Neural approximators for the solution of decentralized optimal control problems

M. Baglietto, T. Parisini, R. Zoppoli
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Abstract

There are many situations, in engineering and economic systems, where several decision makers (DMs), sharing different information patterns, cooperate to the accomplishment of a common goal. We address an approximate technique consisting in constraining the control functions to have a fixed structure (we chose feedforward neural networks). We are then able to obtain solutions that approximate the optimal ones within any desired degree of accuracy under very general conditions. Such a technique has proved to be effective in non-LQG classical optimal control and in team problems not solvable analytically.
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解分散最优控制问题的神经逼近器
在工程和经济系统中,有许多情况下,几个决策者(dm)共享不同的信息模式,为实现共同目标而合作。我们解决了一种近似技术,包括约束控制函数具有固定结构(我们选择了前馈神经网络)。然后,我们能够在非常一般的条件下,在任何期望的精度范围内获得近似于最优解的解。该方法在非lqg经典最优控制和不可解析解的团队问题中是有效的。
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