Quantum Inspired Chaotic Salp Swarm Optimization for Dynamic Optimization

Authors

  • Sanjai Pathak Amity University Uttar Pradesh Noida
  • Ashish Mani Amity University Uttar Pradesh Noida
  • Mayank Sharma Amity University Uttar Pradesh Noida
  • Amlan Chatterjee California State University Dominguez Hills Carson, CA, USA

DOI:

https://doi.org/10.7494/csci.2024.25.2.5289

Abstract

Many real-world problems are dynamic optimization problems that are unknown beforehand. In practice, unpredictable events such as the arrival of new jobs, due date changes, and reservation cancellations, changes in parameters or constraints make the search environment dynamic. Many algorithms are designed to deal with stationary optimization problems, but these algorithms do not face dynamic optimization problems or manage them correctly. Although some of the optimization algorithms are proposed to deal with the changes in dynamic environments differently, there are still areas of improvement in existing algorithms due to limitations or drawbacks, especially in terms of locating and following the previously identified optima. With this in mind, we studied a variant of SSA known as QSSO, which is integrating the principles of quantum computing. An attempt is made to improve the overall performance of standard SSA to deal with the dynamic environment effectively by locating and tracking the global optima for DOPs. This work is an extension of the proposed new algorithm QSSO, known as the Quantum-inspired Chaotic Salp Swarm Optimization (QCSSO) Algorithm, which is detailing the various approaches taken into consideration while solving DOPs. A chaotic operator is employed with quantum computing to respond to change and guarantee to increase individual searchability by improving population diversity and the speed at which the algorithm converges. We experimented by evaluating QCSSO on a well-known generalized dynamic benchmark problem (GDBG) provided for CEC 2009, followed by a comparative numerical study with well-regarded algorithms. As promised, the introduced QCSSO is discovered, and a rival algorithm for DOPs.

Downloads

Download data is not yet available.

Downloads

Published

2024-07-03

Issue

Section

Articles

How to Cite

Quantum Inspired Chaotic Salp Swarm Optimization for Dynamic Optimization. (2024). Computer Science, 25(2). https://doi.org/10.7494/csci.2024.25.2.5289