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Short-Term Power Generation Energy Forecasting Model for Small Hydropower Stations Using GA-SVM

机译:使用GA-SVM的小水电站短期发电能量预测模型

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Accurate and reliable power generation energy forecasting of small hydropower (SHP) is essential for hydropower management and scheduling. Due to nonperson supervision for a long time, there are not enough historical power generation records, so the forecasting model is difficult to be developed. In this paper, the support vector machine (SVM) is chosen as a method for short-term power generation energy prediction because it shows many unique advantages in solving small sample, nonlinear, and high dimensional pattern recognition. In order to identify appropriate parameters of the SVM prediction model, the genetic algorithm (GA) is performed. The GA-SVM prediction model is tested using the short-term observations of power generation energy in the Yunlong County and Maguan County in Yunnan province. Through the comparison of its performance with those of the ARMA model, it is demonstrated that GA-SVM model is a very potential candidate for the prediction of short-term power generation energy of SHP.
机译:小水电(SHP)的准确可靠的发电能量预测对于水电管理和调度至关重要。由于长期监督长期以来,没有足够的历史发电记录,因此难以开发预测模型。在本文中,选择支持向量机(SVM)作为短期发电能量预测的方法,因为它在求解小样本,非线性和高尺​​寸图案识别方面表现出许多独特的优点。为了识别SVM预测模型的适当参数,执行遗传算法(GA)。使用云南省云龙县和磁悬园县的发电能源短期观测来测试GA-SVM预测模型。通过对ARMA模型的性能的比较,证明GA-SVM模型是对SHP的短期发电能量预测的非常潜在的候选者。

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