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Data-Driven Adaptive PID Control Based on Physics-Informed Neural Networks

Published: October 6, 2025 | arXiv ID: 2510.04591v1

By: Junsei Ito, Yasuaki Wasa

Potential Business Impact:

Makes machines learn and control themselves better.

Business Areas:
Embedded Systems Hardware, Science and Engineering, Software

This article proposes a data-driven PID controller design based on the principle of adaptive gain optimization, leveraging Physics-Informed Neural Networks (PINNs) generated for predictive modeling purposes. The proposed control design method utilizes gradients of the PID gain optimization, achieved through the automatic differentiation of PINNs, to apply model predictive control using a cost function based on tracking error and control inputs. By optimizing PINNs-based PID gains, the method achieves adaptive gain tuning that ensures stability while accounting for system nonlinearities. The proposed method features a systematic framework for integrating PINNs-based models of dynamical control systems into closed-loop control systems, enabling direct application to PID control design. A series of numerical experiments is conducted to demonstrate the effectiveness of the proposed method from the control perspectives based on both time and frequency domains.

Page Count
13 pages

Category
Electrical Engineering and Systems Science:
Systems and Control