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Placement and Routing Optimization for Automated Inspection With Unmanned Aerial Vehicles: A Study in Offshore Wind Farm

机译:无人机空中车辆自动检测放置和路由优化:海上风电场研究

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摘要

Wind power is a clean and widely deployed alternative to reducing our dependence on fossil fuel power generation. Under this trend, more turbines will be installed in wind farms. However, the inspection of the turbines in an offshore wind farm is a challenging task because of the harsh environment (e.g., rough sea, strong wind, and so on) that leads to high risk for workers who need to work at considerable height. Also, inspecting increasing number of turbines requires long man hours. In this regard, unmanned aerial vehicles (UAVs) can play an important role for automated inspection of the turbines for the operator, thus reducing the inspection time, man hours, and correspondingly the risk for the workers. In this case, the optimal number of UAVs enough to inspect all turbines in the wind farm is a crucial parameter. In addition, finding the optimal path for the UAVs' routes for inspection is also important and is equally challenging. In this article, we formulate a placement optimization problem to minimize the number of UAVs in the wind farm and a routing optimization problem to minimize the inspection time. Wind has an impact on the flying range and the flying speed of UAVs, which is taken into account for both problems. The formulated problems are NP-hard. We therefore design heuristic algorithms to find solutions to both problems, and then analyze the complexity of the proposed algorithms. The data of the Walney wind farm are then utilized to evaluate the performance of the proposed algorithms. Simulation results clearly show that the proposed methods can obtain the optimal routing path for UAVs during the inspection.
机译:风电是一种干净,广泛部署的替代方案,可以减少我们对化石燃料发电的依赖。在这种趋势下,有更多的涡轮机将安装在风电场中。然而,由于苛刻的环境(例如,汹涌的大海,强风等),对海上风电场中的涡轮机的检查是一个具有挑战性的任务,这导致需要在相当高地工作的工人的高风险。此外,检查越来越多的涡轮机需要长时间的时间。在这方面,无人驾驶航空公司(无人机)可以为操作员的涡轮机自动检查发挥重要作用,从而减少了检验时间,人数,以及相应地对工人的风险。在这种情况下,足以检查风电场中所有涡轮机的无人机的最佳数量是重要参数。此外,找出无人机检查的最佳路径检查也很重要,同样具有挑战性。在本文中,我们制定了放置优化问题,以最大限度地减少风电场中的无人机数量和路由优化问题,以最小化检查时间。风对飞行范围和无人机的飞行速度产生影响,这是考虑到这两个问题。制定的问题是NP-HARD。因此,我们设计了启发式算法,为两个问题找到解决方案,然后分析所提出的算法的复杂性。然后利用Walney风电场的数据来评估所提出的算法的性能。仿真结果清楚地表明,所提出的方法可以在检查期间获得无人机的最佳路由路径。

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