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Prediction of Solar Radiation Using Data Clustering and Time-Delay Neural Network

Prediction of Solar Radiation Using Data Clustering and Time-Delay Neural Network
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摘要 In this paper, a combination of data clustering and artificial intelligence techniques are used to predict incoming solar radiation on a daily basis. The data clustering technique known as Perceptually Important Points is proposed, where time-series data is grouped into clusters separated by key characteristic points, which are later used as training data for an artificial neural network. The type of network used is known as a Focused Time-Delay Neural Network, and an analysis of the data is performed using the Mean Absolute Percentage Error scheme. In this paper, a combination of data clustering and artificial intelligence techniques are used to predict incoming solar radiation on a daily basis. The data clustering technique known as Perceptually Important Points is proposed, where time-series data is grouped into clusters separated by key characteristic points, which are later used as training data for an artificial neural network. The type of network used is known as a Focused Time-Delay Neural Network, and an analysis of the data is performed using the Mean Absolute Percentage Error scheme.
出处 《Journal of Computer and Communications》 2018年第12期91-97,共7页 电脑和通信(英文)
关键词 PREDICTION CLUSTERING NEURAL NETWORKS Artificial INTELLIGENCE Prediction Clustering Neural Networks Artificial Intelligence

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