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Solving a stochastic inland waterway port management problem using a parallelized hybrid decomposition algorithm

机译:使用并行化混合分解算法解决随机内陆水路港口管理问题

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This study proposes to develop a mathematical model that captures and appropriately optimizes a number of realistic features (e.g., barge/towboat assignments, maintenance, and availability decisions) for the design and management of an inland waterway transportation network under stochastic commodity supply and water level fluctuations scenarios. To efficiently solve this challenging N P -hard problem, we propose to develop a highly customized parallelized hybrid decomposition algorithm that combines Sample Average Approximation with an enhanced Progressive Hedging and Nested Decomposition algorithm. Computational results indicate that the proposed algorithm is capable of producing high quality solutions consistently within a reasonable amount of time. Finally, a real-life case study is constructed by utilizing the inland waterway transportation network along the Mississippi River. Through multiple experimentations, a number of managerial insights are drawn that magnifies the impact of different key input parameters on the overall inland waterway port operations.(c)& nbsp;2020 Elsevier Ltd. All rights reserved.
机译:本研究建议开发一个数学模型,用于在随机商品供应和水平下,在内陆水路运输网络的设计和管理中捕获和适当地优化许多现实特征(例如,驳船/拖车分配,维护和可用性决策)波动方案。为了有效地解决这一具有挑战性的N P-Hard问题,我们建议开发一种高度定制的并行化混合分解算法,将样本平均近似与增强的渐进性对冲和嵌套分解算法相结合。计算结果表明,该算法能够在合理的时间内一致地生产高质量解决方案。最后,通过利用密西西比河沿着内陆水路运输网络建造了真实案例研究。通过多种实验,绘制了许多管理洞察力,将不同关键输入参数对整个内陆水路港口运营的影响放大。(c)  2020 elestvier有限公司保留所有权利。

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