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GPRs搭接网络分解优化定理在流水作业中的应用

Chinese Journal of Management Science(2018)

Cited 2|Views4
Abstract
本文发现在GPRs搭接网络传统算法中,针对某些可分解的关键工序,通过工序的分解会产生分解悖论和咖啡时间悖论.通过对这些悖论现象的分析研究,发现其存在帕累托改进.对此,提出了两个分解优化定理及网络的分解优化方法,使网络的总工期和总时差的分布都得到了优化,为项目WBS和资源优化提供了更科学的,更充足的条件.并将该分解优化定理同流水作业原理相结合,用实例证明了该方法的可操作性,为流水作业中施工段的划分提供了科学的优化方法.
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