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DeepGrid: Robust Deep Reinforcement Learning-based Contingency Management

机译:DeepGrid:强大的基于深度强化学习的应急管理

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Increasing uncertainty raised by the integration of renewable energy resources requires an enormous number of simulations to be carried out for the security assessment of the power grid. However, it is challenging to assess the steady-state and dynamic security indices for different system contingency events by doing an exhaustive analysis in real-time due to the computational and communication constraints. One promising solution is using data-driven techniques along with the system models to train an intelligent contingency management framework to better handle the contingencies in real-time. Nevertheless, implementing a data-driven technique to obtain the best remedial actions necessitates to account for the effect of the measurement noise on the performance of the contingency management. To tackle these challenges, we leverage a robust deep reinforcement learning (DRL) algorithm called Double Deep Q-Network (DDQN) to design a recommender system capable of prescribing optimal control actions with the help of the real-time digital simulator (RTDS). The use of RTDS system in combination with the advanced DRL algorithm allows to explore a wide variety of system contingencies in order to derive better remedial actions. The performance of the proposed algorithm is evaluated in IEEE 9-bus system under different loading conditions, and different network configurations in presence of noisy measurements.
机译:由可再生能源整合带来的不确定性不断增加,需要进行大量的仿真以评估电网的安全性。但是,由于计算和通信方面的限制,通过实时进行详尽的分析来评估不同系统突发事件的稳态和动态安全性指标具有挑战性。一种有前途的解决方案是使用数据驱动技术以及系统模型来训练智能应变管理框架,以更好地实时处理突发事件。然而,实施数据驱动技术以获得最佳补救措施必须考虑到测量噪声对应急管理性能的影响。为了解决这些挑战,我们利用一种强大的深度强化学习(DRL)算法(称为Double Deep Q-Network(DDQN))来设计推荐系统,该系统能够借助实时数字模拟器(RTDS)规定最佳控制措施。将RTDS系统与高级DRL算法结合使用,可以探索各种系统突发事件,以得出更好的补救措施。在存在噪声测量的情况下,在不同的负载条件和不同的网络配置下,在IEEE 9总线系统中评估了所提出算法的性能。

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