Abstract

This paper studies the generalized normal distribution algorithm (GNDO) performance for tackling the permutation flow shop scheduling problem (PFSSP). Because PFSSP is a discrete problem and GNDO generates continuous values, the largest ranked value rule is used to convert those continuous values into discrete ones to make GNDO applicable for solving this discrete problem. Additionally, the discrete GNDO is effectively integrated with a local search strategy to improve the quality of the best-so-far solution in an abbreviated version of HGNDO. More than that, a new improvement using the swap mutation operator applied on the best-so-far solution to avoid being stuck into local optima by accelerating the convergence speed is effectively applied to HGNDO to propose a new version, namely a hybrid-improved GNDO (HIGNDO). Last but not least, the local search strategy is improved using the scramble mutation operator to utilize each trial as ideally as possible for reaching better outcomes. This improved local search strategy is integrated with IGNDO to produce a new strong algorithm abbreviated as IHGNDO. Those proposed algorithms are extensively compared with a number of well-established optimization algorithms using various statistical analyses to estimate the optimal makespan for 41 well-known instances in a reasonable time. The findings show the benefits and speedup of both IHGNDO and HIGNDO over all the compared algorithms, in addition to HGNDO.

Highlights

  • The permutation flow shop scheduling problem (PFSSP) is a critical problem that needs to be solved accurately and effectively to minimize the makespan criteria

  • As a new attempt to produce a new algorithm that could tackle the permutation flow shop scheduling problem (PFSSP), in this paper, we investigate the performance of a nove optimization algorithm, namely generalized normal distribution (GNDO), for solving thi

  • As a new attempt to produce a new algorithm that could tackle the permutation flow shop scheduling problem (PFSSP), in this paper, we investigate the performance of a novel optimization algorithm, namely generalized normal distribution (GNDO), for solving this problem

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Summary

A Local Search-Based Generalized Normal Distribution

Mohamed Abdel-Basset 1 , Reda Mohamed 1 , Mohamed Abouhawwash 2,3, * , Victor Chang 4 and S. Distribution Algorithm for Permutation Flow Shop Scheduling.

Introduction
Standard Algorithm
Exploitation Operator
Exploration Operator
The Proposed Work
Initialization
Swap Mutation Operator
Improved Local Searc
Results and Comparisons
Comparison
Comparison under Reeves
15. Boxplot
Conclusions and Future Work
Full Text
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