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Adaptive Online Distributed Optimal Control of Very-Large-Scale Robotic Systems

机译:自适应在线分布式的大型机器人系统的最优控制

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摘要

Autonomous systems comprised of many cooperative agents have the potential for enabling long-duration tasks and data collection critical to the understanding of a wide range of phenomena in spatially and temporally variable environments. The adaptive distributed optimal control approach presented in this article extends online approximate dynamic programming to very-large-scale robotics (VLSR) systems that must operate and adapt to highly uncertain and variable environments. Optimal mass transport theory is used to show that, in the Wasserstein-Gaussian mixture model space, the VLSR system's cost to go can be represented by a value functional of the robot distribution and dynamic environmental maps. The approach is demonstrated on a cooperative path planning problem in which knowledge of the obstacles in the environment changes incrementally over time based on in situ measurements. Numerical simulations show that the proposed approach significantly outperforms existing methods by finding an approximately optimal solution that avoids obstacles and meets a desired final robot distribution using minimum energy.
机译:由许多合作代理组成的自主系统具有使长期任务和数据收集能够对在空间和时间可变环境中的广泛现象的理解至关重要。本文中提供的自适应分布式最优控制方法将在线近似动态编程扩展到必须操作和适应高度不确定和可变环境的大规模机器人(VLSR)系统。最佳质量传输理论用于表明,在Wassersein-Gaussian混合模型空间中,VLSR系统的成本可以由机器人分布和动态环境贴图的价值函数来表示。在合作路径规划问题上证明了该方法,其中基于原位测量,在环境中逐步改变环境中的障碍物的知识。数值模拟表明,该方法通过找到避免障碍物的近似最佳解决方案来显着优于现有方法,并使用最小能量满足所需的最终机器人分布。

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