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L_1-Based Adaptive Identification with Saturated Observations

2024-12-14Unverified0· sign in to hype

Xin Zheng, Lei Guo

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Abstract

It is well-known that saturated output observations are prevalent in various practical systems and that the _1-norm is more robust than the _2-norm-based parameter estimation. Unfortunately, adaptive identification based on both saturated observations and the _1-optimization turns out to be a challenging nonlinear problem, and has rarely been explored in the literature. Motivated by this and the need to fit with the _1-based index of prediction accuracy in, e.g., judicial sentencing prediction problems, we propose a two-step weighted _1-based adaptive identification algorithm. Under certain excitation conditions much weaker than the traditional persistent excitation (PE) condition, we will establish the global convergence of both the parameter estimators and the adaptive predictors. It is worth noting that our results do not rely on the widely used independent and identically distributed (iid) assumptions on the system signals, and thus do not exclude applications to feedback control systems. We will demonstrate the advantages of our proposed new adaptive algorithm over the existing _2-based ones, through both a numerical example and a real-data-based sentencing prediction problem.

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