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Global optimality of approximate dynamic programming and its use in non-convex function minimization

机译:近似动态规划的全局最优性及其在非凸函数最小化中的应用

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This study investigates the global optimality of approximate dynamic programming (ADP) based solutions using neural networks for optimal control problems with fixed final time. Issues including whether or not the cost function terms and the system dynamics need to be convex functions with respect to their respective inputs are discussed and sufficient conditions for global optimality of the result are derived. Next, a new idea is presented to use ADP with neural networks for optimization of non-convex smooth functions. It is shown that any initial guess leads to direct movement toward the proximity of the global optimum of the function. This behavior is in contrast with gradient based optimization methods in which the movement is guided by the shape of the local level curves. Illustrative examples are provided with single and multi-variable functions that demonstrate the potential of the proposed method.
机译:本研究使用固定时间的最优控制问题,使用神经网络研究基于近似动态规划(ADP)的解决方案的全局最优性。讨论了成本函数项和系统动力学是否需要相对于它们各自的输入为凸函数的问题,并得出了结果全局最优的充分条件。接下来,提出了一种将ADP与神经网络结合使用以优化非凸平滑函数的新思路。结果表明,任何初始猜测都会导致直接向函数全局最优值附近移动。这种行为与基于梯度的优化方法相反,在梯度优化方法中,运动由局部水平曲线的形状引导。提供具有单变量和多变量函数的说明性示例,这些函数演示了所提出方法的潜力。

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