Data-driven Reachability using Christoffel Functions and Conformal Prediction
Abdelmouaiz Tebjou, Goran Frehse, Fa\"icel Chamroukhi

TL;DR
This paper introduces an improved, data-driven method for approximating reach sets in dynamical systems using Christoffel functions and conformal prediction, enhancing efficiency, robustness, and relaxing assumptions.
Contribution
It advances reach set approximation by integrating conformal prediction, reducing sample requirements, and enabling incremental computation without calibration sets.
Findings
Enhanced sample efficiency in reach set approximation.
Robustness to outliers in training data.
Maintains statistical guarantees with incremental computation.
Abstract
An important mathematical tool in the analysis of dynamical systems is the approximation of the reach set, i.e., the set of states reachable after a given time from a given initial state. This set is difficult to compute for complex systems even if the system dynamics are known and given by a system of ordinary differential equations with known coefficients. In practice, parameters are often unknown and mathematical models difficult to obtain. Data-based approaches are promised to avoid these difficulties by estimating the reach set based on a sample of states. If a model is available, this training set can be obtained through numerical simulation. In the absence of a model, real-life observations can be used instead. A recently proposed approach for data-based reach set approximation uses Christoffel functions to approximate the reach set. Under certain assumptions, the approximation…
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Taxonomy
TopicsFault Detection and Control Systems · Model Reduction and Neural Networks · Control Systems and Identification
