Abstract

Proportional Integral Derivative (PID) controller is one of the most classical controllers, which has a good performance in industrial applications. The traditional PID parameter tuning relies on experience, however, the intelligent algorithm is used to optimize the controller, which makes it more convenient. Fish Migration Optimization (FMO) is an excellent algorithm that mimics the swim and migration behaviors of fish biology. Especially, the formulas for optimization were obtained from biologists. However, the optimization effect of FMO for PID control is not prominent, since it is easy to skip the optimal solution with integer-order velocity. In order to improve the optimization performance of FMO, Fractional-Order Fish Migration Optimization (FOFMO) is proposed based on fractional calculus (FC) theory. In FOFMO, the velocity and position are updated in fractional-order forms. In addition, the fishes should migration back to a position which is more conducive to survival. Therefore, a new strategy based on the global best solution to generate new positions of offsprings is proposed. The experiments are performed on benchmark functions and PID controller. The results show that FOFMO is superior to the original FMO, and the PID controller tuned by FOFMO is more robust and has better performance than other contrast algorithms.

Highlights

  • As is known to all, Proportional Integral Derivative (PID) is one of the earliest control strategies

  • 23 classical benchmark functions utilized by many researchers [23], [24] are used to examine the performance of the proposed Fractional-Order Fish Migration Optimization (FOFMO) algorithm with different α

  • In order to improve the performance on tuning the PID controller, a novel FOFMO algorithm is proposed in this manuscript based on the fractional calculus (FC) concepts

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Summary

INTRODUCTION

As is known to all, PID is one of the earliest control strategies. Since its simple structure, good robustness, and high reliability, PID controller plays an important role in the closed industrial system [1], [2]. Fish Migration Optimization (FMO) [44], [45] is proposed in 2010 which is a swarm intelligence algorithm. It simulated the growth, migration processes, and predation strategy of fish biology. The generalization of the PSO algorithm based on complexorder is proposed in paper [53] and obtained excellent performance. Fractional-Order Fish Migration Optimization (FOFMO) is proposed in this manuscript since it is reasonable to improve the performance of the the FMO based on fractional order velocity.

PID CONTROLLER
THE PROPOSED ALGORITHM
EXPERIMENTAL RESULTS AND ANALYSIS ON BENCHMARK FUNCTION
ROBUSTNESS ANALYSIS
CONCLUSION
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