海上风电和变电站的维护计划与距离,燃料消耗和延迟优化

IF 3.7 4区 管理学 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Operations Research Perspectives Pub Date : 2023-01-01 DOI:10.1016/j.orp.2023.100267
E. De Kuyffer, K. Shen, L. Martens, W. Joseph, T. De Pessemier
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引用次数: 0

摘要

尽管对陆上和海上风电场的预测性维护进行了大量研究,但几乎没有进行任何调查来获得在预定义的时间框架内为风电场提供服务的最佳顺序。更高的燃料成本和维护工作日益增加的时间压力迫切需要优化,因此海上风车可以在有限的时间内以最低的成本提供服务。为了最大限度地减少要执行的所有维护任务的行驶距离、燃料消耗和平均延误,使用了遗传算法的多目标、非支配排序岛模型。实现了以下新贡献:(i)使用多目标岛屿模型,其中在每个岛屿上使用不同的遗传算法来最小化每个岛屿的单独成本函数。(ii)计算一组非主导维护序列,如Pareto平面所示,并且(iii)规划者可以使用这些最优解来选择CTV在维护序列期间从一个风车行进到另一个风车时要遵循的路线。在其中两个岛屿上进行的测试表明,与随机序列相比,燃料消耗和距离相对改善了约65%至70%,而第三个岛屿的平均称重延误相对增加了69%。这三个岛屿的结合产生了一组海上风车维护的帕累托最优序列。
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Offshore windmill and substation maintenance planning with Distance, Fuel consumption and Tardiness optimisation

Despite a lot of research about predictive maintenance for onshore and offshore windmill farms, nearly no investigation has been performed to obtain the optimal sequence in which windmills are to be served in a predefined time frame. The higher fuel costs and the increasing time pressure on maintenance jobs urge the need for optimisation, so offshore windmills can be serviced at minimal costs and within a limited time frame. To minimise distance travelled, fuel consumption and average tardiness of all maintenance tasks to be carried out, a multi-objective, non-dominated sorting island model of genetic algorithms is used.

The following novel contributions are realised: (i) A multi-objective island model is used, where on each island a different genetic algorithm is used to minimise a separate cost function per island. (ii) A set of non-dominated maintenance sequences, shown as a Pareto plane, are computed and (iii) these optimal solutions can be used by the planner to select the route to be followed by the CTV when travelling from windmill to windmill during a maintenance sequence.

Tests on two of the islands have resulted in a relative improvement of around 65 to 70% on fuel consumption and distance in relation to a random sequence, while the third island has generated a relative gain of 69% in average weighed tardiness. The three islands combined have resulted in a set of Pareto optimal sequences for offshore windmill maintenance.

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来源期刊
Operations Research Perspectives
Operations Research Perspectives Mathematics-Statistics and Probability
CiteScore
6.40
自引率
0.00%
发文量
36
审稿时长
27 days
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