Data-Driven Multi-Objective Controller Optimization for a Magnetically-Levitated Nanopositioning System
Xiaocong Li, Haiyue Zhu, Jun Ma, Tat Joo Teo, Chek Sing Teo, Masayoshi, Tomizuka, Tong Heng Lee

TL;DR
This paper introduces a data-driven, multi-objective controller optimization method for a complex magnetically-levitated nanopositioning system, improving performance without relying on precise system modeling.
Contribution
It proposes a novel data-driven optimization approach that estimates gradients and Hessians from motion data to enhance control performance in complex systems.
Findings
Effective in improving control accuracy on the maglev system
Demonstrates robustness without requiring precise system models
Shows potential for complex robotic systems with unknown dynamics
Abstract
The performance achieved with traditional model-based control system design approaches typically relies heavily upon accurate modeling of the motion dynamics. However, modeling the true dynamics of present-day increasingly complex systems can be an extremely challenging task; and the usually necessary practical approximations often render the automation system to operate in a non-optimal condition. This problem can be greatly aggravated in the case of a multi-axis magnetically-levitated nanopositioning system where the fully floating behavior and multi-axis coupling make extremely accurate identification of the motion dynamics largely impossible. On the other hand, in many related industrial automation applications, e.g., the scanning process with the maglev system, repetitive motions are involved which could generate a large amount of motion data under non-optimal conditions. These…
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