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Adaptive Critic Design with Echo State Network

机译:回声状态网络的自适应批评设计

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摘要

In the present paper an application of a novel neural network architecture called Echo State Network (ESN) within the frame of a reinforcement learning scheme named Adaptive Critic Design (ACD) is proposed. Our aim is to investigate the possibility for on-line training of adaptive critic using the ESN architecture. In particular the application of this approach to mobile robot control is presented. Our preliminary results are encouraging and demonstrate that ESNs are good candidates for the on-line application of an ACD optimization approach due to their specific structure and fast training algorithm.
机译:在本文中,提出了一种在名为自适应批判设计(ACD)的强化学习方案框架内称为回声状态网络(ESN)的新型神经网络体系结构的应用。我们的目的是研究使用ESN架构对自适应批评家进行在线培训的可能性。特别介绍了这种方法在移动机器人控制中的应用。我们的初步结果令人鼓舞,并证明ESN由于其特定的结构和快速的训练算法而非常适合用于ACD优化方法的在线应用。

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