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Prioritized optimal control: A hierarchical differential dynamic programming approach

机译:优先优化控制:分级差分动态规划方法

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This paper deals with the generation of motion for complex dynamical systems (such as humanoid robots) to achieve several concurrent objectives. Hierarchy of tasks and optimal control are two frameworks commonly used to this aim. The first one specifies control objectives as a number of quadratic functions to be minimized under strict priorities. The second one minimizes an arbitrary user-defined function of the future state of the system, thus considering its evolution in time. Our recent work on prioritized optimal control merges the advantages of both these methods. This paper reformulates the original prioritized optimal control algorithm with the precise goal of improving its computational speed. We extend the dynamic programming method to work with a hierarchy of tasks. We compared our approach in simulation with both our previous algorithm and classical optimal control. The measured computational improvement represents another step towards the application of prioritized optimal control for online model predictive control of humanoid robots. We believe that this could be the key to unlock the (so far unexploited) dynamic capabilities of these mechanical systems.
机译:本文讨论了复杂动力系统(例如人形机器人)的运动生成,以实现多个并发目标。任务层次和最佳控制是通常用于此目标的两个框架。第一个将控制目标指定为要在严格优先级下最小化的许多二次函数。第二个最小化了系统未来状态的任意用户定义功能,因此考虑了其随时间的演变。我们最近在优先优化控制方面的工作融合了这两种方法的优点。本文以提高其计算速度的精确目标,对最初的优先优化控制算法进行了重新表述。我们扩展了动态编程方法,以处理任务的层次结构。我们将仿真中的方法与先前的算法和经典的最优控制进行了比较。所测量的计算改进代表了将优先优化控制应用于类人机器人在线模型预测控制的又一步。我们认为,这可能是解锁这些机械系统的(迄今为止尚未开发的)动态功能的关键。

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