Learning nonlinear hybrid automata from input-output time-series data

Amit Gurung, Masaki Waga, Kohei Suenaga
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Abstract

Learning an automaton that approximates the behavior of a black-box system is a long-studied problem. Besides its theoretical significance, its application to search-based testing and model understanding is recently recognized. We present an algorithm to learn a nonlinear hybrid automaton (HA) that approximates a black-box hybrid system (HS) from a set of input--output traces generated by the HS. Our method is novel in handling (1) both exogenous and endogenous HS and (2) HA with reset associated with each transition. To our knowledge, ours is the first method that achieves both features. We applied our algorithm to various benchmarks and confirmed its effectiveness.
从输入输出时间序列数据中学习非线性混合自动机
学习一个近似黑盒系统行为的自动机是一个长期研究的问题。除了理论意义之外,它在基于搜索的测试和模型理解方面的应用最近得到了认可。我们提出了一种学习非线性混合自动机(HA)的算法,该算法从由HS生成的一组输入-输出轨迹中近似于黑盒混合系统(HS)。我们的方法在处理(1)外源性和内源性HS和(2)HA与每个转换相关的重置方面是新颖的。据我们所知,我们的方法是第一个实现这两个特征的方法。我们将算法应用于各种基准测试,并验证了其有效性。
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