Zagazig University Digital Repository
Home
Thesis & Publications
All Contents
Publications
Thesis
Graduation Projects
Research Area
Research Area Reports
Search by Research Area
Universities Thesis
ACADEMIC Links
ACADEMIC RESEARCH
Zagazig University Authors
Africa Research Statistics
Google Scholar
Research Gate
Researcher ID
CrossRef
BSMA: A novel metaheuristic algorithm for multi-dimensional knapsack problems: Method and comprehensive analysis
Faculty
Computer Science
Year:
2021
Type of Publication:
ZU Hosted
Pages:
Authors:
Staff Zu Site
Abstract In Staff Site
Journal:
Computers & Industrial Engineering Pergamon
Volume:
159
Keywords :
BSMA: , novel metaheuristic algorithm , multi-dimensional knapsack
Abstract:
The Multi-dimensional Knapsack Problems (MKP) has been widely accepted as a challenging research topic due to its NP-hard nature. In this paper, a binary version of the recently developed slime mould algorithm (BSMA) is proposed to solve MKP. As SMA was originally proposed to solve continuous optimization problems, it is not applicable to solve the MKP, which is a discrete one, in the classical form. Therefore, three different transfer function families: V-shaped, S-shaped, and U-shaped were extensively investigated with the standard algorithm to become suitable for tackling this problem in a binary variant called BSMA. However, this variant significantly suffers from stagnation into local minima preventing it from reaching better outcomes. Therefore, two various improvement steps are applied to escape the local optima and to guide the search process to better areas; the first one is based on flipping an unselected item, picked randomly, within the best-so-far solution and checking if the new solution is better or not; the second one re-initializes the population after a predefined number of iterations. These two improvements are integrated with the BSMA to develop an efficient variant abbreviated as IBSMA. For handling constraints and infeasible solutions within these two variants, a repair mechanism is utilized. The performance of the proposed algorithms is tested by solving two benchmarks MKPs. The performance of the proposed algorithm is evaluated on two well-known small-scale and large-scale problems. An extensive comparison with selected state-of-the-art algorithms shows the superiority of our proposed algorithms.
Author Related Publications
Department Related Publications
Saber Mohamed, "A surrogate-assisted differential evolution algorithm with dynamic parameters selection for solving expensive optimization problems", IEEE, 2014
More
Saber Mohamed, "Differential Evolution Combined with Constraint Consensus for Constrained Optimization", IEEE, 2011
More
mahmoud mohamed ismail ali, "AN EFFICIENT Hybrid Swarm Intelligence Technique for Solving Integer Programming", International Journal of Computers & Technology, 2013
More
mahmoud mohamed ismail ali, "A Hybrid Swarm Intelligence Technique for Solving Integer Multi-objective Problems", international journal of computer applications, 2014
More
mahmoud mohamed ismail ali, "An Improved Chaotic Flower Pollination Algorithm for Solving Large Integer Programming Problems", International Journal of Digital Content Technology and its Applications, 2014
More
جامعة المنصورة
جامعة الاسكندرية
جامعة القاهرة
جامعة سوهاج
جامعة الفيوم
جامعة بنها
جامعة دمياط
جامعة بورسعيد
جامعة حلوان
جامعة السويس
شراقوة
جامعة المنيا
جامعة دمنهور
جامعة المنوفية
جامعة أسوان
جامعة جنوب الوادى
جامعة قناة السويس
جامعة عين شمس
جامعة أسيوط
جامعة كفر الشيخ
جامعة السادات
جامعة طنطا
جامعة بنى سويف