深信不疑网络
元启发式
风力发电
计算机科学
加权
数学优化
算法
人工神经网络
人工智能
数学
工程类
医学
电气工程
放射科
作者
Hongyan Wang,Bin Chen,Peng Dong,Zheng-Ang Lv,Shu-Qin Huang,Majid Khayatnezhad,Giorgos Jimenez
标识
DOI:10.1016/j.seta.2022.102744
摘要
According to the increase of energy consumption, wind energy penetration in power generation systems, the wind energy uncertainty and also, due to complex and nonlinear relationships of climatic parameters such as wind speed, wind direction, temperature providing a model to the more accurate forecast of energy production is essential. In this study, an optimal Deep Belief Network (DBN) model has been represented to accurately predict wind energy. The DBN network model is optimized by Modified Coot Optimization Algorithm (MCOA). This procedure uses self-adaptive weighting technique and turbulent technique to prevent trapped local optimization. These two techniques solve the optimization problem, so that it will have a more accurate prediction than the original Coot Optimization Algorithm(COA). The analysis of the modified COA metaheuristic model shows the MCOA model has a minimum of a standard deviation compared to other metaheuristic algorithms. Therefore, the MCOA metaheuristic algorithm has maximum precision and maximum reliability. Also, the simulation of wind energy generation showed, the optimal DBN technique has the best simulation compared to other models. because this model utilizes two techniques self-adaptive weight and chaotic method to refine the weakness optimization process.
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