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Automatic synthesis of control alphabet policies

机译:自动综合控制字母策略

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摘要

This paper presents a method for synthesis of control alphabet policies, given continuum descriptions of physical systems and tasks. First, we describe a model predictive control scheme, called switched sequential action control (sSAC), that generates global state-feedback control policies with low computational cost, given a control alphabet. During synthesis, sSAC alphabet policies are directly encoded into finite state machines using a cell subdivision approach. As opposed to existing automata synthesis methods, controller synthesis is based entirely on the original nonlinear system dynamics and thus does not rely on but rather results in a lower-complexity symbolic representation. The method is validated for the cart-pendulum inversion problem and the double-tank system. The approach presents an opportunity for real-time task-oriented control of complex robotic platforms using exclusively sensor data with no online computation involved.
机译:给出了物理系统和任务的连续描述,本文提出了一种控制字母策略的综合方法。首先,我们描述了一种模型预测控制方案,称为交换顺序动作控制(sSAC),该方案可以在给定控制字母的情况下以较低的计算成本生成全局状态反馈控制策略。在合成过程中,使用单元细分方法将sSAC字母策略直接编码到有限状态机中。与现有的自动机综合方法相反,控制器综合完全基于原始的非线性系统动力学,因此不依赖于而是导致较低复杂度的符号表示。该方法针对手推车摆问题和双罐系统进行了验证。该方法为仅使用传感器数据而不涉及在线计算的复杂机器人平台的实时任务控制提供了机会。

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