eXplainable AI for data driven control: an inverse optimal control approach
eXplainable AI for data driven control: an inverse optimal control approach
Understanding the behavior of black-box data-driven controllers is a key challenge in modern control design. In this work, we propose an eXplainable AI (XAI) methodology based on Inverse Optimal Control (IOC) to obtain local explanations for the behavior of a controller operating around a given region. Specifically, we extract the weights assigned to tracking errors and control effort in the implicit cost function that a black-box controller is optimizing, offering a more transparent and interpretable representation of the controller's underlying objectives. This approach presents connections with well-established XAI techniques, such as Local Interpretable Model-agnostic Explanations (LIME) since it is still based on a local approximation of the control policy. However, rather being limited to a standard sensitivity analysis, the explanation provided by our method relies on the solution of an inverse Linear Quadratic (LQ) problem, offering a structured and more control-relevant perspective. Numerical examples demonstrate that the inferred cost function consistently provides a deeper understanding of the controller's decision-making process, shedding light on otherwise counterintuitive or unexpected phenomena.
Federico Porcari、Donatello Materassi、Simone Formentin
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Federico Porcari,Donatello Materassi,Simone Formentin.eXplainable AI for data driven control: an inverse optimal control approach[EB/OL].(2025-04-15)[2025-04-30].https://arxiv.org/abs/2504.11446.点此复制
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