The non-monopolize search (NO): a novel single-based local search optimization algorithm

المؤلفون

  • Laith Abualigah المؤلف
  • Mohammed A. A. Al-qaness الجامعة الإماراتية الدولية image/svg+xml المؤلف
  • Mohamed Abd Elaziz المؤلف
  • Ahmed A. Ewees المؤلف
  • Diego Oliva المؤلف
  • Thanh Cuong-Le المؤلف

DOI:

https://doi.org/10.1007/s00521-023-09120-9

الكلمات المفتاحية:

Non-monopolize search (NO) ، Local search optimization ، Metaheuristic algorithms ، Optimization problems

الملخص

Several optimization-based population search methods have been proposed; they use various operators that permit exploring the search space. These methods typically suffer from local search (LS) problems and are unbalanced between exploration and exploitation. Consequently, recent researchers sought to modify the algorithms to avoid search problems using local search techniques to intensify the exploitation when is necessary. This paper proposes a novel single-based local search optimization algorithm called the non-monopolize search (NO). The NO is a single-solution metaphor-free algorithm, and its operators are designed based to explore and exploit along the iterative process. The NO works only with a candidate solution, and the operators modify the dimension to move the current solution along the search space. The NO is an effective LS method that combines the benefits of exploration with exploitation. Different from other LS, the NO can escape from suboptimal solutions thanks to the randomness incorporated into its operators. This is the main advantage of the NO. Experiments are conducted on standard benchmark functions to validate the performance of the proposed non-monopolize search optimization technique. The results are compared with other well-known methods, and the proposed NO got better results. Moreover, the proposed NO can be considered a powerful alternative to improve the optimization algorithms’ performance and help avoid local search problems. 

السير الشخصية للمؤلفين

  • Laith Abualigah

    Corresponding author

    Laith Abualigah
    • Computer Science Department, Prince Hussein Bin Abdullah Faculty for Information Technology, Al al-Bayt University, Mafraq, 25113, Jordan
    • Department of Electrical and Computer Engineering, Lebanese American University, Byblos, 13-5053, Lebanon
    • MEU Research Unit, Middle East University, Amman, 11831, Jordan
    • Hourani Center for Applied Scientific Research, Al-Ahliyya Amman University, Amman, 19328, Jordan
    • Applied Science Research Center, Applied Science Private University, Amman, 11931, Jordan
  • Mohammed A. A. Al-qaness، الجامعة الإماراتية الدولية
    Mohammed A. A. Al-qaness
    • College of Physics and Electronic Information Engineering, Zhejiang Normal University, Jinhua, 321004, China
    • Zhejiang Optoelectronics Research Institute, Jinhua, 321004, China
    • College of Engineering and Information Technology, Emirates International University, 16881, Sana’a, Yemen
  • Mohamed Abd Elaziz
    Mohamed Abd Elaziz
    • Department of Mathematics, Faculty of Science, Zagazig University, Zagazig, Egypt
    • Artificial Intelligence Research Center (AIRC), Ajman University, Ajman, 346, United Arab Emirates
    • Department of Electrical and Computer Engineering, Lebanese American University, Byblos, 13-5053, Lebanon
  • Ahmed A. Ewees
    Ahmed A. Ewees
    • Department of Computer, Damietta University, Damietta, 34517, Egypt
  • Diego Oliva
    Diego Oliva
    • Departamento de Ingeniería Electro-Fotónica, Universidad de Guadalajara, CUCEI, Guadalajara, Jalisco, México
  • Thanh Cuong-Le
    Thanh Cuong-Le
    • Center for Engineering Application and Technology Solutions, Ho Chi Minh City Open University, Ho Chi Minh City, Vietnam

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التنزيلات

منشور

2023-12-29

إصدار

القسم

Articles

الفئات

كيفية الاقتباس

Abualigah, L., Al-qaness, M. A. A., Abd Elaziz, M., Ewees, A. A., Oliva , D., & Cuong-Le , T. (2023). The non-monopolize search (NO): a novel single-based local search optimization algorithm. المستودع الرقمي الجامعة الإماراتية الدولية, 1(1). https://doi.org/10.1007/s00521-023-09120-9

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