Abstract
AbstractWith the development of Non-Intrusive Load Monitoring (NILM), it has become feasible to perform device identification, energy consumption decomposition, and load switching detection using Deep Learning (DL) methods. Similar to other machine learning problems, the research and validation of NILM necessitate substantial data support. Moreover, different regions exhibit distinct characteristics in their electricity environments. Therefore, there is a need to provide open datasets tailored to different regions. In this paper, we introduce the Transient Dataset of Household Appliances with Intensive Switching Events (TDHA25). This dataset comprises switch instantaneous data from 10 typical household appliances in China. The TDHA dataset features a high sampling rate, accurate labelling, and realistic representation of actual appliance start-up waveforms. Additionally, appliance switching is achieved through precise control of relay switches, thus mitigating interference caused by mechanical switches. By furnishing such a dataset, we aim not only to enhance the recognition accuracy of existing NILM algorithms but also to facilitate the application of NILM algorithms in regions sharing similar electricity consumption characteristics to those of China.
Funder
National Natural Science Foundation of China
Publisher
Springer Science and Business Media LLC
Reference31 articles.
1. Himeur, Y., Alsalemi, A., Al-Kababji, A., Bensaali, F. & Amira, A. Data fusion strategies for energy efficiency in buildings: Overview, challenges and novel orientations. Information Fusion 64, 99–120 (2020).
2. Ramadan, R., Huang, Q., Bamisile, O. & Zalhaf, A. S. Intelligent home energy management using Internet of Things platform based on NILM technique. Sustainable. Energy, Grids and Networks 31, 100785 (2022).
3. Klemenjak, Christoph and Peter Goldsborough. Non-intrusive load monitoring: A review and outlook. GI-Jahrestagung, (2016).
4. Lee, D. & Cheng, C. C. Energy savings by energy management systems: A review. Renewable and Sustainable Energy Reviews 56, 760–777 (2016).
5. Kaneda, D., Jacobson, B., Rumsey, P., & Engineers, R. Plug load reduction: The next big hurdle for net zero energy building design. In ACEEE Summer Study on Energy Efficiency in Buildings (pp. 120-130) (2010, August).