Title: | 混合式流程工廠排程之巨集啟發式演算法的比較 A Comparison of Meta-heuristics Algorithms for the Hybrid Flow Shop Scheduling Problem |
Authors: | 李忠霖 Zhong-Lin Li 巫木誠 Muh-Cherng Wu 工業工程與管理學系 |
Keywords: | 混合式流程工廠;排程;演算法;Hybird flow-shop;Scheduling;Algorithms |
Issue Date: | 2006 |
Abstract: | 在流程工廠排程問題(Flow shop scheduling;FS)中,若一個工作站有多部機台,而且一個作業可能需要多部機台合作才能加工,此種問題稱之為混合式流程工廠排程問題 (Hybrid flow shop scheduling problem;HFSP)。針對HFSP問題,過去已有許多演算法,目前以Ying & Lin (2006)的演算法表現較佳,本研究結合共識因子和田口方法提出多種巨集演算法(meta-heuristics),希望找出一種演算法,能在績效上改進Ying & Lin (2006)的演算法。本研究使用120個案例,分成12種情境實驗測試。與Ying & Lin (2006)演算法相比,本研究所發展的演算法僅在42%的情境表現較佳,卻在58%的情境中表現較不如過去的演算法。 A hybrid flow-shop scheduling problem (HFSP) has two distinct features. A workstation may include more than one machine; and an operation may require more than one machine to process it. Much literature on HFSP has been published, in which the algorithm proposed by Ying & Lin (2006) is the most leading one. We applied the notions of consensus and Taguchi genetic operators and proposed various meta-heuristics algorithms. Extensive numerical tests that include 120 problem instances, categorized into 12 scenarios, have been carried out. Compared with the algorithm proposed by Ying & Lin (2006), our algorithm excel in 42% scenarios and lose in 58% scenarios. |
URI: | http://140.113.39.130/cdrfb3/record/nctu/#GT009433529 http://hdl.handle.net/11536/81639 |
Appears in Collections: | Thesis |
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