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Short-Term Load Forecasting Using Broad Learning System

机译:使用广泛学习系统的短期负荷预测

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Short-term load forecasting (STLF) is of great value in power system operation. This paper proposes an STLF method based on the broad learning system (BLS). First, factors that have major impacts on load demands are selected as input variables of STLF. Then, the construction of BLS is discussed. The original input is mapped into feature nodes using the sparse autoencoder, and the network expands in width through the enhancement nodes which are generated from the mapped features. Both the feature and enhancement nodes are directly connected to the output layer. Such a flat structure is exploited to implement incremental learning, which updates BLS dynamically without retraining. Finally, the proposed model is tested on the ISO New England dataset. Test results indicate that BLS is accurate and efficient compared with the existing machine learning techniques. Moreover, the incremental learning capability improves the efficiency of the update of STLF models remarkably.
机译:短期负荷预测(STLF)在电力系统运行中具有重要价值。本文提出了一种基于广义学习系统(BLS)的STLF方法。首先,选择对负荷需求有重大影响的因素作为STLF的输入变量。然后,讨论了BLS的构建。原始输入使用稀疏自动编码器映射到特征节点,并且网络通过从映射的特征生成的增强节点扩展宽度。特征和增强节点都直接连接到输出层。利用这种平面结构来实现增量学习,该学习无需重新训练即可动态更新BLS。最后,在ISO新英格兰数据集上测试了提出的模型。测试结果表明,与现有的机器学习技术相比,BLS是准确且高效的。此外,增量学习能力显着提高了STLF模型的更新效率。

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