Fruit fly optimization algorithm based on differential evolution and its application on gasification process operation optimization

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摘要

The expression of the smell concentration judgment value is significantly important in the application of the fruit fly optimization algorithm (FOA). The original FOA can only solve problems that have optimal solutions in zero vicinity. To make FOA more universal for the continuous optimization problems, especially for those problems with optimal solutions that are not zero. This paper proposes an improved fruit fly optimization algorithm based on differential evolution (DFOA) by modifying the expression of the smell concentration judgment value and by introducing a differential vector to replace the stochastic search. Through numerical experiments based on 12 benchmark instances, experimental results show that the improved DFOA has a stronger global search ability, faster convergence, and convergence stability in high-dimensional functions than the original FOA and evolutionary algorithms from literature. The DFOA is also applied to optimize the operation of the Texaco gasification process by maximizing the syngas yield using two decision variables, i.e., oxygen–coal ratio and coal concentration. The results show that DFOA can quickly get the optimal output, demonstrating the effectiveness of DFOA.

论文关键词:Fruit fly optimization algorithm,Smell concentration judgment,Differential evolution,Coal gasification

论文评审过程:Received 18 January 2015, Revised 28 June 2015, Accepted 19 July 2015, Available online 29 July 2015, Version of Record 11 September 2015.

论文官网地址:https://doi.org/10.1016/j.knosys.2015.07.027