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首页> 外文期刊>European Journal of Operational Research >Optimizing vessel fleet size and mix to support maintenance operations at offshore wind farms
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Optimizing vessel fleet size and mix to support maintenance operations at offshore wind farms

机译:优化船舶舰队规模和混合,以支持海上风电场的维护运营

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This paper considers the problem of determining the optimal vessel fleet to support maintenance operations at an offshore wind farm. We propose a two-stage stochastic programming (SP) model of the problem where the first stage decisions are what vessels to charter. The second stage decisions are how to support maintenance tasks using the chartered vessels from the first stage, given uncertainty in weather conditions and the occurrence of failures. To solve the resulting SP model we perform an ad-hoc Dantzig-Wolfe decomposition where, unlike standard decomposition approaches for SP models, parts of the second stage problem remain in the master problem. The decomposed model is then solved as a matheuristic by apriori generating a subset of the possible extreme points from the Dantzig-Wolfe subproblems. A computational study in three parts is presented. First, we verify the underlying mathematical model by comparing results to leading work from the literature. Then, results from in-sample and out-of-sample stability tests are presented to verify that the matheuristic gives stable results. Finally, we exemplify how the model can help offshore wind farm operators and vessel developers improve their decision making processes. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文考虑了确定最佳船队在海上风电场支持维修业务的问题。我们提出了一个两阶段随机编程(SP)模型的问题,其中第一阶段决定是宪章的船只。第二阶段决定是如何支持使用第一阶段的特许船只的维护任务,在天气条件和失败发生的情况下给予不确定性。为了解决结果的SP模型,我们执行ad-hoc dantzig-wolfe分解,在那里,与sp模型的标准分解方法不同,第二阶段问题的部分仍然存在于主问题。然后,分解模型由APRiori生成来自Dantzig-Wolfe子问题的可能极端点的子集。提出了三个部分的计算研究。首先,我们通过将结果与文献中的主要工作进行比较来验证底层数学模型。然后,提出了采样内和样品稳定性测试的结果以验证数学素描是否提供稳定的结果。最后,我们举例说明该模型如何帮助海上风电场运营商和船舶开发商改善其决策过程。 (c)2019 Elsevier B.v.保留所有权利。

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