Clustering-based Demand Response for Intelligent Energy Management in 6G-enabled Smart Grids

Computer Science(2022)

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摘要
As a typical industrial Internet of things(IIOT)service,demand response(DR)is becoming a promising enabler for in-telligent energy management in 6G-enabled smart grid systems,to achieve quick response for supply-demand mismatches.How-ever,existing literatures try to adjust customers'load profiles optimally,instead of electricity overhead,energy consumption pat-terns of residential appliances,customer satisfaction levels,and energy consumption habits.In this paper,a novel DR method is in-vestigated by mixing the aforementioned factors,where the residential customer cluster is proposed to enhance the performance.Clustering approaches are leveraged to study the electricity consumption habits of various customers by extracting their features and characteristics from historical data.Based on the extracted information,the residential appliances can be scheduled effectively and flexibly.Moreover,we propose and study an efficient optimization framework to obtain the optimal scheduling solution by using clustering and deep learning methods.Extensive simulation experiments are conducted with real-world traces.Numerical re-sults show that the proposed DR method and optimization framework outperform other baseline schemes in terms of the system overhead and peak-to-average ratio(PAR).The impact of various factors on the system utility is further analyzed,which provides useful insights on improving the efficiency of the DR strategy.With the achievement of efficient and intelligent energy manage-ment,the proposed method also promotes the realization of China's carbon peaking and carbon neutrality goals.
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关键词
Demand response(DR),Customer clustering,Deep learning,6G-enabled industrial Internet of things(IIOT),Smart srid(SG)
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