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首页|Hybrid ML-RL Approach for Smart Grid Stability Prediction and Optimized Control Strategy

Hybrid ML-RL Approach for Smart Grid Stability Prediction and Optimized Control Strategy

Hybrid ML-RL Approach for Smart Grid Stability Prediction and Optimized Control Strategy

来源:Arxiv_logoArxiv
英文摘要

Electrical grids are now much more complex due to the rapid integration of distributed generation and alternative energy sources, which makes forecasting grid stability with optimized control a crucial task for operators. Traditional statistical, physics-based, and ML models can learn the pattern of the grid features, but have limitations in optimal strategy control with instability prediction. This work proposes a hybrid ML-RL framework that leverages ML for rapid stability prediction and RL for dynamic control and optimization. The first stage of this study created a baseline that explored the potential of various ML models for stability prediction. Out of them, the stacking classifiers of several fundamental models show a significant performance in classifying the instability, leading to the second stage, where reinforcement learning algorithms (PPO, A2C, and DQN) optimize power control actions. Experimental results demonstrate that the hybrid ML-RL model effectively stabilizes the grid, achieves rapid convergence, and significantly reduces training time. The integration of ML-based stability classification with RL-based dynamic control enhances decision-making efficiency while lowering computational complexity, making it well-suited for real-time smart grid applications.

Kazi Sifatul Islam、Anandi Dutta、Shivani Mruthyunjaya

输配电工程自动化技术、自动化技术设备自动化技术经济

Kazi Sifatul Islam,Anandi Dutta,Shivani Mruthyunjaya.Hybrid ML-RL Approach for Smart Grid Stability Prediction and Optimized Control Strategy[EB/OL].(2025-08-27)[2025-09-06].https://arxiv.org/abs/2508.19541.点此复制

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