Van Giao Nguyen, Prabhakar Sharma, Ümit Ağbulut, Huu Son Le, Thanh Hai Truong, Marek Dzida, Minh Ho Tran, Huu Cuong Le, Viet Dung Tran
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引用次数: 0
摘要
生物炭正在成为生物质转化的潜在解决方案,以满足对可持续能源日益增长的需求。为了充分挖掘生物炭的潜力,需要高效的管理系统。现代机器学习(ML)技术,特别是集合方法和可解释的人工智能方法,对于正确预测生物炭的特性和效率非常有价值。基于机器学习的预测、优化和特征选择对于改进生物质管理技术至关重要。在这项研究中,我们探讨了这些技术对准确预测一系列生物质来源的生物炭产量和特性的影响。我们强调了模型可解释性的重要性,因为这可以提高人类对 ML 预测的理解力和信任度。敏感性分析被证明是一种有效的技术,可以找到影响生物炭合成的关键生物质特征。精确预报技术影响深远,可影响生物质物流、转化技术和成功利用生物质作为可再生能源等行业。这些进步可以为更绿色的未来做出巨大贡献,并鼓励发展循环型生物基经济。这项工作强调了利用先进的数据驱动方法(如生物炭合成中的 ML)来实现生态友好型能源解决方案的重要性。这些突破是实现更加可持续和环境友好型未来的关键。
Machine learning for the management of biochar yield and properties of biomass sources for sustainable energy
Biochar is emerging as a potential solution for biomass conversion to meet the ever increasing demand for sustainable energy. Efficient management systems are needed in order to exploit fully the potential of biochar. Modern machine learning (ML) techniques, and in particular ensemble approaches and explainable AI methods, are valuable for forecasting the properties and efficiency of biochar properly. Machine-learning-based forecasts, optimization, and feature selection are critical for improving biomass management techniques. In this research, we explore the influences of these techniques on the accurate forecasting of biochar yield and properties for a range of biomass sources. We emphasize the importance of the interpretability of a model, as this improves human comprehension and trust in ML predictions. Sensitivity analysis is shown to be an effective technique for finding crucial biomass characteristics that influence the synthesis of biochar. Precision prognostics have far-reaching ramifications, influencing industries such as biomass logistics, conversion technologies, and the successful use of biomass as renewable energy. These advances can make a substantial contribution to a greener future and can encourage the development of a circular biobased economy. This work emphasizes the importance of using sophisticated data-driven methodologies such as ML in biochar synthesis, to usher in ecologically friendly energy solutions. These breakthroughs hold the key to a more sustainable and environmentally friendly future.
期刊介绍:
Biofuels, Bioproducts and Biorefining is a vital source of information on sustainable products, fuels and energy. Examining the spectrum of international scientific research and industrial development along the entire supply chain, The journal publishes a balanced mixture of peer-reviewed critical reviews, commentary, business news highlights, policy updates and patent intelligence. Biofuels, Bioproducts and Biorefining is dedicated to fostering growth in the biorenewables sector and serving its growing interdisciplinary community by providing a unique, systems-based insight into technologies in these fields as well as their industrial development.