Accurate load forecasting is critical for electricity market operations and other real-time decision-making tasks in power systems. This paper considers the short-term load forecasting (STLF) problem for residential customers within a community. Existing STLF work mainly focuses on forecasting the aggregated load for either a feeder system or a single customer, but few efforts have been made on forecasting the load at individual appliance level. In this work, we present an STLF algorithm for efficiently predicting the power consumption of individual electrical appliances. The proposed method builds upon a powerful recurrent neural network (RNN) architecture in deep learning, termed as long short-term memory (LSTM). As each appliance has uniquely repetitive consumption patterns, the patterns of prediction error will be tracked such that past prediction errors can be used for improving the final prediction performance. Numerical tests on real-world load datasets demonstrate the improvement of the proposed method over existing LSTM-based method and other benchmark approaches.
翻译:准确的负载预测对于电力市场运作和电力系统的其他实时决策任务至关重要。本文件审议了社区内居民客户的短期负载预测问题。现有的工地预测工作主要侧重于预测支线系统或单一客户的总负载,但在个人设备层面的负载预测方面没有作出多少努力。在这项工作中,我们提出了一个STLF算法,以有效预测个别电器的电力消耗量。拟议方法建立在称为长期内存(LSTM)的深层学习中强大的经常性神经网络架构之上。由于每种应用程序都有独特的重复性消费模式,预测错误的格局将跟踪,以便利用过去的预测错误来改进最后预测性能。对现实世界负载数据集的数值测试表明,拟议的方法比现有的LSTM方法和其他基准方法有所改进。