Harnessing artificial intelligence for enhanced bioethanol productions: a cutting-edge approach towards sustainable energy solution

Christopher Selvam Damian, Yuvarajan Devarajan, Raja Thandavamoorthy, R. Jayabal
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Abstract

The adoption of biofuels as an energy source has experienced a substantial increase, exceeding the consumption of fossil fuels. The shift can be ascribed to the availability of renewable resources for energy production and the ecological advantages linked to their utilisation. Nevertheless, due to its intricate characteristics, the process of producing ethanol fuel from biomass poses difficulties in terms of administration, enhancement, and forecasting future results. To tackle these difficulties, it is crucial to utilise modelling techniques like artificial intelligence (AI) to create, oversee, and improve bioethanol production procedures. Artificial Neural Networks (ANN) is a prominent AI technique that offers significant advantages for modelling bioethanol production systems’ pretreatment, fermentation, and conversion stages. They are highly flexible and accurate, making them particularly well-suited. This study thoroughly examines several artificial intelligence techniques used in bioethanol production, specifically focusing on research published in the past ten years. The analysis emphasises the importance of using AI methods to address the complexities of bioethanol production and shows their role in enhancing efficiency and sustainability in the biofuel industry.
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利用人工智能提高生物乙醇产量:实现可持续能源解决方案的前沿方法
采用生物燃料作为能源的数量大幅增加,超过了化石燃料的消耗量。这一转变可归因于可用于能源生产的可再生资源及其利用所带来的生态优势。然而,由于生物质生产乙醇燃料的过程错综复杂,在管理、改进和预测未来结果方面都存在困难。为了解决这些困难,利用人工智能(AI)等建模技术来创建、监督和改进生物乙醇生产程序至关重要。人工神经网络(ANN)是一种突出的人工智能技术,在模拟生物乙醇生产系统的预处理、发酵和转化阶段方面具有显著优势。它们具有高度灵活性和准确性,因此特别适用。本研究深入探讨了生物乙醇生产中使用的几种人工智能技术,特别关注过去十年中发表的研究成果。分析强调了使用人工智能方法解决生物乙醇生产复杂问题的重要性,并展示了人工智能在提高生物燃料行业效率和可持续性方面的作用。
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