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Gaussian Quantum Bat Algorithm with Direction of Mean Best Position for Numerical Function Optimization.

Xingwang Huang1, Chaopeng Li2, Yunming Pu1

  • 1Computer Engineering College, Jimei University, 185 Yinjiang Rd., Jimei District, Xiamen 361021, China.

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Summary
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This study introduces the Gaussian quantum bat algorithm (GQMBA), enhancing the Quantum-behaved Bat Algorithm (QMBA) by using Gaussian distribution. GQMBA improves search performance and avoids premature convergence in numerical optimization problems.

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Area of Science:

  • Computational Intelligence
  • Optimization Algorithms
  • Metaheuristics

Background:

  • The Quantum-behaved Bat Algorithm (QMBA) is effective but can suffer from premature convergence due to uniform probability distributions.
  • A limited search range in QMBA hinders its ability to escape local optima.

Purpose of the Study:

  • To propose a novel Gaussian quantum bat algorithm with mean best position directed (GQMBA).
  • To enhance the QMBA's ability to avoid premature convergence and improve search performance.
  • To apply GQMBA to solve numerical function optimization problems.

Main Methods:

  • The Gaussian quantum bat algorithm (GQMBA) was developed by incorporating Gaussian probability distribution into the QMBA framework.
  • Random number sequences for stochastic coefficients were generated using Gaussian distribution instead of uniform distribution.
  • GQMBA's performance was evaluated on nineteen benchmark functions and compared against other optimization algorithms.

Main Results:

  • The proposed GQMBA algorithm demonstrated superior search performance compared to other algorithms across most benchmark functions.
  • The application of Gaussian distribution effectively mitigated premature convergence issues observed in the original QMBA.
  • GQMBA showed improved accuracy and robustness in solving numerical function optimization tasks.

Conclusions:

  • The Gaussian quantum bat algorithm (GQMBA) is a promising advancement over existing QMBA methods.
  • Gaussian probability distribution is an effective technique for enhancing bat algorithm performance and avoiding local optima.
  • GQMBA offers a more robust and accurate approach for numerical function optimization.