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Learning a Behavior Model of Hybrid Systems Through Combining Model-Based Testing and Machine Learning

机译:通过组合基于模型的测试和机器学习学习混合系统的行为模型

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Models play an essential role in the design process of cyber-physical systems. They form the basis for simulation and analysis and help in identifying design problems as early as possible. However, the construction of models that comprise physical and digital behavior is challenging. Therefore, there is considerable interest in learning such hybrid behavior by means of machine learning which requires sufficient and representative training data covering the behavior of the physical system adequately. In this work, we exploit a combination of automata learning and model-based testing to generate sufficient training data fully automatically. Experimental results on a platooning scenario show that recurrent neural networks learned with this data achieved significantly better results compared to models learned from randomly generated data. In particular, the classification error for crash detection is reduced by a factor of five and a similar F1-score is obtained with up to three orders of magnitude fewer training samples.
机译:模型在网络物理系统的设计过程中起重要作用。它们构成了模拟和分析的基础,并帮助尽早识别设计问题。然而,构成包括物理和数字行为的模型是具有挑战性的。因此,通过机器学习,在学习这种混合行为方面存在相当大的兴趣,这需要充分覆盖物理系统的行为的足够和代表性的训练数据。在这项工作中,我们利用自动机学习和基于模型的测试的组合来完全自动产生足够的培训数据。与从随机生成的数据学习的模型相比,对分列情景的实验结果表明,通过该数据学习的经常性神经网络实现了更好的结果。特别地,用于碰撞检测的分类误差减少了五倍,并且获得了相似的F1分数,其较少三个级训练样本获得。

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