Backward Simulation Dispatching Rule

碩士 === 大同大學 === 資訊經營研究所 === 95 === Under the production environment of current manufacturing industry, how to reduce the total tardiness and complete a deal has become a major research topic and is critical to increase competency. Therefore, there are many schedules of dispatching rules under study...

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Main Authors: Geng-Gu Liu, 劉耿谷
Other Authors: Yung-Hsin Wang
Format: Others
Language:en_US
Published: 2006
Online Access:http://ndltd.ncl.edu.tw/handle/28570778342049532205
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spelling ndltd-TW-095TTU007160022016-06-01T04:21:11Z http://ndltd.ncl.edu.tw/handle/28570778342049532205 Backward Simulation Dispatching Rule 反向模擬派工法則 Geng-Gu Liu 劉耿谷 碩士 大同大學 資訊經營研究所 95 Under the production environment of current manufacturing industry, how to reduce the total tardiness and complete a deal has become a major research topic and is critical to increase competency. Therefore, there are many schedules of dispatching rules under study proposing different solutions regarding to different situations. This study mainly discusses the schedule problem of Job Shop that takes into account due date and tolerant waiting time for scheduling process. In order to achieving the goal, we have proposed a heuristic algorithm of Backward Sequence Forward Schedule (BSFS) which uses the backward sequence to obtain the tolerant waiting time for every procedure and then proceeds the forward scheduling by making a judgment about Job and Operation to be done earlier, in order to reduce the total tradiness. In this thesis, we also hold a comparison discussion with Bake’s Modified Due Date (MDD) proposed in 1983.The result show to find out the performing characteristics regarding the total tardiness between both method. Because BSFS depend on Due Date for ready time, and in scheduling is according to operation time so it is a little effect scheduling result because of Due Date. Yung-Hsin Wang 王永心 2006 學位論文 ; thesis 0 en_US
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language en_US
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description 碩士 === 大同大學 === 資訊經營研究所 === 95 === Under the production environment of current manufacturing industry, how to reduce the total tardiness and complete a deal has become a major research topic and is critical to increase competency. Therefore, there are many schedules of dispatching rules under study proposing different solutions regarding to different situations. This study mainly discusses the schedule problem of Job Shop that takes into account due date and tolerant waiting time for scheduling process. In order to achieving the goal, we have proposed a heuristic algorithm of Backward Sequence Forward Schedule (BSFS) which uses the backward sequence to obtain the tolerant waiting time for every procedure and then proceeds the forward scheduling by making a judgment about Job and Operation to be done earlier, in order to reduce the total tradiness. In this thesis, we also hold a comparison discussion with Bake’s Modified Due Date (MDD) proposed in 1983.The result show to find out the performing characteristics regarding the total tardiness between both method. Because BSFS depend on Due Date for ready time, and in scheduling is according to operation time so it is a little effect scheduling result because of Due Date.
author2 Yung-Hsin Wang
author_facet Yung-Hsin Wang
Geng-Gu Liu
劉耿谷
author Geng-Gu Liu
劉耿谷
spellingShingle Geng-Gu Liu
劉耿谷
Backward Simulation Dispatching Rule
author_sort Geng-Gu Liu
title Backward Simulation Dispatching Rule
title_short Backward Simulation Dispatching Rule
title_full Backward Simulation Dispatching Rule
title_fullStr Backward Simulation Dispatching Rule
title_full_unstemmed Backward Simulation Dispatching Rule
title_sort backward simulation dispatching rule
publishDate 2006
url http://ndltd.ncl.edu.tw/handle/28570778342049532205
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