LGFeb 18

Capacity-constrained demand response in smart grids using deep reinforcement learning

arXiv:2602.16525v1h-index: 1
Originality Incremental advance
AI Analysis

This addresses grid congestion for residential smart grids, but it is incremental as it applies deep reinforcement learning to a known bottleneck in demand response.

This paper tackled the problem of maintaining electricity grid capacity limits in residential smart grids by developing a capacity-constrained incentive-based demand response approach, resulting in an approximately 22.82% reduction in the peak-to-average ratio compared to no demand response.

This paper presents a capacity-constrained incentive-based demand response approach for residential smart grids. It aims to maintain electricity grid capacity limits and prevent congestion by financially incentivising end users to reduce or shift their energy consumption. The proposed framework adopts a hierarchical architecture in which a service provider adjusts hourly incentive rates based on wholesale electricity prices and aggregated residential load. The financial interests of both the service provider and end users are explicitly considered. A deep reinforcement learning approach is employed to learn optimal real-time incentive rates under explicit capacity constraints. Heterogeneous user preferences are modelled through appliance-level home energy management systems and dissatisfaction costs. Using real-world residential electricity consumption and price data from three households, simulation results show that the proposed approach effectively reduces peak demand and smooths the aggregated load profile. This leads to an approximately 22.82% reduction in the peak-to-average ratio compared to the no-demand-response case.

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