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1、MultiPlant Production and Transportation Planning Based on DataMultiPlant Production and Transportation Planning Based on Data Abstract This paper proposes a methodology for developing a coordinated aggregate production plan for manufacturers producing multiple products at multiple plants simultaneo
2、usly, in a centralized environment via data envelopment analysis (DEA). Based on demand forecast of the planning horizon, the central decision maker (DM) specifies the optimal combination of input resources required by the optimal output targets for each plant to keep the supply and demand in balanc
3、e, and the accompanying transportation trips and volumes among distribution centers (DCs) or warehouse facilities. In this paper, we focus on an integrated production-transportation problem since production and transportation are two fundamental ingredients in the whole operation chain. We deal with
4、 multiple products manufactured in multiple plants. The proposed mixed integer DEA models minimize both production costs and transportation costs. The capacity constraint for each plant is enforced by using the production possibility set theory. Finally, we validate our models by a numerical example
5、 and sensitivity analysis. Key words: Integrated production-transportation planning; Data envelopment analysis Liu. F., Bi, G. B., & Ding, J. J. (2014). Multi-Plant Production and Transportation Planning Based on Data Envelopment Analysis. Canadian Social Science, 10(3), -0. Available from: http:/ D
6、OI: http:/dx.doi.org/10.3968/4536 INTRODUCTION We consider an integrated production and transportation planning problem: how to optimally determine aggregate production planning and transportation trips among distribution centers (DCs) and the corresponding transportation volumes, where production a
7、nd transportation plan are considered simultaneously. The production decisions concerns how to allocate input resources and set output targets among different production units, while the transportation decisions work out how to transport superfluous outputs for one DC to other under-supply DCs when
8、all these DCs are accommodated by the corresponding production unit. We are interested in making an integral decision to minimize the aggregate costs including production costs, here mainly referring to the costs of input resources, and transportation costs to satisfy each DCs market demand. In supp
9、ly chain management, it concerns efficient policies related to purchasing raw materials from suppliers according to order or market forecast, transforming them into finished goods considering production capacity, and delivering them to end customer. Traditionally, the activities are optimized separa
10、tely due to the intractability of large model. It is obvious that such pattern neglects the internal relation in the chain compared with optimizing these steps simultaneously since optimization of each step separately does not necessarily lead to the optimization of all steps in an integrated manner
11、. That is especially true when we deal with multi-plant and multi-DC under a centralized environment, where mutual cooperation is permitted and often required as long as such decision is cost-efficient for each DC to meet its demand. Consequently, the coordinated operations of the main stages will l
12、ead to remarkable cost reductions for the company. For example, in a research of Libbey-Owens-Ford Company (Martin et al., 1993), integrated approach saves nearly $2,000,000 compared with separated operations in annual cost. Another production-distribution study for Procter&Gamble (P&G) company (Cam
13、m et al., 1997) shows that integrated planning cuts down almost 20% of total cost. Integrated production and planning has become a new branch of supply chain management (Hugos, 2011; Papageorgiu, 2009). Our model differs from previous works in the technique to characterize production function. We as
14、sume no a priori information on production technology. In particular, this paper introduces data envelopment analysis (DEA), a nonparametric method to describe production process, into integrated production-transportation problem, which is a different approach compared to the previous works in this
15、field. There have been many papers covering the integrated production-transportation problem in a tactical level, some of which include the management of inventory especially in multi-period situations. However, most of them link the production process with a priori production relationship. For exam
16、ple Zuo et al., (1991), Barbaroso?lu and ?zgr (1999), Jayaraman and Pirkul (2001), Jain and Palekar (2005), Kanyalkar and Adil (2007) etc. propose models with production capacity or capacity expansion as consistent constraints; Tuy et al., (1993), Hochbaum and Hong (1996), Tuy et al., (1996), Kuno a
17、nd Utsunomiya (1997; 2000), etc. explicitly draw on exogenous production functions. In fact, such valuable a priori information is not always available, which reduces the applicability of their models. DEA is the one of the best modeling tools for providing a satisfactory solution. By using “satisfa
18、ctory solution”, we imply that our model is based on limited information about production process that the decision maker (DM) could be able to secure. The characterization of functional dependency between inputs and outputs in a production process is not an easy undertaking in some applications. Th
19、is becomes more severe when the dimensions of inputs and outputs increase as exemplifying the features of the modern manufacturing, which partially motivate the research of this paper. Besides, DEA technique helps to identify whether the production process is efficient or not. The rest of the paper
20、is organized as follows. Section 1 reviews the current literature on DEA-based production planning and integrated production-transportation problem. An integrated model of DEA-based production and transportation planning is proposed in section 2. An illustration of the model is given in section 3. S
21、ensitivity analyses on the inputs and transportation prices order of magnitude in section 4. Conclusions are drawn in the last section. 1. LITERATURE REVIEW Our paper relates to two bodies of research: The literature on integrated production-transportation and the literature on production planning b
22、ased on DEA. Dhaenens-Flipo and Finke (2001) deals with a multi-facility and multi-product planning problem, where production costs and transportation costs are regarded simultaneously. Simchi-Levi et al., (2004) gives a comprehensive review on the explicit production-distribution (EPD) problems. Va
23、rious EPD problems are classified by three criteria: decision level, integration structure and problem parameters. In this paper we focus on the production-transportation problems, one class of great attention. Kanyalkar and Adil (2007) present a linear programming model to overcome the weaknesses o
24、f sequential planning approaches in a multi-site environment, where specific factors, are considered for a consumer goods enterprise. Alemany et al., (2010) proposes a mixed-integer linear programming (MILP) model under a centralized ceramic tile sector. The objective function is to maximize total n
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