4.7 Article

Binary fish migration optimization for solving unit commitment

Journal

ENERGY
Volume 226, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.energy.2021.120329

Keywords

Fish Migration Optimization; Binary; Optimization; Transfer function; Unit commitment

Funding

  1. National Natural Science Foundation of China [61872085]
  2. Natural Science Foundation of Fujian Province, China [2018J01638]
  3. Fujian Provincial Department of Science and Technology, China [2018Y3001]

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The paper introduces an optimization algorithm based on fish migration and its binary version, as well as an improved version to address potential issues. It proposes a new transfer function which demonstrates good performance in solving quality through experiments. The performance of the algorithms in solving the unit commitment problem was compared, showing that BFMO and ABFMO outperformed other algorithms.
Inspired by migratory graying, Pan et al. proposed the fish migration optimization (FMO) algorithm. It integrates the models of migration and swim into the optimization process. This paper firstly proposes a binary version of FMO, called BFMO. In order to improve the search ability of BFMO, ABFMO is introduced to solve the problems of stagnation and falling into local traps. The transfer function is responsible for mapping the continuous search space to the binary space. It plays a critical factor in the binary meta heuristics. This paper brings a new transfer function and compares it with the transfer functions used by BPSO, BGSA and BGWO. Experiments prove that the new transfer function has realized good results in the solving quality. Unit commitment (UC) is a NP-hard binary optimization problem. BFMO and ABFMO are tested with the IEEE benchmark systems consisting of various generating units with 24-h demand horizon. The effectivenesses of BFMO and ABFMO are compared with seven binary evolutionary algorithms. The simulation results and non-parametric tests verify that they achieve great performance. (c) 2021 Elsevier Ltd. All rights reserved.

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