具有时序逻辑推理的切换非线性系统的数据驱动模型判别

Zeyuan Jin;Nasim Baharisangari;Zhe Xu;Sze Zheng Yong
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摘要

本文解决了具有未知线性时序逻辑(LTL)规范的未知切换系统的数据驱动模型判别问题,这些系统表示控制其模式序列的任务,其中只有未知动态和任务的采样数据可用。为了解决这个问题,我们提出了数据驱动的方法来过度逼近未知动态和推断未知规范,从而保证未知动态和LTL公式的集合隶属度模型都包含基本真值模型和规范/任务。此外,我们提出了一种基于优化的算法,用于分析一组学习/推断模型任务对的可区分性,以及一种模型判别算法,用于排除与运行时新观测结果不一致的模型任务对。此外,我们提出了一种减小推断规格大小的方法,以提高模型识别算法的计算效率。
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Data-Driven Model Discrimination of Switched Nonlinear Systems With Temporal Logic Inference
This article addresses the problem of data-driven model discrimination for unknown switched systems with unknown linear temporal logic (LTL) specifications, representing tasks, that govern their mode sequences, where only sampled data of the unknown dynamics and tasks are available. To tackle this problem, we propose data-driven methods to over-approximate the unknown dynamics and to infer the unknown specifications such that both set-membership models of the unknown dynamics and LTL formulas are guaranteed to include the ground truth model and specification/task. Moreover, we present an optimization-based algorithm for analyzing the distinguishability of a set of learned/inferred model-task pairs as well as a model discrimination algorithm for ruling out model-task pairs from this set that are inconsistent with new observations at run time. Further, we present an approach for reducing the size of inferred specifications to increase the computational efficiency of the model discrimination algorithms.
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Erratum to “Learning to Boost the Performance of Stable Nonlinear Systems” Generalizing Robust Control Barrier Functions From a Controller Design Perspective 2024 Index IEEE Open Journal of Control Systems Vol. 3 Front Cover Table of Contents
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