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首页> 外文期刊>International Journal of Energy and Environmental Engineering >Short-term wind speed forecasting using artificial neural networks for Tehran, Iran
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Short-term wind speed forecasting using artificial neural networks for Tehran, Iran

机译:使用人工神经网络对伊朗德黑兰进行短期风速预测

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Abstract Wind energy is increasingly being utilized globally, in part as it is a renewable and environmental-friendly energy source. The uncertainty caused by the discontinuous nature of wind energy affects the power grid. Hence, forecasting wind behavior (e.g., wind speed) is important for energy managers and electricity traders, to overcome the risks of unpredictability when using wind energy. Forecasted wind values can be utilized in various applications, such as evaluating wind energy potential, designing wind farms, performing wind turbine predictive control, and wind power planning. In this study, four methods of forecasting using artificial intelligence (artificial neural networks with radial basis function, adaptive neuro-fuzzy inference system, artificial neural network-genetic algorithm hybrid and artificial neural network-particle swarm optimization) are utilized to accurately forecast short-term wind speed data for Tehran, Iran. A large set of wind speed data measured at 1-h intervals, provided by the Iran Renewable Energy Organization (SUNA), is utilized as input in algorithm development. Comparisons of statistical indices for both predicted and actual test data indicate that the artificial neural network-particle swarm optimization hybrid model with the lowest root mean square error and mean square error values outperforms other methods. Nonetheless, all of the models can be used to predict wind speed with reasonable accuracy.
机译:摘要风能正在全球范围内得到越来越多的利用,部分原因是它是可再生和环保的能源。由风能的不连续性引起的不确定性影响电网。因此,预测风的行为(例如风速)对于能源管理者和电力交易商来说很重要,以克服使用风能时不可预测的风险。预测的风能值可用于各种应用中,例如评估风能潜力,设计风电场,执行风机预测控制和风能计划。在这项研究中,利用了四种使用人工智能进行预测的方法(具有径向基函数的人工神经网络,自适应神经模糊推理系统,人工神经网络-遗传算法混合以及人工神经网络-粒子群优化)来准确预测伊朗德黑兰的长期风速数据。伊朗可再生能源组织(SUNA)提供的以1小时为间隔测量的大量风速数据被用作算法开发中的输入。预测和实际测试数据的统计指标的比较表明,具有最低均方根误差和均方差值的人工神经网络-粒子群优化混合模型优于其他方法。但是,所有模型都可以用于以合理的精度预测风速。

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