Abstract

This paper aims to further increase the reliability of optimal results by setting the simulation conditions to be as close as possible to the real or actual operation to create a Cyber-Physical System (CPS) view for the installation of the Fractional-Order PID (FOPID) controller. For this purpose, we consider two different sources of variability in such a CPS control model. The first source refers to the changeability of a target of the control model (multiple setpoints) because of environmental noise factors and the second source refers to an anomaly in sensors that is raised in a feedback loop. We develop a new approach to optimize two objective functions under uncertainty including signal energy control and response error control while obtaining the robustness among the source of variability with the lowest computational cost. A new hybrid surrogate-metaheuristic approach is developed using Particle Swarm Optimization (PSO) to update the Gaussian Process (GP) surrogate for a sequential improvement of the robust optimal result. The application of efficient global optimization is extended to estimate surrogate prediction error with less computational cost using a jackknife leave-one-out estimator. This paper examines the challenges of such a robust multi-objective optimization for FOPID control of a five-bar linkage robot manipulator. The results show the applicability and effectiveness of our proposed method in obtaining robustness and reliability in a CPS control system by tackling required computational efforts.

Highlights

  • Nowadays, developing processes in the engineering world is strongly associated with computer simulations

  • A new Cyber-Physical System (CPS) framework of fractional-order PID controller is developed by considering uncertainty in the control system

  • To optimize such a stochastic control system, a new hybrid surrogate/metaheuristic-based robust simulation-optimization algorithm is proposed that possesses the advantages of both Gaussian Process (GP) surrogate in learning the behavior of the model for efficient global optimization and Particle Swarm Optimization (PSO) metaheuristic in convergence searching of optimum results

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Summary

Introduction

Nowadays, developing processes in the engineering world is strongly associated with computer simulations. These computer codes can collect appropriate information about the characteristics.

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