Multi-item, multi-facility supply chain planning: Models, complexities, and algorithms

被引:29
作者
Wu, SD [1 ]
Golbasi, H [1 ]
机构
[1] Lehigh Univ, Dept Ind & Syst Engn, Bethlehem, PA 18015 USA
基金
美国国家科学基金会;
关键词
supply chain optimization; lot sizing; mixed integer programming; NP-completeness; analysis of algorithms;
D O I
10.1023/B:COAP.0000033967.18695.9d
中图分类号
C93 [管理学]; O22 [运筹学];
学科分类号
070105 [运筹学与控制论]; 12 [管理学]; 1201 [管理科学与工程]; 1202 [工商管理学]; 120202 [企业管理];
摘要
We propose a planning model for products manufactured across multiple manufacturing facilities sharing similar production capabilities. The need for cross-facility capacity management is most evident in high-tech industries that have capital-intensive equipment and a short technology life cycle. We propose a multicommodity flow network model where each commodity represents a product and the network structure represents manufacturing facilities in the supply chain capable of producing the products. We analyze in depth the product-level (single-commodity, multi-facility) subproblem when the capacity constraints are relaxed. We prove that even the general-cost version of this uncapacitated subproblem is NP-complete. We show that there exists an optimization algorithm that is polynomial in the number of facilities, but exponential in the number of periods. We further show that under special cost structures the shortest-path algorithm could achieve optimality. We analyze cases when the optimal solution does not correspond to a source-to-sink path, thus the shortest path algorithm would fail. To solve the overall (multicommodity) planning problem we develop a Lagrangean decomposition scheme, which separates the planning decisions into a resource subproblem, and a number of product-level subproblems. The Lagrangean multipliers are updated iteratively using a subgradient search algorithm. Through extensive computational testing, we show that the shortest path algorithm serves as an effective heuristic for the product-level subproblem ( a mixed integer program), yielding high quality solutions with only a fraction (roughly 2%) of the computer time.
引用
收藏
页码:325 / 356
页数:32
相关论文
共 34 条
[1]
COMPUTATIONALLY EFFICIENT OPTIMAL-SOLUTIONS TO THE LOT-SIZING PROBLEM IN MULTISTAGE ASSEMBLY SYSTEMS [J].
AFENTAKIS, P ;
GAVISH, B ;
KARMARKAR, U .
MANAGEMENT SCIENCE, 1984, 30 (02) :222-239
[2]
GLOBAL SUPPLY CHAIN MANAGEMENT AT DIGITAL-EQUIPMENT-CORPORATION [J].
ARNTZEN, BC ;
BROWN, GG ;
HARRISON, TP ;
TRAFTON, LL .
INTERFACES, 1995, 25 (01) :69-93
[3]
MODELS FOR RAIL TRANSPORTATION [J].
ASSAD, AA .
TRANSPORTATION RESEARCH PART A-POLICY AND PRACTICE, 1980, 14 (03) :205-220
[4]
DETERMINING LOT SIZES AND RESOURCE REQUIREMENTS - A REVIEW [J].
BAHL, HC ;
RITZMAN, LP ;
GUPTA, JND .
OPERATIONS RESEARCH, 1987, 35 (03) :329-345
[5]
Baker K., 1993, HDB OPERATIONS RES M, V4
[6]
BALAKRISHNAN A, 2000, M SOM, V2
[7]
MATHEMATICAL-PROGRAMMING APPROACHES TO CAPACITY-CONSTRAINED MRP SYSTEMS - REVIEW, FORMULATION AND PROBLEM REDUCTION [J].
BILLINGTON, PJ ;
MCCLAIN, JO ;
THOMAS, LJ .
MANAGEMENT SCIENCE, 1983, 29 (10) :1126-1141
[8]
IMPROVED HEURISTICS FOR MULTISTAGE REQUIREMENTS PLANNING SYSTEMS [J].
BLACKBURN, JD ;
MILLEN, RA .
MANAGEMENT SCIENCE, 1982, 28 (01) :44-56
[9]
Burton RM, 1984, Designing Efficient Organizations: Modelling and Experimentation
[10]
Cohen M. A., 1989, Journal of Manufacturing and Operations Management, V2, P81