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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >A novel hybrid metaheuristic optimization method to estimate medium-term output power for horizontal axis wind turbine
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A novel hybrid metaheuristic optimization method to estimate medium-term output power for horizontal axis wind turbine

机译:一种估计水平轴风力发电机中期输出功率的新型混合元启发式优化方法

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摘要

The increasing damage caused by fossil fuels has made it a necessity for new and clean energy sources. In recent years, the use of wind energy from renewable energy sources has increased, which is a new and clean energy source. Wind energy is everywhere in nature. The wind speed changes depending on time. Thus, the wind power is unstable. In order to keep this disadvantage at a minimum level, future power estimation studies have been carried out. In these studies, different methods and algorithms are applied to estimate short and medium term in wind power. In this study, artificial neural network, particle swarm optimization and firefly algorithm (FA) as a new method are used for the first time in predicting wind power. As input data, temperature, wind speed and rotor speed the data recorded in the SCADA in wind turbines are used to predict medium-term wind speed and also wind power. Each method is compared in detail and their performances are revealed.
机译:化石燃料造成的损害越来越大,这使其成为新的清洁能源的必要。近年来,来自可再生能源的风能的使用已经增加,这是一种新的清洁能源。风能无处不在。风速随时间变化。因此,风力不稳定。为了将这种缺点保持在最低水平,已经进行了未来的功率估计研究。在这些研究中,采用了不同的方法和算法来估算风力发电的短期和中期。在这项研究中,首次将人工神经网络,粒子群优化和萤火虫算法(FA)作为一种新方法来预测风力。作为输入数据,温度,风速和转子速度,风力涡轮机中SCADA中记录的数据用于预测中期风速以及风力。详细比较了每种方法,并揭示了它们的性能。

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