论文标题
使用广义添加剂模型和深神经网络进行高分辨率峰值需求估算
High-Resolution Peak Demand Estimation Using Generalized Additive Models and Deep Neural Networks
论文作者
论文摘要
本文涵盖了预测给定较低分辨率数据的高分辨率电峰值需求特征。这是一个相关的设置,因为它可以回答有限的高分辨率监控是否有助于估计当不再可用的高分辨率数据时,未来的高分辨率峰值负载。对于由于经济考虑而替换高分辨率监测预测模型的网络运营商,这个问题特别有趣。我们建议模型,以预测高分辨率(每分钟)电力数据的半小时最小值和最大值,而模型输入的分辨率较低(30分钟)。我们结合了广义添加剂模型(GAM)和深人造神经网络(DNN)的预测,这些模型在负载预测中很受欢迎。我们广泛分析了预测模型,包括输入参数的重要性,重点是负载,天气和季节性效果。拟议的方法赢得了由英国分销网络运营商Western Power Distribution组织的数据竞赛。此外,我们提供了一项严格的评估研究,该研究超出了竞争框架,可以分析模型的鲁棒性。结果表明,所提出的方法优于竞争基准,即针对样本外均方根误差(RMSE)。这是关于竞争月和补充评估研究的,该研究涵盖了另外11个月。总体而言,与基准相比,我们提出的模型组合将样本外RMSE降低了57.4 \%。
This paper covers predicting high-resolution electricity peak demand features given lower-resolution data. This is a relevant setup as it answers whether limited higher-resolution monitoring helps to estimate future high-resolution peak loads when the high-resolution data is no longer available. That question is particularly interesting for network operators considering replacing high-resolution monitoring predictive models due to economic considerations. We propose models to predict half-hourly minima and maxima of high-resolution (every minute) electricity load data while model inputs are of a lower resolution (30 minutes). We combine predictions of generalized additive models (GAM) and deep artificial neural networks (DNN), which are popular in load forecasting. We extensively analyze the prediction models, including the input parameters' importance, focusing on load, weather, and seasonal effects. The proposed method won a data competition organized by Western Power Distribution, a British distribution network operator. In addition, we provide a rigorous evaluation study that goes beyond the competition frame to analyze the models' robustness. The results show that the proposed methods are superior to the competition benchmark concerning the out-of-sample root mean squared error (RMSE). This holds regarding the competition month and the supplementary evaluation study, which covers an additional eleven months. Overall, our proposed model combination reduces the out-of-sample RMSE by 57.4\% compared to the benchmark.