标题: | 半导体一元化代工服务之整合生产与运输规划问题 Integrated Production and Transportation Problem (IPTP) for Semiconductor Manufacturing with Turnkey Service |
作者: | 钟一平 Chung, I-Ping 彭文理 Pearn, Wen Lea 工业工程与管理系所 |
关键字: | 整合生产与运输问题;半导体生产一元化代工服务;混合整数规划;基因演算法;integrated production and transportation problem;semiconductor manufacturing with turnkey service;mixed integer linear programming;genetic algorithm |
公开日期: | 2015 |
摘要: | 半导体生产一元化代工服务系由晶圆制造厂整合产业之生产资源,同时提供晶圆针测(Circuit Probing Testing)、封装(Assembly)与最终测试(Final Testing)的一元化半导体生产加工服务,让客户省下繁复的订单与跟催作业,并降低半成品在各阶段厂商与客户间运输的前置时间,此举大大地提高客户下单的意愿,进而创造晶圆代工厂的竞争优势。所以,如何充分利用产能,满足顾客订单需求来增加竞争力及获利,为一重要之研究课题。半导体后段制造具有多样产品别、多制程阶段,以及跨多厂区的特性,从生产制造的面向来看,需考量多家代工厂的设置成本、制程能力差异、代工厂的产能规模,以及其生产不同产品样式的加工成本;从运输配送的面向来看,则须考量到多台车辆资源限制、车辆运输距离限制,以及单位运输成本。然而,单独追求生产或运输成本的最佳化,并没有办法带来最大的整体效益。因此,本研究将深入探讨整合生产运输规划问题(Integrated production and transportation problem, IPTP),以解决提供半导体一元化代工服务的晶圆制造商所面临的实务问题。 本论文探讨两种IPTP问题,首先为考量外包厂一般产能及无车辆运输距离上限的IPTP问题(IPTP with normal outsourcing factory capacity and unlimited vehicle traveling length; nIPTP),另外则是考量外包厂备用产能及有车辆运输距离上限的IPTP问题(IPTP with backup outsourcing factory capacity and limited vehicle traveling length; bIPTP),此二种生产配送规划问题皆以最小化生产及运输成本为目标。 于本论文中,我们针对nIPTP与bIPTP两个生产配送规划问题分别建立其混合整数规划模式(MILP),并求取最佳解。在nIPTP问题研究中,我们提出三个启发式解法(VRSCA、OFIA与OFDA)来解决问题,由运算结果及绩效比较中得知,本研究所提出之启发式法有很好的求解品质。在一个包含30个产品别与19个工厂的大型实务问题当中,OFIA平均能在1.15秒钟找到近似最佳解,其解题的品质与效率均优于其他两个演算法;在bIPTP问题研究中,由于考虑了代工厂商的备用产能,以及增加了运输车辆的运输距离限制,本文提出一套基因演算法模式(Genetic Algorithm, GA)作为求解的工具。从实验设计的数据分析中得知,GA在低产能负荷及低产能变异的题型之下,其解题品质相对较好。在小型与中型的问题中,GA的求解品质相对稳健,因此,当面对MILP无法在合理时间找到最佳解的大型问题时,GA足以胜任解题之工作。 Solving an integrated production and transportation problem (IPTP) is a very challenging task in semiconductor manufacturing with turnkey service. A wafer fabricator needs to coordinate with outsourcing factories in the processes including circuit probing testing, integrated circuit assembly, and final testing for buyers. The jobs are clustered by their product types, and they must be processed by groups of outsourcing factories in various stages in the manufacturing process. Furthermore, the job production cost depends on various product types and different outsourcing factories. The IPTP is very complicated since it is a dimensional problem which involves job clusters, job-cluster dependent production cost, factory setup cost, process capabilities, and transportation cost with multiple vehicles, with a minimal total cost criterion. Therefore, the development of efficient algorithms is critical to solve the IPTP for semiconductor manufacturing with turnkey service provider. In this dissertation, we considered IPTP with normal outsourcing factory capacity and unlimited vehicle traveling length (nIPTP), and IPTP with backup outsourcing factory capacity and limited vehicle traveling length (bIPTP). The objective of both problems is to minimiza total production and transportation cost. We first formulate the problems as two mixed integer linear programming models (MILP) to obtain the exact solutions. We present three heuristic algorithms (VRSCA, OFIA and OFDA) based on the network algorithms with some modifications to accommodate the nIPTP. From the computational tests, the performances of the proposed model and heuristic algorithms are quite satisfactory. In a large size real-life problem with 30 product types and 19 outsourcing factories, the OFIA outperforms the other two algorithms, obtaining the near optimal solution within 1.55 CPU seconds. The bIPTP considering outsourcing factory back-up capacity and limited vehicle route traveling length is too complicated to solve efficiently and effectively. Therefore, an efficient genetic algorithm (GA) is proposed to tackle the problem. The GA performs well under the problem characters of low capacity loading and small capacity variance. Although GA may not outperform the MILP for small-size or medium-size problems, it can obtain near-optimal solutions for large-size problems while the MILP model may not obtain a solution after a long computational time. |
URI: | http://140.113.39.130/cdrfb3/record/nctu/#GT079433807 http://hdl.handle.net/11536/126293 |
显示于类别: | Thesis |