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Behavior-based switch-time MPC for mobile robots

机译:移动机器人基于行为的切换时间MPC

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Model predictive control can be computationally intensive as it has to compute an optimal control trajectory at each time instant. As such, we present a method in which parametrized behaviors are introduced as a level of abstraction to give a finite representation to the control trajectory optimization. As these control laws can be designed to accomplish different tasks, the robot is able to use the presented framework to tune the parameters online to achieve desirable results. Moreover, we build on switch-time optimization techniques to allow the model predictive control framework to optimize over a series of given behaviors, allowing for an added level of adaptability. We illustrate the utility of the framework through the control of a nonholonomic mobile robot.
机译:模型预测控制可能是计算密集型的,因为它必须在每个时刻都计算最佳控制轨迹。这样,我们提出了一种方法,其中将参数化行为作为抽象级别引入,以对控制轨迹的优化给出有限表示。由于可以将这些控制定律设计为完成不同的任务,因此机器人能够使用提出的框架在线调整参数以获得理想的结果。此外,我们建立在切换时间优化技术的基础上,以允许模型预测控制框架针对一系列给定行为进行优化,从而提高适应性。我们通过非完整的移动机器人的控制来说明框架的实用性。

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