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A Systematic Framework for Maintenance Scheduling and Routing for Off-Shore Wind Farms by Minimizing Predictive Production Loss

机译:通过最大限度地减少预测生产损失,对岸上风电场进行维护调度和路由的系统框架

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Maintenance scheduling and vessel routing are critical for the off-shore wind farm to reduce maintenance costs. In this research, a systematic framework that takes the advantage of predictive analysis for off-shore wind farm maintenance optimization is sketched and the optimization results are presented. The proposed framework consists of three different functional modules - the prognostic and diagnostic (P&D) module, the wind power prediction module, and the maintenance optimization module. The P&D module predicts and diagnoses the system failures based on the operational data of the wind turbine and generates the maintenance tasks for execution. The power prediction module predicts the weather conditions and the production of the wind turbine in the next 1-3 days, which will be helpful for maintenance task prioritization and scheduling. The optimization module absorbs information from the previous two modules as input and optimizes the overall maintenance costs. Comparing with the previous research works, this framework optimizes the maintenance cost in a more challenging situation by considering the predicted remaining useful life from the P&D module and also the future weather condition from the wind power prediction module. In the proposed framework, the maintenance scheduling and the vessel routing are optimized collaboratively with the consideration of real-time production loss. The result of the proposed framework is demonstrated on an off-shore wind farm and reduced maintenance cost is reported.
机译:维护调度和船舶路由对于离岸风电场至关重要,以降低维护成本。在这项研究中,绘制了一个系统框架,其采用预测性分析对岸上风电场维护优化的优势,并提出了优化结果。所提出的框架由三种不同的功能模块组成 - 预后和诊断(P& D)模块,风电预测模块和维护优化模块。 P& D模块基于风力涡轮机的操作数据预测并诊断系统故障,并生成执行维护任务以进行执行。功率预测模块在未来1-3天内预测天气条件和风力涡轮机的生产,这将有助于维护任务优先级和调度。优化模块从前两种模块吸收信息作为输入,并优化整体维护成本。与以前的研究作品相比,该框架通过考虑来自P& D模块的预测的剩余使用寿命以及来自风电预测模块的未来天气状况,优化了更具挑战性的情况下的维护成本。在所提出的框架中,维护调度和血管路由在考虑实时生产损失时协同优化。拟议框架的结果在岸上风电场上证明,报告了减少的维护成本。

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