从不确定性数据到时间逻辑规划的鲁棒策略

Pier Giuseppe Sessa, D. Frick, Tony A. Wood, M. Kamgarpour
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引用次数: 7

摘要

研究了复杂任务系统的鲁棒干扰反馈策略的合成问题。我们将任务表述为线性时间逻辑规范,并通过混合整数约束将其编码为优化框架。系统动力学和规格都是已知的,但受不确定性的影响。不确定性的分布是未知的,但是可以得到实现。我们引入了一种数据驱动的方法,其中满足了一组实现的约束,并提供了概率泛化保证,作为考虑的实现数量的函数。我们使用单独的机会约束来满足规范和操作约束。这使我们能够独立地量化它们的违反概率。我们计算扰动反馈策略作为混合整数线性或二次优化问题的解。通过使用反馈,我们可以利用过去实现的信息,与静态输入序列相比,为更广泛的情况提供可行性。我们在自动驾驶的两个鲁棒运动规划案例研究中展示了所提出的方法。
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From Uncertainty Data to Robust Policies for Temporal Logic Planning
We consider the problem of synthesizing robust disturbance feedback policies for systems performing complex tasks. We formulate the tasks as linear temporal logic specifications and encode them into an optimization framework via mixed-integer constraints. Both the system dynamics and the specifications are known but affected by uncertainty. The distribution of the uncertainty is unknown, however realizations can be obtained. We introduce a data-driven approach where the constraints are fulfilled for a set of realizations and provide probabilistic generalization guarantees as a function of the number of considered realizations. We use separate chance constraints for the satisfaction of the specification and operational constraints. This allows us to quantify their violation probabilities independently. We compute disturbance feedback policies as solutions of mixed-integer linear or quadratic optimization problems. By using feedback we can exploit information of past realizations and provide feasibility for a wider range of situations compared to static input sequences. We demonstrate the proposed method on two robust motion-planning case studies for autonomous driving.
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Session details: Modeling and Verification Algorithms for exact and approximate linear abstractions of polynomial continuous systems Formal Controller Synthesis from Hybrid Programs Session details: Stabilization and Control Design Compositional Synthesis for Symbolic Control
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