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Short-term nodal load forecasting based on machine learning techniques

机译:基于机器学习技术的短期节点负荷预测

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摘要

This paper introduces an advanced Short-term Nodal Load Forecasting (STNLF) method that forecasts nodal load profiles for the next day in power systems, based on the combined use of three machine learning techniques. Least Absolute Shrinkage and Selection Operator (LASSO) is employed to reduce the number of features for a single nodal load forecasting. Principal Component Analysis (PCA) is used to capture the features of historical loads in low-dimensional space compared to the original high-dimensional load space where features are barely possible to depict. Bayesian Ridge Regression (BRR) is utilized to decide the parameters of the prediction model from a statistics perspective. Tests based on modified PJM load data demonstrate the effectiveness of the proposed STNLF method compared to the state-of-the-art General Regression Neural Network (GRNN) method. Moreover, the reliability of the day-ahead Unit Commitment (UC) solution is shown to have been improved, based on the forecasted load data using the proposed STNLF method.
机译:本文介绍了一种先进的短期节点负荷预测(STNLF)方法,其预测电力系统第二天的节点负载型材,基于三种机器学习技术的结合使用。采用最小绝对收缩和选择操作员(套索)来减少单个节点负荷预测的特征数量。与原始高尺寸负载空间相比,主要成分分析(PCA)用于捕获低维空间中的历史载荷的特征,其中特征几乎可以描绘。贝叶斯脊回归(BRR)用于从统计视角来决定预测模型的参数。基于修改的PJM负载数据的测试证明了所提出的STNLF方法的有效性与最先进的一般回归神经网络(GRNN)方法相比。此外,基于使用所提出的STNLF方法的预测负载数据,示出了前方前部承诺(UC)解决方案的可靠性。

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