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Fast Online Reinforcement Learning Control Using State-Space Dimensionality Reduction

机译:使用状态空间维度减少的快速在线强化学习控制

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摘要

In this article, we propose a fast reinforcement learning (RL) control algorithm that enables online control of large-scale networked dynamic systems. RL is an effective way of designing model-free linear quadratic regulator (LQR) controllers for linear time-invariant (LTI) networks with unknown state-space models. However, when the network size is large, conventional RL can result in unacceptably long learning times. The proposed approach is to construct a compressed state vector by projecting the measured state through a projective matrix. This matrix is constructed from online measurements of the states in a way that it captures the dominant controllable subspace of the open-loop network model. Next, an RL controller is learned using the reduced-dimensional state instead of the original state such that the resulting cost is close to the optimal LQR cost. Numerical benefits as well as the cyber-physical implementation benefits of the approach are verified using illustrative examples including an example of wide-area control of the IEEE 68-bus benchmark power system.
机译:在本文中,我们提出了一种快速的加固学习(RL)控制算法,其能够在线控制大规模网络动态系统。 RL是设计无需空间模型的线性时间不变(LTI)网络的无模型线性二次调节器(LQR)控制器的有效方式。然而,当网络尺寸很大时,传统的RL可能导致不可接受的长学习时间。所提出的方法是通过通过投射矩阵突出测量状态来构造压缩状态矢量。该矩阵由状态的在线测量构成,以便它捕获开环网络模型的主导可控子空间。接下来,使用减尺状态而不是原始状态来学习RL控制器,使得所得到的成本接近最佳LQR成本。使用说明性示例验证了方法的数值益处以及网络物理实现的益处,包括IEEE 68总线基准电力系统的广域控制的示例。

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