Multi-objective exponential distribution optimizer (MOEDO): a novel math-inspired multi-objective algorithm for global optimization and real-world engineering design problems

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作者
Kanak Kalita
Janjhyam Venkata Naga Ramesh
Lenka Cepova
Sundaram B. Pandya
Pradeep Jangir
Laith Abualigah
机构
[1] Vel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and Technology,Department of Mechanical Engineering
[2] Chandigarh University,University Centre for Research and Development
[3] Koneru Lakshmaiah Education Foundation,Department of Computer Science and Engineering
[4] VSB-Technical University of Ostrava,Department of Machining, Assembly and Engineering Metrology, Faculty of Mechanical Engineering
[5] Shri K.J. Polytechnic,Department of Electrical Engineering
[6] Saveetha Institute of Medical and Technical Sciences,Department of Biosciences, Saveetha School of Engineering
[7] Al al-Bayt University,Computer Science Department
[8] Al-Ahliyya Amman University,Hourani Center for Applied Scientific Research
[9] Middle East University,MEU Research Unit
[10] Lebanese American University,Department of Electrical and Computer Engineering
[11] Universiti Sains Malaysia,School of Computer Sciences
[12] Sunway University Malaysia,School of Engineering and Technology
[13] University of Tabuk,Artificial Intelligence and Sensing Technologies (AIST) Research Center
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摘要
The exponential distribution optimizer (EDO) represents a heuristic approach, capitalizing on exponential distribution theory to identify global solutions for complex optimization challenges. This study extends the EDO's applicability by introducing its multi-objective version, the multi-objective EDO (MOEDO), enhanced with elite non-dominated sorting and crowding distance mechanisms. An information feedback mechanism (IFM) is integrated into MOEDO, aiming to balance exploration and exploitation, thus improving convergence and mitigating the stagnation in local optima, a notable limitation in traditional approaches. Our research demonstrates MOEDO's superiority over renowned algorithms such as MOMPA, NSGA-II, MOAOA, MOEA/D and MOGNDO. This is evident in 72.58% of test scenarios, utilizing performance metrics like GD, IGD, HV, SP, SD and RT across benchmark test collections (DTLZ, ZDT and various constraint problems) and five real-world engineering design challenges. The Wilcoxon Rank Sum Test (WRST) further confirms MOEDO as a competitive multi-objective optimization algorithm, particularly in scenarios where existing methods struggle with balancing diversity and convergence efficiency. MOEDO's robust performance, even in complex real-world applications, underscores its potential as an innovative solution in the optimization domain. The MOEDO source code is available at: https://github.com/kanak02/MOEDO.
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