生物柴油生产系统建模和优化的机器学习方法:技术现状与未来展望

IF 7.1 Q1 ENERGY & FUELS Energy Conversion and Management-X Pub Date : 2024-07-01 DOI:10.1016/j.ecmx.2024.100669
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引用次数: 0

摘要

生物柴油生产的经济可持续性受到的主要限制之一仍然是原料成本过高。建模和优化是确定生物柴油生产过程(酯化和酯交换)在经济上是否可行的关键步骤。现象学或机械学模型可以模拟这些过程。这些方法已被用于模拟和管理过程,但其广泛应用受到计算复杂性和数值困难的限制。因此,有必要使用快速、有效、准确和有弹性的建模方法来模拟和管理此类复杂系统。数据驱动的计算和机器学习(ML)技术为传统建模方法提供了一种潜在的替代方法,可用于处理生物柴油系统的非线性、不可预测、复杂和多变量性质。人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)是生物柴油研究中最常用的 ML 工具。为有效实现生物柴油的最大产量,需要将基于自然启发优化算法的适当优化技术与这些工具相结合,以获得各种操作变量的最佳组合。未来的研究应侧重于利用 ML 方法监测和管理生物柴油生产系统,以提高其有效性和商业可行性。因此,本综述讨论了用于生物柴油生产系统建模和优化的各种 ML 技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Machine learning approaches to modeling and optimization of biodiesel production systems: State of art and future outlook

One of the main limitations to the economic sustainability of biodiesel production remains the high feedstock cost. Modeling and optimization are crucial steps to determine if processes (esterification and transesterification) involved in biodiesel production are economically viable. Phenomenological or mechanistic models can simulate the processes. These methods have been used to simulate and manage the processes, but their broad use has been constrained by computational complexity and numerical difficulties. Therefore, it is necessary to use quick, effective, accurate, and resilient modeling methodologies to simulate and regulate such complex systems. Data-driven computational and machine-learning (ML) techniques offer a potential replacement for conventional modeling methodologies to deal with the nonlinear, unpredictable, complex, and multivariate nature of biodiesel systems. Artificial neural networks (ANN) and adaptive neuro-fuzzy inference systems (ANFIS) are the most often utilized ML tools in biodiesel research. To effectively attain maximum biodiesel yield, suitable optimization techniques based on nature-inspired optimization algorithms need to be integrated with these tools to obtain the best possible combination of various operating variables. Future research should focus on utilizing ML approaches for monitoring and managing biodiesel production systems to increase their effectiveness and promote commercial feasibility. Thus, the review discusses the various ML techniques used in modeling and optimizing biodiesel production systems.

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来源期刊
CiteScore
8.80
自引率
3.20%
发文量
180
审稿时长
58 days
期刊介绍: Energy Conversion and Management: X is the open access extension of the reputable journal Energy Conversion and Management, serving as a platform for interdisciplinary research on a wide array of critical energy subjects. The journal is dedicated to publishing original contributions and in-depth technical review articles that present groundbreaking research on topics spanning energy generation, utilization, conversion, storage, transmission, conservation, management, and sustainability. The scope of Energy Conversion and Management: X encompasses various forms of energy, including mechanical, thermal, nuclear, chemical, electromagnetic, magnetic, and electric energy. It addresses all known energy resources, highlighting both conventional sources like fossil fuels and nuclear power, as well as renewable resources such as solar, biomass, hydro, wind, geothermal, and ocean energy.
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