[智能生物制造发酵过程优化:基于在线监测、人工智能和数字孪生技术]。

Q4 Biochemistry, Genetics and Molecular Biology
Jianye Xia, Dongjiao Long, Min Chen, Anxiang Chen
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引用次数: 0

摘要

生物制造作为一项战略性新兴产业,其核心挑战是如何实现发酵过程的精确优化和高效规模化。本文重点介绍了发酵的实时传感和智能控制两个关键方面,并系统总结了在线监测技术、人工智能(AI)驱动的优化策略和数字孪生应用的进展。首先,在线监测技术,从传统的参数(如温度、pH值和溶解氧)到先进的传感系统(如在线活细胞传感器、光谱和废气分析),为实时微生物代谢状态表征提供了数据基础。其次,传统的基于专家经验的静态控制正向人工智能驱动的动态优化发展。机器学习技术(如人工神经网络和支持向量机)和遗传算法的集成显著提高了进料策略和工艺参数的调节效率。最后,数字孪生技术将实时传感数据与多尺度模型(如细胞代谢动力学和反应器流体动力学)相结合,为优化生命周期和合理扩大发酵规模提供了一种新的范例。基于智能传感和数字孪生的闭环控制系统的未来发展有望加速合成生物学创新成果的产业化,并推动生物制造朝着更高效率、智能化和可持续性的方向发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Optimization of fermentation processes in intelligent biomanufacturing: on online monitoring, artificial intelligence, and digital twin technologies].

As a strategic emerging industry, biomanufacturing faces core challenges in achieving precise optimization and efficient scale-up of fermentation processes. This review focuses on two critical aspects of fermentation-real-time sensing and intelligent control-and systematically summarizes the advancements in online monitoring technologies, artificial intelligence (AI)-driven optimization strategies, and digital twin applications. First, online monitoring technologies, ranging from conventional parameters (e.g., temperature, pH, and dissolved oxygen) to advanced sensing systems (e.g., online viable cell sensors, spectroscopy, and exhaust gas analysis), provide a data foundation for real-time microbial metabolic state characterization. Second, conventional static control relying on expert experience is evolving toward AI-driven dynamic optimization. The integration of machine learning technologies (e.g., artificial neural networks and support vector machines) and genetic algorithms significantly enhances the regulation efficiency of feeding strategies and process parameters. Finally, digital twin technology, integrating real-time sensing data with multi-scale models (e.g., cellular metabolic kinetics and reactor hydrodynamics), offers a novel paradigm for lifecycle optimization and rational scale-up of fermentation. Future advancements in closed-loop control systems based on intelligent sensing and digital twin are expected to accelerate the industrialization of innovative achievements in synthetic biology and drive biomanufacturing toward higher efficiency, intelligence, and sustainability.

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来源期刊
Sheng wu gong cheng xue bao = Chinese journal of biotechnology
Sheng wu gong cheng xue bao = Chinese journal of biotechnology Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
1.50
自引率
0.00%
发文量
298
期刊介绍: Chinese Journal of Biotechnology (Chinese edition) , sponsored by the Institute of Microbiology, Chinese Academy of Sciences and the Chinese Society for Microbiology, is a peer-reviewed international journal. The journal is cited by many scientific databases , such as Chemical Abstract (CA), Biology Abstract (BA), MEDLINE, Russian Digest , Chinese Scientific Citation Index (CSCI), Chinese Journal Citation Report (CJCR), and Chinese Academic Journal (CD version). The Journal publishes new discoveries, techniques and developments in genetic engineering, cell engineering, enzyme engineering, biochemical engineering, tissue engineering, bioinformatics, biochips and other fields of biotechnology.
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