Abstract

The whale optimization algorithm(WOA) is a novel meta-heuristic evolutionary algorithm inspired by the behavior of whales predation. An important factor to the success of WOA is the balancing between exploration and exploitation. In the WOA, the distance control parameter $a$ is the main factor to find an appropriate balance between exploration and exploitation. In the standard WOA, the distance control parameter $a$ is optimized by linear control strategy (LCS), but the process of whales predation is not simply linear process. To address the issue, this paper proposed a nonlinear control strategy based on arcsine function (NCS-Arcsin) to optimize WOA. The NCS-Arcsin is applied to adjust distance control parameter $a$ . The NCS-Arcsin is considered to accurately describe the process of whales predation. Experiments on twelve well-known benchmark functions show the NCS-Arcsin can significantly improve the exploration and exploitation capabilities of WOA. In addition, the performance of proposed NCS-Arcsin is compared with LCS and other have been proposed NCS. The experimental results show that the optimization effect of NCS-Arcsin is stronger than that of LCS and other NCS. The NCSs based on the arcsine function is the best NCS, which can significantly improve the optimize performance of WOA.

Highlights

  • Every population-based meta-heuristic optimization algorithm needs to solve the problem of exploration and exploitation of search space [1]–[3]

  • 2) nonlinear control strategy (NCS) based on cosine function (NCS-Cos) which is used in the modified whale optimization algorithm [28], Its mathematical model is described as follows, π t a = 2 × cos ·

  • 3) NCS based on sinusoidal function (NCS-Sine) which is utilized for the improved whale optimization Algorithm to solve the energy efficiency problem [27], Its mathematical model is described as follows, π t a = 2 − 2 × sin ·

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Summary

INTRODUCTION

Every population-based meta-heuristic optimization algorithm needs to solve the problem of exploration and exploitation of search space [1]–[3]. Finding an appropriate balance between exploration and exploitation is the most challenging task in the development of any meta-heuristic algorithm due to the randomness of the optimization process. In this respect, many algorithms have been researched. The above papers all use the NCS to balance the exploration and exploitation phases of the WOA, and have achieved good results They fail to systematically discuss the advantage and disadvantage between NCS and LCS, and fail to compare the optimized performance of different NCSs. from the perspective of mathematical mechanism, this paper constructs a variety of NCS according to the characteristics of different basic elementary functions.

WHALE OPTIMIZATION ALGORITHM
SEARCHING FOR PREY PHASE
NONLINEAR CONTROL STRATEGY BASED ON BASIC ELEMENTARY FUNCTIONS
COMPARED CONTROL STRATEGIES
COMPARISON AND ANALYSIS OF SIMULATION RESULTS
CONCLUSION

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