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Effective prediction model for Hungarian small-scale solar power output

机译:匈牙利小规模太阳能发电量的有效预测模型

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摘要

Owing to critical role of photovoltaic (PV) power in oncoming energy market, an accurate PV power forecasting model is demanded. In this paper, an effective solar power prediction model composed of variational mode decomposition, information-theoretic feature selection, and forecasting engine with high learning capability is proposed. The feature selection method is based on information-theoretic criteria and an optimisation algorithm. The forecasting engine is multilayer perceptron neural network equipped with modified Levenberg-Marquardt learning algorithm. An evolutionary algorithm is also incorporated into the training mechanism of the forecasting engine to enhance its learning capability. Effectiveness of the proposed PV prediction model is illustrated on a Hungarian solar power plant.
机译:由于光伏(PV)功率在即将到来的能源市场中的关键作用,因此需要一个准确的PV功率预测模型。本文提出了一种由变分模式分解,信息理论特征选择和具有较高学习能力的预测引擎组成的有效太阳能发电预测模型。特征选择方法基于信息理论标准和优化算法。预测引擎是配备了改进的Levenberg-Marquardt学习算法的多层感知器神经网络。进化算法也被并入预测引擎的训练机制中以增强其学习能力。匈牙利太阳能发电厂说明了所提出的PV预测模型的有效性。

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