AI-Driven Algae Biorefineries: A New Era for Sustainable Bioeconomy

IF 6.4 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Mohammed Abdullah, Hafiza Aroosa Malik, Abiha Ali, Ramaraj Boopathy, Phong H. N. Vo, Soroosh Danaee, Peter Ralph, Sana Malik
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Abstract

Purpose of Review

The urgent need for a transition toward a sustainable and greener future is underscored by the projected risk of a global temperature increase of up to 3 °C above pre-industrial levels, driven by rising carbon emissions. Algae biorefineries offer a promising solution to these challenges. However, the high production and downstream processing costs continue to hinder successful commercialization. This review provides a comprehensive overview of several AI-driven innovations: phenotypic screening for strain improvement, monitoring of environmental parameters, machine learning for optimizing dewatering efficiency, predictive modeling for algae growth and yield, and AI-controlled drying systems for biomass preservation.

Recent Findings

Integrating machine learning algorithms and predictive modeling can transform algae cultivation by automating the process with continuous monitoring and feedback systems, significantly reducing labor costs while enhancing process economics and efficiency. Accurate prediction of optimal harvesting times can further decrease harvesting costs, address key scalability issues, and facilitate the broader commercialization of algae for diverse biotechnological applications.

Summary

In the future, smart biorefineries that integrate artificial intelligence into algae production facilities will be pivotal in enhancing process efficiency and economics within circular and sustainable frameworks. While AI continues to impact various fields to ease human effort, ethical considerations must remain central to its use, especially as this sector grows rapidly.

Graphical Abstract

人工智能驱动的藻类生物炼制:可持续生物经济的新时代
审查目的在碳排放量不断增加的推动下,预计全球气温将比工业化前水平最多上升 3 ℃,这凸显了向可持续和更加绿色的未来过渡的迫切需要。藻类生物精炼厂为应对这些挑战提供了一个前景广阔的解决方案。然而,高昂的生产和下游加工成本继续阻碍着商业化的成功。本综述全面概述了几种人工智能驱动的创新技术:用于菌株改良的表型筛选、环境参数监测、用于优化脱水效率的机器学习、用于藻类生长和产量的预测建模,以及用于生物质保存的人工智能控制干燥系统。最新研究结果将机器学习算法与预测建模相结合,可通过持续监测和反馈系统实现过程自动化,从而改变藻类培育方式,在提高过程经济性和效率的同时显著降低劳动力成本。准确预测最佳采收时间可进一步降低采收成本,解决关键的可扩展性问题,并促进藻类在各种生物技术应用领域更广泛的商业化。 总结 未来,将人工智能融入藻类生产设施的智能生物炼制厂将在循环和可持续框架内提高工艺效率和经济性方面发挥关键作用。虽然人工智能将继续影响各个领域,以减轻人类的工作,但伦理方面的考虑因素仍必须是使用人工智能的核心,尤其是在这一领域快速发展的情况下。
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来源期刊
Current Pollution Reports
Current Pollution Reports Environmental Science-Water Science and Technology
CiteScore
12.10
自引率
1.40%
发文量
31
期刊介绍: Current Pollution Reports provides in-depth review articles contributed by international experts on the most significant developments in the field of environmental pollution.By presenting clear, insightful, balanced reviews that emphasize recently published papers of major importance, the journal elucidates current and emerging approaches to identification, characterization, treatment, management of pollutants and much more.
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