2023
DOI: 10.3390/en16041655
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Privacy-Based Demand Response Modeling for Residential Consumers Using Machine Learning with a Cloud–Fog-Based Smart Grid Environment

Abstract: Demand response modeling in smart grids plays a significant role in analyzing and shaping the load profiles of consumers. This approach is used in order to increase the efficiency of the system and improve the performance of energy management. The use of demand response analysis in determining the load profile enhances the scheduling approach to the user profiles in the residential sector. In accordance with the behavioral pattern of the user’s profile, incentive-based demand response programs can be initiated… Show more

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Cited by 7 publications
(1 citation statement)
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“…This scheme, achieved through a partially observable Markov decision process and deep RL with a credit assignment mechanism, shows enhanced efficiency, cost-effectiveness, and user experience. A twostep real-time DR model has been developed [101], utilizing a cloud-fog-based system, a generative adversarial network with a Q-learning model, and cloud computing, focusing on privacy protection. The first step involves scheduling and an incentive scheme based on a discounted stochastic game, while the second step addresses privacy concerns from the strategy analysis of the DR model.…”
Section: Ml-based Dsmsmentioning
confidence: 99%
“…This scheme, achieved through a partially observable Markov decision process and deep RL with a credit assignment mechanism, shows enhanced efficiency, cost-effectiveness, and user experience. A twostep real-time DR model has been developed [101], utilizing a cloud-fog-based system, a generative adversarial network with a Q-learning model, and cloud computing, focusing on privacy protection. The first step involves scheduling and an incentive scheme based on a discounted stochastic game, while the second step addresses privacy concerns from the strategy analysis of the DR model.…”
Section: Ml-based Dsmsmentioning
confidence: 99%