光伏系统
计算机科学
皮尔逊积矩相关系数
算法
卷积神经网络
聚类分析
人工神经网络
人工智能
数据挖掘
工程类
数学
统计
电气工程
摘要
To enhance the grid connection reliability of distributed photovoltaic power plants, a hybrid prediction model integrating a convolutional neural network and short-term memory is proposed. Spatial features are extracted via CNN, while LSTM captures temporal dependencies in power generation data. Initially, leveraging clustering and partitioning of weather data, the Pearson correlation coefficient method is employed to analyze correlations between meteorological factors (e.g., solar radiation, temperature, relative humidity) and photovoltaic power generation. Subsequently, the Sparrow Search Algorithm is applied to optimize the prediction model. Experimental findings using photovoltaic power generation data in Dingbian County reveal that the Sparrow Optimization Algorithm significantly enhances prediction accuracy and improves the scheduling stability of distributed photovoltaic power stations.
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