Adaptive Experiment Design for Nonlinear System Identification with Operational Constraints
Jingwei Hu, Dave Zachariah, Torbjörn Wigren, Petre Stoica
- Year
- 2025
- Access
- Open access
Abstract
We consider the joint problem of online experiment design and parameter estimation for identifying nonlinear system models, while adhering to system constraints. We utilize a receding horizon approach and propose a new adaptive input design criterion, which is tailored to continuously updated parameter estimates, along with a new sequential estimator. We demonstrate the ability of the method to design informative experiments online, while steering the system within operational constraints.
Keywords
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