在ADP框架下实现离线和在线培训的有效结合

D. Prokhorov
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引用次数: 17

摘要

我们感兴趣的是在近似动态规划中找到离线和在线/实时训练之间最有效的结合。我们将鲁棒性训练的离线方法与一组在线方法相结合。鲁棒性训练是用多流卡尔曼滤波方法(Feldkamp等人,1998)在相当精确的模型上进行的,而在线适应是在评论家的帮助下或通过类似强化学习的方法进行的。我们还说明了在控制器/参与者和评论家中使用循环神经网络的重要性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward effective combination of off-line and on-line training in ADP framework
We are interested in finding the most effective combination between off-line and on-line/real-time training in approximate dynamic programming. We introduce our approach of combining proven off-line methods of training for robustness with a group of on-line methods. Training for robustness is carried out on reasonably accurate models with the multi-stream Kalman filter method (Feldkamp et al., 1998), whereas on-line adaptation is performed either with the help of a critic or by methods resembling reinforcement learning. We also illustrate importance of using recurrent neural networks for both controller/actor and critic
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