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Simulation based risk management for multi-objective optimal wind turbine placement using MOEA/D

机译:基于MOEA / D的基于仿真的多目标风力发电机组最优风险管理

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Wake effect and wind uncertainty are the key factors resulting in low efficiency in wind energy extraction. Classic micro-siting approaches focus on reducing the wake effect to determine the best number and positions of the turbines. However, very little literature has addressed the issue of risk due to wind uncertainty which causes the expected production to be distantly deviated from what is actually produced. Multi-objective modeling is of particular interest due to its potential of managing risk. This paper proposes several multi-objective risk management (MORM) models which set the foundation on Monte Carlo simulation to conduct cost, benefit, and risk analyses. We develop an enhanced multi objective evolutionary algorithm with decomposition (MOEA/D) algorithm by taking advantages of wind farm structure. The experiment result with real wind farm data shows the application differences in gauging the risks with various MORM models. The enhanced MOEA/D is compared with two state-of-the-art algorithms and the former produces the best frontier in the objective space in most of the simulations with mean absolute percentage improvement (API) of 46%. We demonstrate what-if analysis with various risk scenarios to assist the decision maker to realize his/her risk tolerance and to reach quality tradeoff decisions. (C) 2017 Elsevier Ltd. All rights reserved.
机译:唤醒效应和风的不确定性是导致风能提取效率低下的关键因素。经典的微选址方法着重于降低尾流效应,以确定最佳的涡轮机数量和位置。但是,很少有文献讨论过由于风的不确定性引起的风险问题,风的不确定性导致预期的产量与实际产量相差甚远。由于多目标建模具有管理风险的潜力,因此特别受关注。本文提出了几种多目标风险管理(MORM)模型,这些模型为进行成本,收益和风险分析的蒙特卡罗模拟奠定了基础。我们利用风电场结构的优势,开发了一种带有分解的增强型多目标进化算法(MOEA / D)。真实风电场数据的实验结果表明,在使用各种MORM模型进行风险评估时,应用程序存在差异。增强的MOEA / D与两种最新算法进行了比较,在大多数模拟中,前者在目标空间中产生最佳前沿,平均绝对百分比改进(API)为46%。我们演示了各种风险情景下的假设分析,以帮助决策者实现其风险承受能力并达成质量折衷的决策。 (C)2017 Elsevier Ltd.保留所有权利。

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