酵母发酵过程的遗传算法优化

H. S. Chuo, Christina Y.Y. Lo, M. K. Tan, H. Tham, S. Kumaresan, K. Teo
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引用次数: 1

摘要

本文提出了一种遗传算法来优化酵母发酵过程的生产效率。所提出的优化器旨在最大限度地提高酵母的生产力,同时最大限度地减少乙醇的副产品。不同的初始葡萄糖浓度会影响酵母的产率,影响酵母的发酵性能。与其他微生物相比,酵母的乙醇产量相对较高。由于酵母发酵过程中过量的乙醇生成会对产品质量产生负面影响,因此需要将葡萄糖投料率优化到最佳水平,以最大限度地提高酵母的生产效率。传统的开环投料系统不能根据即时需要调节葡萄糖的投料速率,不能最大限度地减少副产物的生长。因此,提出了基于酵母、葡萄糖、氧气和乙醇在发酵罐内瞬间浓度的遗传算法来优化葡萄糖投料配置。结果表明,与常规开环系统92.5%的产率相比,该遗传算法的产率可达95.3%。结果表明,采用遗传算法可获得满意的最佳葡萄糖投料速率。
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Optimization of Yeast Fermentation Process using Genetic Algorithm
This paper proposes genetic algorithm (GA) to optimize the productivity of yeast fermentation process. The proposed optimizer aims to maximize yeast productivity while minimizing the by-product of ethanol. Various initial glucose concentrations will affect yeast productivity and influence the performance of yeast fermentation. Yeast has relatively high ethanol production as compared with other microorganisms. Since the excessive ethanol formation in the yeast fermentation process will have a negative impact on quality of the product, it is needed to optimize glucose feeding rate at optimal level for maximizing the yeast productivity. The conventional open-loop feeding system is inadequate to minimize the growth of byproduct as the system will not regulate the glucose feeding rate based on the instant needs. Thus, GA is proposed to optimize the glucose feeding profile based on the instant concentration of yeast, glucose, oxygen and ethanol inside the fermentation tank. The results show the proposed GA can obtain a higher yield production of 95.3% as compared to the conventional open-loop system with 92.5% yield production. The results reveal that the optimal glucose feeding rate using GA is achieved satisfyingly and successfully.
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