Leveraging Hypernetworks and Learnable Kernels for Consumer Energy Forecasting Across Diverse Consumer Types

IF 3.7 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Power Delivery Pub Date : 2024-10-24 DOI:10.1109/TPWRD.2024.3486010
Muhammad Umair Danish;Katarina Grolinger
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Abstract

Consumer energy forecasting is essential for managing energy consumption and planning, directly influencing operational efficiency, cost reduction, personalized energy management, and sustainability efforts. In recent years, deep learning techniques, especially LSTMs and transformers, have been greatly successful in the field of energy consumption forecasting. Nevertheless, these techniques have difficulties in capturing complex and sudden variations, and, moreover, they are commonly examined only on a specific type of consumer (e.g., only offices, only schools). Consequently, this paper proposes HyperEnergy, a consumer energy forecasting strategy that leverages hypernetworks for improved modeling of complex patterns applicable across a diversity of consumers. Hypernetwork is responsible for predicting the parameters of the primary prediction network, in our case LSTM. A learnable adaptable kernel, comprised of polynomial and radial basis function kernels, is incorporated to enhance performance. The proposed HyperEnergy was evaluated on diverse consumers including, student residences, detached homes, a home with electric vehicle charging, and a townhouse. Across all consumer types, HyperEnergy consistently outperformed 10 other techniques, including state-of-the-art models such as LSTM, AttentionLSTM, and transformer.
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利用超网络和可学习内核对不同消费类型的消费者进行能源预测
消费者能源预测对于管理能源消耗和规划至关重要,它直接影响运营效率、成本降低、个性化能源管理和可持续性努力。近年来,深度学习技术,特别是lstm和变压器,在能源消耗预测领域取得了巨大的成功。然而,这些技术在捕捉复杂和突然的变化方面有困难,而且,它们通常只针对特定类型的消费者(例如,只针对办公室,只针对学校)进行检查。因此,本文提出了HyperEnergy,这是一种消费者能源预测策略,它利用超网络来改进适用于各种消费者的复杂模式的建模。超网络负责预测主预测网络的参数,在我们的例子中是LSTM。采用多项式和径向基函数核组成的可学习自适应核来提高性能。提议的HyperEnergy在不同的消费者中进行了评估,包括学生公寓、独立住宅、带电动汽车充电的住宅和联排别墅。在所有用户类型中,HyperEnergy的表现始终优于其他10种技术,包括LSTM、AttentionLSTM和transformer等最先进的模型。
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来源期刊
IEEE Transactions on Power Delivery
IEEE Transactions on Power Delivery 工程技术-工程:电子与电气
CiteScore
9.00
自引率
13.60%
发文量
513
审稿时长
6 months
期刊介绍: The scope of the Society embraces planning, research, development, design, application, construction, installation and operation of apparatus, equipment, structures, materials and systems for the safe, reliable and economic generation, transmission, distribution, conversion, measurement and control of electric energy. It includes the developing of engineering standards, the providing of information and instruction to the public and to legislators, as well as technical scientific, literary, educational and other activities that contribute to the electric power discipline or utilize the techniques or products within this discipline.
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