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An extended new approach for forecasting short-term wind power using modified fuzzy wavelet neural network: A case study in wind power plant

机译:使用改进的模糊小波神经网络预测短期风电报的扩展新方法 - 以风电厂为例

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Nowadays, there has been more attention paid to clean energies, especially wind, since there is a shortage of fossil fuel resources, but there is a decrease in pollutants that result from such sources. Such energies play a significant role in generating power. The non-linear nature of wind speed poses challenges and difficulty in exploiting its power. As a result, an accurate and efficient prediction of wind power will serve as a crucial means for solving the system & rsquo;s planning and operational issues. This article aims to predict a wind power plant & rsquo;s power output using weather and power plant parameters and employ an extended fuzzy wavelet neural network (FWNN). In the extended method, any fuzzy set rule uses different fuzzy wavelet functions to convert input space into a subspace. A uniform hybrid learning algorithm was used in the extended FWNN method to obtain an optimal proportion of parameters. The method was an optimal combination of the Particle Swarm Optimization (PSO) and Gradient Descent algorithms. The use of optimized PSO is slightly different from the basic PSO in that in this method, two layers of PSO are used within each other. Not only it has high convergence but also higher coordination and adaptability with the gradient descent algorithm. This method was used for the Manjil wind power plant in Iran, with real data being recorded every 10 min. The extended FWNN method was also compared with the conventional prediction methods. The results showed that compared to other methods reported earlier, the proposed method was a more efficient tool and had higher precision for short-term wind power forecasting.(c) 2021 Elsevier Ltd. All rights reserved.
机译:如今,有更多的关注来清洁能量,尤其是风,因为化石燃料资源短缺,但是由于这种来源导致污染物减少。这种能量在发电中发挥着重要作用。风速的非线性性质构成挑战,难以利用其力量。结果,对风力的准确和有效的预测将作为解决系统和rsquo的一个重要手段。本文旨在使用天气和发电厂参数预测风力电厂和RSQUO的功率输出,并采用扩展模糊小波神经网络(FWNN)。在扩展方法中,任何模糊集规则都使用不同的模糊小波函数将输入空间转换为子空间。在扩展的FWNN方法中使用统一的混合学习算法以获得最佳参数比例。该方法是粒子群优化(PSO)和梯度下降算法的最佳组合。使用优化的PSO与基本PSO略有不同,因为在这种方法中,彼此相互使用两层PSO。不仅具有高收敛性,而且对梯度下降算法的协调和适应性也很高。该方法用于伊朗的Manjil风电厂,每10分钟记录真实数据。与传统预测方法相比,延伸的FWNN方法也被比较。结果表明,与早期报道的其他方法相比,该方法是一种更有效的工具,对短期风力预测具有更高的精度。(c)2021 elestvier有限公司保留所有权利。

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