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Comprehensive Performance Evaluation of MOBCA and LMPFE on the MaF8 Benchmark Using PlatEMO

author-img admin April 28, 2026 No Comments
  • Faryal Zafar BhattiDepartment of Robotics and Artificial Intelligence, SZABIST University Karachi, Pakistan
  • Izaan AnjumDepartment of Robotics and Artificial Intelligence, SZABIST University Karachi, Pakistan
  • Muhamad ShakirDepartment of Robotics and Artificial Intelligence, SZABIST University Karachi, Pakistan
  • Syed Hassan AliDepartment of Robotics and Artificial Intelligence, SZABIST University Karachi, Pakistan

DOI:

https://doi.org/10.63094/AITUSRJ.25.4.2.4

Keywords:

Multi Objective Optimization, MaF8 Benchmark, MOBCA, LMPFE, PlatEMO, Evolutionary Algorithms

Abstract

The multi-objective optimization problems (MOPs) aim to balance conflicting objectives to identify a set of trade-off solutions, known as the Pareto front. This study evaluates the Multi-Objective Besiege and Conquer Algorithm (MOBCA), an evolutionary algorithm extending the single objective Besiege and Conquer Algorithm (BCA) by integrating grid, archiving, and leader selection mechanisms to approximate the Pareto optimal frontier. MOBCA is compared with the Large-Margin Pareto Front Estimation (LMPFE) algorithm on the MaF8 benchmark, a complex problem featuring a concave Pareto front and high-dimensional decision space. Using the PlatEMO platform, we assessed performance over 30 runs. Convergence was greater in case of LMPFE while on other hand computational efficiency was core objective of MOBCA together with solution diversity. The summary of this whole procedure illustrates the value of MOBCA in processing complex objective problems while taking additional standards on the board.

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Article Link:

https://ojs.aitusrj.org/files/article/view/56

American International Theism University is a  Religious institution that meets the requirements found in Section 1005.06(1)(f), Florida Statutes and Rule 6E-5.001, Florida Administrative Code are not under the jurisdiction or purview of the Commission for Independent Education and are not required to obtain licensure.

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