and % sewage treated to a tertiary level – Inputs – Capital cost ($), Operating cost ($) (discretionary) – Bad inputs – Net GHG emissions (Net tonnes CO2equivalents Page 14 Data • National Performance Report 2005-06 of urban water utilities • 37 water businesses were considered for the analysis Page 15 Net greenhouse gas emissions (net tons CO2equivalents) 2005-06 Preliminary results 1.0000 0.9000 0.8000 Efficiency Score 0.7000 0.6000 0.5000 0.4000 0.3000 0.2000 0.1000 0.0000 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 Water Utility TE PTE Page 17 Preliminary results • 24% of water businesses are technically efficient • 62% of water businesses scored >50% efficiency in GHGs • The mean pure technical efficiency is 69% meaning an average water business could reduce its inputs usage by 31% and still produce the same output • The mean scale efficiency is 95% meaning that the loss of productivity due to scale inefficiency is low (only 5% on average). GHG emission performance (PTE) (VRS scores) GHG emission performance (TE) (CRS scores) Potential improvements Water utility: Bega Reference comparison Step-wise regression • Exogenous variables tested: – The length of water and wastewater mains – Institutional type of the water business (private company; state-owned company; statutory authority; local council) – Source of water (own; bulk exports; mixed) – Compliance (dummy) – Disclosure (dummy) – Total customer connections (significant at 5%) • Needs further exploration (eg. Composition of customer base: residential vs non-residential) Concluding remarks • Eco-efficiency demands a fresh look at the water and wastewater operations and policy goals • Supply augmentation capacity and GHG implications in the light of ETS • Repeat analysis with different model specifications and more data on explanatory variables • Use of alternative techniques (eg. SFA) to increase the reliability of results • Emission target setting should take into account varied non-discretionary factors Thank You Example presentation title Page 25