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Robust Optimization Model and Algorithm for Railway Freight Center Location Problem in Uncertain Environment

机译:不确定环境下铁路货运中心选址问题的鲁棒优化模型和算法

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摘要

Railway freight center location problem is an important issue in railway freight transport programming. This paper focuses on the railway freight center location problem in uncertain environment. Seeing that the expected value model ignores the negative influence of disadvantageous scenarios, a robust optimization model was proposed. The robust optimization model takes expected cost and deviation value of the scenarios as the objective. A cloud adaptive clonal selection algorithm (C-ACSA) was presented. It combines adaptive clonal selection algorithm with Cloud Model which can improve the convergence rate. Design of the code and progress of the algorithm were proposed. Result of the example demonstrates the model and algorithm are effective. Compared with the expected value cases, the amount of disadvantageous scenarios in robust model reduces from 163 to 21, which prove the result of robust model is more reliable.
机译:铁路货运中心选址问题是铁路货运规划中的重要问题。本文重点研究不确定环境下的铁路货运中心选址问题。鉴于期望值模型忽略了不利情景的负面影响,提出了一种鲁棒的优化模型。健壮的优化模型以情景的预期成本和偏差值为目标。提出了一种云自适应克隆选择算法(C-ACSA)。它结合了自适应克隆选择算法和云模型,可以提高收敛速度。提出了代码的设计和算法的进展。算例结果表明该模型和算法是有效的。与期望值案例相比,鲁棒模型中的不利场景数量从163个减少到21个,证明了鲁棒模型的结果更加可靠。

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