PowerNet:基于神经网络的智能能源预测架构

IF 2.1 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Yao Cheng, Chang Xu, Daisuke Mashima, Partha P. Biswas, Geetanjali Chipurupalli, Bin Zhou, Yongdong Wu
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引用次数: 4

摘要

电力需求预测是实现电网高效、可靠、经济运行的关键任务,是智慧城市建设的重要组成部分之一。准确的预测使电网运营商能够适当地保持供需平衡,并优化发电和输电的运营成本。本文提出了一种新的神经网络体系结构PowerNet,它可以将历史能耗数据、天气数据和日历信息等多种异构特征融合到需求预测任务中。使用真实世界的智能电表数据集,我们进行了广泛的评估,以显示PowerNet相对于最近提出的机器学习方法(如梯度增强树(GBT),支持向量回归(SVR),随机森林(RF)和门控循环单元(GRU))的优势。PowerNet在预测单个居民家庭需求时,在减少中位数和最坏情况预测误差方面表现出显著的性能。我们进一步提供了关于在实践中使用PowerNet时至关重要的两个操作考虑因素的经验结果:模型可以以适当的精度预测的时间范围和训练模型以保持其建模能力的频率。最后,简要讨论了一种基于电力网需求预测的多层异常/窃电检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

PowerNet: a smart energy forecasting architecture based on neural networks

PowerNet: a smart energy forecasting architecture based on neural networks

Electricity demand forecasting is a critical task for efficient, reliable and economical operation of the power grid, which is one of the most essential building blocks of smart cities. Accurate forecasting allows grid operators to properly maintain the balance of supply and demand as well as to optimize operational cost for generation and transmission. This article proposes a novel neural network architecture PowerNet which can incorporate multiple heterogeneous features such as historical energy consumption data, weather data and calendar information for the demand forecasting task. Using real-world smart meter dataset, we conduct an extensive evaluation to show the advantages of PowerNet over recently-proposed machine learning methods such as Gradient Boosting Tree (GBT), Support Vector Regression (SVR), Random Forest (RF) and Gated Recurrent Unit (GRU). PowerNet demonstrates notable performance in reducing both the median and worst-case prediction errors when forecasting demands of individual residential households. We further provide empirical results concerning the two operational considerations that are crucial when using PowerNet in practice: the time horizon the model can predict with a decent accuracy and the frequency of training the model to retain its modeling capability. Finally, we briefly discuss a multi-layer anomaly/electricity-theft detection approach based on PowerNet demand forecasting.

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来源期刊
IET Smart Cities
IET Smart Cities Social Sciences-Urban Studies
CiteScore
7.70
自引率
3.20%
发文量
25
审稿时长
21 weeks
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