Chan Kit Yan, Yiu Ka Fai Cedric, Kim Dowon, Abu-Siada Ahmed
School of Electrical Engineering, Computing and Mathematics Sciences, Curtin University, Bentley, WA 6102, Australia.
Department of Applied Mathematics, The Hong Kong Polytechnic University, Hong Kong.
Sensors (Basel). 2024 Feb 21;24(5):1391. doi: 10.3390/s24051391.
Accurate short-term load forecasting (STLF) is essential for power grid systems to ensure reliability, security and cost efficiency. Thanks to advanced smart sensor technologies, time-series data related to power load can be captured for STLF. Recent research shows that deep neural networks (DNNs) are capable of achieving accurate STLP since they are effective in predicting nonlinear and complicated time-series data. To perform STLP, existing DNNs use time-varying dynamics of either past load consumption or past power correlated features such as weather, meteorology or date. However, the existing DNN approaches do not use the time-invariant features of users, such as building spaces, ages, isolation material, number of building floors or building purposes, to enhance STLF. In fact, those time-invariant features are correlated to user load consumption. Integrating time-invariant features enhances STLF. In this paper, a fuzzy clustering-based DNN is proposed by using both time-varying and time-invariant features to perform STLF. The fuzzy clustering first groups users with similar time-invariant behaviours. DNN models are then developed using past time-varying features. Since the time-invariant features have already been learned by the fuzzy clustering, the DNN model does not need to learn the time-invariant features; therefore, a simpler DNN model can be generated. In addition, the DNN model only learns the time-varying features of users in the same cluster; a more effective learning can be performed by the DNN and more accurate predictions can be achieved. The performance of the proposed fuzzy clustering-based DNN is evaluated by performing STLF, where both time-varying features and time-invariant features are included. Experimental results show that the proposed fuzzy clustering-based DNN outperforms the commonly used long short-term memory networks and convolution neural networks.
准确的短期负荷预测(STLF)对于电网系统确保可靠性、安全性和成本效益至关重要。得益于先进的智能传感器技术,可以获取与电力负荷相关的时间序列数据用于短期负荷预测。最近的研究表明,深度神经网络(DNN)能够实现准确的短期负荷预测,因为它们在预测非线性和复杂的时间序列数据方面很有效。为了进行短期负荷预测,现有的深度神经网络使用过去负荷消耗的时变动态或过去与电力相关的特征,如天气、气象或日期。然而,现有的深度神经网络方法没有利用用户的时不变特征,如建筑空间、年龄、隔离材料、建筑层数或建筑用途,来增强短期负荷预测。事实上,这些时不变特征与用户负荷消耗相关。整合时不变特征可增强短期负荷预测。本文提出了一种基于模糊聚类的深度神经网络,通过使用时变和时不变特征来进行短期负荷预测。模糊聚类首先将具有相似时不变行为的用户分组。然后使用过去的时变特征开发深度神经网络模型。由于模糊聚类已经学习了时不变特征,深度神经网络模型不需要学习时不变特征;因此,可以生成更简单的深度神经网络模型。此外,深度神经网络模型只学习同一聚类中用户的时变特征;深度神经网络可以进行更有效的学习,并实现更准确地预测。通过进行包含时变特征和时不变特征的短期负荷预测,对所提出基于模糊聚类的深度神经网络的性能进行评估。实验结果表明,所提出的基于模糊聚类的深度神经网络优于常用的长短期记忆网络和卷积神经网络。