4.6 Article

Real Time Demand Response Modeling for Residential Consumers in Smart Grid Considering Renewable Energy With Deep Learning Approach

期刊

IEEE ACCESS
卷 9, 期 -, 页码 56551-56562

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3071993

关键词

Pricing; Optimal scheduling; Smart grids; Renewable energy sources; Load management; Reinforcement learning; Privacy; Demand response; best strategy; robust adversarial reinforcement learning; renewable energy

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Demand response modelling plays a crucial role in smart grid by analyzing appliance scheduling and pricing strategies to determine optimal solutions for users. This research is conducted in three steps, including developing strategy patterns, learning user behavior, and creating optimal strategy plans for privacy maintenance. The study uses mathematical modelling and real-time data to validate the effectiveness of the proposed work in achieving optimal demand response strategies while ensuring user privacy.
Demand response modelling have paved an important role in smart grid at a greater perspective. DR analysis exhibits the analysis of scheduling of appliances for an optimal strategy at the user's side with an effective pricing scheme. In this proposed work, the entire model is done in three different steps. The first step develops strategy patterns for the users considering integration of renewable energy and effective demand response analysis is done. The second step in the process exhibits the learning process of the consumers using Robust Adversarial Reinforcement Learning for privacy process among the users. The third step develops optimal strategy plan for the users for maintaining privacy among the users. Considering the uncertainties of the user's behavioral patterns, typical pricing schemes are involved with integration of renewable energy at the user' side so that an optimal strategy is obtained. The optimal strategy for scheduling the appliances solving privacy issues and considering renewable energy at user' side is done using Robust Adversarial Reinforcement learning and Gradient Based Nikaido-Isoda Function which gives an optimal accuracy. The results of the proposed work exhibit optimal strategy plan for the users developing proper learning paradigm. The effectiveness of the proposed work with mathematical modelling are validated using real time data and shows the demand response strategy plan with proper learning access model. The results obtained among the set of strategy develops 80 % of the patterns created with the learning paradigm moves with optimal DR scheduling patterns. This work embarks the best learning DR pattern created for the future set of consumers following the strategy so privacy among the users can be maintained effectively.

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