Electricity load forecasting enables the grid operators to optimally implement the smart grid's most essential features such as demand response and energy efficiency. Electricity demand profiles can vary drastically from one region to another on diurnal, seasonal and yearly scale. Hence to devise a load forecasting technique that can yield the best estimates on diverse datasets, specially when the training data is limited, is a big challenge. This paper presents a deep learning architecture for short-term load forecasting based on bidirectional sequential models in conjunction with feature engineering that extracts the hand-crafted derived features in order to aid the model for better learning and predictions. In the proposed architecture, named as Deep Derived Feature Fusion (DeepDeFF), the raw input and hand-crafted features are trained at separate levels and then their respective outputs are combined to make the final prediction. The efficacy of the proposed methodology is evaluated on datasets from five countries with completely different patterns. The results demonstrate that the proposed technique is superior to the existing state of the art.
翻译:电网载荷预测使电网操作员能够最佳地实施智能电网的最基本特征,如需求反应和能源效率。电力需求剖面在地缘、季节和年度规模上可以有很大差异。因此,设计一个能够对各种数据集作出最佳估计的负载预测技术,特别是在培训数据有限的情况下,是一项巨大的挑战。本文件提供了一个基于双向相继模型的短期负载预报的深层次学习结构,该模型将提取手工制作的衍生特征,以帮助改进学习和预测模型。在拟议的结构中,称为深层地貌变异(DeepDeff),原始输入和手工制作的特征在不同的层次上接受培训,然后将各自的产出合并以作出最后预测。拟议方法的功效在五个完全不同模式的国家的数据集上进行评估。结果显示,拟议的技术优于艺术的现状。