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International Conference on Numerical Analysis & Optimization: Theory and Applications December 18-19, 2011 , Dhahran, Saudi Arabia. Algebraic Optimization Algorithm for Inventory Coordination in the N-Stage Non-Serial Supply Chain with Planned Back-Orders. Mohammed E. Seliaman
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International Conference on Numerical Analysis & Optimization: • Theory and Applications • December 18-19, 2011, Dhahran, Saudi Arabia. Algebraic Optimization Algorithm for Inventory Coordination in the N-Stage Non-Serial Supply Chain with Planned Back-Orders Mohammed E. Seliaman Department of Information Systems College of Computer Science and Information Technology, King Faisal University, KSA Email: mseliaman@gmail.com
Outline • Supply Chain Management (SCM) • The Serial and non-serial SC • Related work • The problem definition • Model Development • Algebraic method for optimization • The algorithm • Conclusion , any remarks or questions
Supply Chain Management (SCM) • A set of approaches used to efficiently integrate • Suppliers Manufacturers Warehouses Distributers • So that the product is produced and distributed • In the right quantities • To the right locations • And at the right time • System-widecostsare minimized and • Service level requirements are satisfied • (Simchi-Levi et al.,2003)
A four-Stage Serial Supply chain Materials and Services Flow Information and Cash Flow Supplier Manufacturer Distributor Retailer
A four-stage non-serial supply chain Materials and Services Flow Information and Cash Flow Suppliers Manufacturers Distributors S2 S1 S3 Retailers S4
Related work • Cárdenas-Barrón (2007) solved the n-stage-multi-customer supply chain inventory model with the equal cycle inventory coordination. • Seliaman and Ahmad (2009) solved the same model considering integer multipliers coordination without backorders. • Chung and Wee, (2007) solved a three-stage serial SC model with backorders • Seliaman(2011) extended this model by adding a fourth stage and using integer multipliers
The Problem • We develop an algebraic optimization algorithm for the generalized n-stage, multi-customer, non-serial supply chain inventory problem. • We consider the integer multiplier inventory coordination mechanism with planned backorders and linear and fixed penalties
Notation • T =Basic cycle time, cycle time at the end retailers • Ti =Cycle time at stage i • Sij= Setup cost for firm j at stage i • Si =Total setup cost for all firms at stage i • Ki =Integer multiplier at stage i • hi =Inventory holding cost at stage i • ni =Number of firms at stage i • Dij =The demand rate of firm j at stage i • D=The demand rate of the entire supply chain • Pij =Production rate of firm j at stage i • = Backordering cost per unit per unit time • =per unit backorder cost(fixed) • A=The product of all production rates for all the companies in the supply chain. • Bij= The product of all production rates for all the companies in the supply chain, except for the company j in stage i.
Assumptions • A single product is produced and distributed through a multi-stage, multi-customer, non-serial, supply chain. • Production rates and Demand rates are deterministic and uniform. • Ordering /setup costs are the same for firms at the same stage. • Holding costs cost are the same for firms at the same stage. • A lot produced at stage is sent in equal shipments to the downstream stage. • The supply chain is vertically integrated and the entire supply chain optimization is acceptable for all partners in the chain. • Shortages are allowed for the end retailers. • Cycle time at each stage is an integer multiplier of the cycle time used at the adjacent downstream stage.
Retailer Inventory without back- orders TDn.j T T T Inventory holding per cycle = Inventory holding per unit time =
Retailer Inventory with back- orders TDn.j T- Ts Ts Ts T- Ts T T
Model Development • The time-weighted total cost for the jth retailer T
Model Development Cont. • The time-weighted total cost for all of the retailers together is : T
Inventory level Finished products Incoming materials Ti+1 Ti+1 Ti+1 Production Portion Non Production portion Ti Model Development Cont. • Raw materials and finished products at two consecutive stages:
Model Development Cont. The total annual cost for any firm at any stage, except for the final stage: T
Model Development Cont. • The total cost for the entire supply chain is T
Model Development Cont. • The total cost for the entire supply chain can be represented in the following compact form
Model Development Cont. • Initial values
References • Cárdenas-Barrón, L. E. (2006). Optimizing Inventory Decisions in a Multi-stage Multi-Customer Supply Chain: A Note. Transportation Research Part E: Logistics and Transportation Review. In Press. • Chung, C. J. and Wee, H. M. (2007). Optimizing the Economic Lot Size of a Three-Stage Supply Chain with Backordering Derived without Derivatives. European Journal of Operational Research. 183:933-943. • MoutazKhouja. (2003) Optimizing inventory decisions in a multi-stage multi-customer supply chain. Transportation Research. Part E, Logistics & Transportation Review, Exeter. pp 193-208. • M. E. Seliaman and AbRahman Ahmad, “A Generalized algebraic Model for Optimizing Inventory Decisions in a Multi-Stage Complex Supply Chain”, Transportation Research Part E: Logistics and Transportation Review, Elsevier Inc. 45(3), 2009, pp.: 409-418. • M. E. Seliaman (2011)“ using complete squares methods...”, Advances in Decision Sciences, 2011