应用CFD和人工智能预测生物质颗粒在反应器中的燃烬和停留时间

M. Žarković, Vladimir Antonijević, Aleksandar Milićević, Srđan V. Belošević
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引用次数: 0

摘要

在规划能源部门的发展时,越来越注意诸如生物质的可再生能源。生物质在锅炉炉内的(co)燃烧过程非常复杂,有许多耦合参数。正因为如此,计算流体力学和人工智能的发展和应用被视为分析燃烧过程中发生的物理和化学过程的有效工具。本文介绍了应用于机器学习领域的自适应神经模糊系统(ANFIS)的CFD代码和方法,用于预测150kw反应器中生物质颗粒的燃尽和停留时间。考虑了三种不同粒径和形状因素的生物质粉的燃烧试验情况。利用自行开发的计算机程序进行数值模拟,得到了颗粒质量燃尽值和停留时间数据库。ANFIS在成形基座上的应用结果表明,基于引入炉内燃料的类型、直径和形状因素的知识,可以可靠地评估颗粒的质量燃烬和停留时间。所提出的模型为CFD和ANFIS模型在各种火力发电厂的实施和应用提供了良好的基础,以评估燃料在炉内的燃烧效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of CFD and Artificial Intelligence for Prediction of Biomass Particle Burnout and Residence Time in the Reactor
In planning the development of the energy sector, increasing attention is paid to renewable energy sources, such as biomass. The process of (co)combustion of biomass in boiler furnaces is extremely complex with many coupled parameters. Because of that, the development and application of computational fluid mechanics and artificial intelligence are approached, as efficient tools for the analysis of physical and chemical processes that take place during combustion. The paper presents the applied CFD code and the methodology of application of adaptive neuro-fuzzy systems (ANFIS) in the field of machine learning for predicting the biomass particle burnout and residence time in a 150 kW reactor. Test cases for combustion of three types of pulverized biomass with different diameters and shape factors were considered. A database with the values of mass burnout and residence time of particles was obtained by means of numerical simulations using the in-house developed computer code. The results of ANFIS application on the formed base indicate the possibility of a reliable assessment of mass burnout and residence time of particles, based on knowledge of the type, diameter and shape factors of the fuel introduced into the furnace. The presented models represent a good basis for the implementation and application of CFD and ANFIS models at various thermal energy plants, in order to assess the efficiency of fuel combustion in the furnace.
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