Modified Harris Hawks optimizer for solving machine scheduling problems

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Abstract

Scheduling can be described as a decision-making process. It is applied in various applications, such as manufacturing, airports, and information processing systems. More so, the presence of symmetry is common in certain types of scheduling problems. There are three types of parallel machine scheduling problems (PMSP): uniform, identical, and unrelated parallel machine scheduling problems (UPMSPs). Recently, UPMSPs with setup time had attracted more attention due to its applications in different industries and services. In this study, we present an efficient method to address the UPMSPs while using a modified harris hawks optimizer (HHO). The new method, called MHHO, uses the salp swarm algorithm (SSA) as a local search for HHO in order to enhance its performance and to decrease its computation time. To test the performance of MHHO, several experiments are implemented using small and large problem instances. Moreover, the proposed method is compared to several state-of-art approaches used for UPMSPs. The MHHO shows better performance in both small and large problem cases.

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Jouhari, H., Lei, D., Al-qaness, M. A. A., Abd Elaziz, M., Damaševičius, R., Korytkowski, M., & Ewees, A. A. (2020). Modified Harris Hawks optimizer for solving machine scheduling problems. Symmetry, 12(9). https://doi.org/10.3390/sym12091460

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