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Hybrid wind speed prediction model based on recurrent long short-term memory neural network and support vector machine models

机译:基于经常性长短期记忆神经网络的混合风速预测模型及支持向量机模型

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摘要

Renewable energy has gained its significance in the recent years due to the increasing power demand and the requirement in various distribution and utilization sectors. To meet the energy demand, renewable energy resources which include wind and solar have attained significant attractiveness and remarkable expansions are carried out all over the world to enhance the power generation using wind and solar energy. This research paper focuses on predicting the wind speed so that it results in forecasting the possible wind power that can be generated from the wind resources which facilitates to meet the growing energy demand. In this work, a recurrent neural network model called as long short-term memory network model and variants of support vector machine models are used to predict the wind speed for the considered locations where the windmill has been installed. Both these models are tuned for the weight parameters and kernel variational parameters using the proposed hybrid particle swarm optimization algorithm and ant lion optimization algorithm. Experimental simulation results attained prove the validity of the proposed work compared with the methods developed in the early literature.
机译:由于越来越多的电力需求和各种分配和利用部门的要求,可再生能源在近年来取得了重要意义。为满足能源需求,包括风和太阳能的可再生能源已经取得了显着的吸引力,并在世界各地进行了显着的扩展,以加强使用风和太阳能的发电。本研究文件侧重于预测风速,以便它导致预测可能从风力资源产生的可能风力,这有利于满足不断增长的能源需求。在这项工作中,使用称为长期短期存储器网络模型和支持向量机模型的变型的经常性神经网络模型用于预测安装风车已安装的所考虑的位置的风速。使用所提出的混合粒子群优化算法和蚂蚁优化算法,两种这些模型都针对权重参数和核变异参数进行了调整。与早期文献中发展的方法相比,实验模拟结果证明了拟议的工作的有效性。

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