Automatic dimensionality reduction of Twin-in-the-Loop Observers
Automatic dimensionality reduction of Twin-in-the-Loop Observers
Conventional vehicle dynamics estimation methods suffer from the drawback of employing independent, separately calibrated filtering modules for each variable. To address this limitation, a recent proposal introduces a unified Twin-in-the-Loop (TiL) Observer architecture. This architecture replaces the simplified control-oriented vehicle model with a full-fledged vehicle simulator (digital twin), and employs a real-time correction mechanism using a linear time-invariant output error law. Bayesian Optimization is utilized to tune the observer due to the simulator's black-box nature, leading to a high-dimensional optimization problem. This paper focuses on developing a procedure to reduce the observer's complexity by exploring both supervised and unsupervised learning approaches. The effectiveness of these strategies is validated for longitudinal and lateral vehicle dynamics using real-world data.
Sergio Matteo Savaresi、Simone Formentin、Federico Dettù、Riccardo Poli、Giacomo Delcaro
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Sergio Matteo Savaresi,Simone Formentin,Federico Dettù,Riccardo Poli,Giacomo Delcaro.Automatic dimensionality reduction of Twin-in-the-Loop Observers[EB/OL].(2025-07-21)[2025-08-04].https://arxiv.org/abs/2401.10945.点此复制
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