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Can we cope with the curse of dimensionality in optimal control by using neural approximators?

机译:我们可以通过使用神经近似器来应对维度的诅咒吗?

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An approximation procedure termed "extended Ritz method" is presented for the solution of functional optimization problems. The properties of powerful nonlinear approximators, such as neural networks, are exploited to face highly nonlinear optimization problems in high-dimensional settings, with the possibility of avoiding the so-called "curse of dimensionality." As an example, a nonlinear control problem involving several tens of state variables is faced.
机译:为功能优化问题的解决方案介绍了称为“扩展RITZ方法”的近似过程。强大的非线性近似器(如神经网络)的性质被利用在高维设置中面临高度非线性优化问题,有可能避免所谓的“维度的诅咒”。作为示例,面临涉及几十个状态变量的非线性控制问题。

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