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Study of hourly and daily solar irradiation forecast using diagonal recurrent wavelet neural networks

机译:基于对角递归小波神经网络的小时和每日太阳辐射预测研究

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摘要

An accurate forecast of solar irradiation is required for various solar energy applications and environmental impact analyses in recent years. Comparatively, various irradiation forecast models based on artificial neural networks (ANN) perform much better in accuracy than many conventional prediction models. However, the forecast precision of most existing ANN based forecast models has not been satisfactory to researchers and engineers so far, and the generalization capability of these networks needs further improving. Combining the prominent dynamic properties of a recurrent neural network (RNN) with the enhanced ability of a wavelet neural network (WNN) in mapping nonlinear functions, a diagonal recurrent wavelet neural network (DRWNN) is newly established in this paper to perform fine forecasting of hourly and daily global solar irradiance. Some additional steps, e.g. applying historical information of cloud cover to sample data sets and the cloud cover from the weather forecast to network input, are adopted to help enhance the forecast precision. Besides, a specially scheduled two phase training algorithm is adopted. As examples, both hourly and daily irradiance forecasts are completed using sample data sets in Shanghai and Macau, and comparisons between irradiation models show that the DRWNN models are definitely more accurate.
机译:近年来,各种太阳能应用和环境影响分析都需要准确预测太阳辐射。相比之下,基于人工神经网络(ANN)的各种辐射预测模型的准确性要比许多常规预测模型好得多。但是,到目前为止,大多数现有的基于ANN的预测模型的预测精度仍未令研究人员和工程师满意,并且这些网络的泛化能力需要进一步提高。结合递归神经网络(RNN)的突出动态特性与小波神经网络(WNN)增强的非线性函数映射能力,本文新建立了对角递归小波神经网络(DRWNN),以对每小时和每天的全球太阳辐照度。一些其他步骤,例如将云量的历史信息应用于样本数据集,并采用从天气预报到网络输入的云量,以提高预报的准确性。此外,采用了专门安排的两阶段训练算法。例如,使用上海和澳门的样本数据集来完成小时和每日辐照度预测,并且辐照模型之间的比较表明,DRWNN模型绝对更准确。

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