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Exam 2 Formulas Chapter 6: Quality Management Pareto diagram: Relative frequency=frequency/sum of frequencies Chapter 6S: Statistical Process Control Μ -Chart if ο³ is known: π₯ΜΏ ± π§Οπ₯Μ , LCLπ₯Μ = π₯ΜΏ β π§Οπ₯Μ and UCLπ₯Μ = π₯ΜΏ + π§Οπ₯Μ πΏ where, π₯ΜΏ mean of the sample means or a target value set for the process z = number of standard deviations (2 for 95.45% confidence and 3 for 99.73%) ππ₯Μ = Standard deviation of sample means = ο³ / n ο³ = population (process) standard deviation n = sample size Μ , LCLπ₯Μ = π₯ΜΏ β π΄2 π Μ and UCLπ₯Μ = π₯ΜΏ ± π΄2 π Μ Μ -Chart if ο³ is unknown: π₯ΜΏ ± π΄2 π πΏ β π π where, π Μ = = Average range of samples; Rj = range for one sample π A2 = Value found in Table S6.1 π₯ΜΏ = mean of the sample means R-Chart LCLR = D3 , UCLR = D4 ; where, D3 & D4 are values from Table S6.1 p-Chart: πΜ ± π§ο³πΜ LCLp = πΜ β πο³πΜ , and UCLp = πΜ + πο³πΜ β π·πππππ‘π where, πΜ = mean fraction of defectives in the samples = (ππ.ππ π ππππππ )(π) z = number of standard deviations (2 for 95.45% confidence and 3 for 99.73%) πΜ (1βπΜ ) πp = standard deviation of sampling distribution = β π p = defectives/n n = number of observations in each sample c-Chart: πΜ ± π§βπΜ , LCLc = πΜ β π§βπΜ and UCLc = πΜ + π§βπΜ where, c = number of defectives per unit output z = number of standard deviations (2 for 95.45% confidence and 3 for 99.73%) Process Capability Cp = πππππ π πππππππππ‘πππ πΏππππ‘ β πΏππ€ππ π πππππππππ‘πππ πΏππππ‘ Cpk = Minimum of { 6π πππππ π πππππππππ‘πππ πππππ‘ β π₯Μ π₯Μ β πΏππ€ππ π πππππππππ‘πππ πππππ‘ 3π , ο³ = process standard deviation Cp and Cpk must be >= 1β for process to be deemed capable, >=2 for Six-sigma operations 3π } Acceptance Sampling Pa = P(X<= c) = From Poisson table using nPd, where, Pa = Probability of accepting the sample Pd = Probability of defectives in the lot n = sample size c = Critical number of defectives in the sample X = number of defectives in the sample Producerβs risk = 1 β Pa with Pd = AQL where, AQL = Acceptable Quality Limit Consumerβs risk = Pa with Pd = LTPD, where, LTPD = Limit Tolerance Percent Defective Average Outgoing Quality AOQ = where, ( Pd )( Pa )( N ο n) N AOQ = Average Outgoing Quality Pa = Probability of accepting the sample Pd = Probability of defectives in the lot n = sample size N =Lot size Chapter 12 Inventory Management ABC Classification rule: Class A: ~15% of items, 70-80% annual $ usage Class B: ~30% of items, 15-25% annual $ usage Class C: ~55% of items, 5% annual $ usage Item $ Usage % of $ usage Basic EOQ Model 2 DS Q* ο½ H Cumulative % of $ Cumulative % of no. of items where, D = Demand per year S = Ordering cost for each order H = Holding (carrying) cost per unit per year Expected number of orders (N) = D/Q Expected time between orders (T) = (Q/D) No. of days per year = Q/d Annual ordering cost = NS = (D/Q)S Annual carrying cost = (Q/2)H Total annual cost (TC) = (D/Q)S + (Q/2)H Class POQ Model 2 DS H (1 ο d / p ) Q ο½ * p where, D = Demand per year S = Ordering cost for each order H = Holding (carrying) cost per unit per year p = Daily production rate d = Daily demand rate = D/No. of working days Length of production run (t) = Q/p Rate of increase of inventory during production = (p - d) Maximum inventory = Imax = (Q/p)(p-d) Average inventory = Imax/2 Expected number of batches (N) = D/Q Expected time between orders (T) = (Q/D) or No. of days per year = Q/d Annual setup cost = NS = (D/ Q)S Annual carrying cost = (Imax/2)H Total annual cost (TC) = (D/Q)S + (Imax /2)H Quantity discount model Qο½ where, D = Demand per year S = Ordering cost for each order IP = H = Holding (carrying) cost per unit per year I = Holding cost as a % of item cost P = Item cost per unit 2 DS IP Step 1: Determine Candidate Q 1. Compute Formula-Q for each price break price. 2. If Formula Q < Lower limit for price, then Candidate Q = Lower limit If Formula Q is within the limits for the price, then Candidate Q = Formula Q If Formula Q > Upper limit for price, then no candidate Q, ignore the Formula Q Q-Range Price Holding cost/unit = % x P Formula Q Adjusted Q Step 2: Compute total annual cost (TC) for each valid candidate Q and select the candidate Q with least cost as EOQ. Total annual cost = Annual holding cost + Annual ordering cost + Annual item cost i.e. = (Q/2)H + (D/Q)S + PD, where P = cost of the item per unit ROP Models Discrete Probability model Total cost = Annual Holding cost + Annual stock out cost Annual Holding cost = Safety stock x H Annual stock-out cost = Expected stock out per cycle x N x Cs Where, Expected stock out = ο (Stock out x Probability) N = No. of orders per year = D/Q Cs = Cost of stock out per unit Reorder point model with Normal distribution: Reorder point (ROP) = Average demand during lead time + Safety stock i.e. ROP = d x L + Z ο³dLT where, d = Demand rate per period L = Lead time Z = Normal table value for the given service level ο³dLTο = Standard deviation of demand during lead time (as give in table below) Lead time is constant Lead time is variable Demand is constant πdLT = 0 πdLT = dππΏ Demand is variable πdLT = ο³dβπΏ πdLT = βπΏππ2 + π ππΏ2 2 Single-Period model πΆ Service level = πΆ +π πΆ , where Cs = Cost of shortage, Co = cost of overage π π Cs = Lost profit = Selling price per unit β Cost per unit Co = Cost/unit β salvage value/unit Order quantity = ο + Zο³, where ο = mean demand, ο³ = standard deviation of demand Stock-out risk= 1 - service level