Systematic Evaluation of Initial States and Exploration-Exploitation Strategies in PID Auto-Tuning: A Framework-Driven Approach Applied on Mobile Robots
By: Zaid Ghazal , Ali Al-Bustami , Khouloud Gaaloul and more
Potential Business Impact:
Makes robots move smoother and faster.
PID controllers are widely used in control systems because of their simplicity and effectiveness. Although advanced optimization techniques such as Bayesian Optimization and Differential Evolution have been applied to address the challenges of automatic tuning of PID controllers, the influence of initial system states on convergence and the balance between exploration and exploitation remains underexplored. Moreover, experimenting the influence directly on real cyber-physical systems such as mobile robots is crucial for deriving realistic insights. In the present paper, a novel framework is introduced to evaluate the impact of systematically varying these factors on the PID auto-tuning processes that utilize Bayesian Optimization and Differential Evolution. Testing was conducted on two distinct PID-controlled robotic platforms, an omnidirectional robot and a differential drive mobile robot, to assess the effects on convergence rate, settling time, rise time, and overshoot percentage. As a result, the experimental outcomes yield evidence on the effects of the systematic variations, thereby providing an empirical basis for future research studies in the field.
Similar Papers
Adaptive PID Control for Robotic Systems via Hierarchical Meta-Learning and Reinforcement Learning with Physics-Based Data Augmentation
Robotics
Teaches robots to learn faster and better.
Bayesian Optimization Parameter Tuning Framework for a Lyapunov Based Path Following Controller
Robotics
Robot learns to drive better with fewer tries.
Real Time Self-Tuning Adaptive Controllers on Temperature Control Loops using Event-based Game Theory
Artificial Intelligence
Makes machines learn to fix themselves better.