Influence of Rotor Cage Structural Parameters on the Classification Performance of a Straw Micro-Crusher Classifying Device: CFD and Machine Learning Approach

Q2 Agricultural and Biological Sciences
Min Fu, Zhong Cao, Mingyu Zhan, Yulong Wang, Lei Chen
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引用次数: 0

Abstract

The rotor cage is a key component of the classifying device, and its structural parameters directly affect classification performance. To improve the classification performance of the straw micro-crusher classifying device, this paper proposes a CFD-ML-GA (Computational Fluid Dynamics-Machine Learning-Genetic Algorithm) method to quantitatively analyze the coupled effects of rotor cage structural parameters on classification performance. Firstly, CFD and orthogonal experimental methods are used to qualitatively investigate the effects of the number of blades, length of rotor blades, and blade installation angle on the classification performance. The conclusion obtained is that the blade installation angle exerts the greatest effect on classification performance, while the number of blades has the least effect. Subsequently, four machine learning algorithms are used to build a cut size prediction model, and, after comparison, the Random Forest Regression (RFR) model is selected. Finally, RFR is integrated with a Genetic Algorithm (GA) for quantitative parameter optimization. The quantitative analysis results of GA indicate that with 29 blades, a blade length of 232.8 mm, and a blade installation angle of 36.8°, the cut size decreases to 47.6 μm and the classifying sharpness index improves to 0.62. Compared with the optimal solution from the orthogonal experiment, the GA solution reduces the cut size by 9.33% and improves the classifying sharpness index by 9.68%. This validates the feasibility of the proposed method.
转笼结构参数对秸秆微粉碎分级装置分级性能的影响:CFD 和机器学习方法
转笼是分级装置的关键部件,其结构参数直接影响分级性能。为提高秸秆微粉碎分级装置的分级性能,本文提出了CFD-ML-GA(计算流体力学-机器学习-遗传算法)方法,定量分析转笼结构参数对分级性能的耦合影响。首先,采用 CFD 和正交实验方法定性研究了叶片数量、叶片长度和叶片安装角度对分级性能的影响。得出的结论是,叶片安装角度对分类性能的影响最大,而叶片数量的影响最小。随后,四种机器学习算法被用于建立切割尺寸预测模型,经过比较,最终选择了随机森林回归(RFR)模型。最后,RFR 与遗传算法(GA)相结合,进行定量参数优化。遗传算法的定量分析结果表明,在 29 个刀片、刀片长度为 232.8 mm、刀片安装角度为 36.8° 的情况下,切割尺寸减小到 47.6 μm,分类锋利指数提高到 0.62。与正交实验的最优解相比,GA 方案的切割尺寸减小了 9.33%,分类锋利指数提高了 9.68%。这验证了所提方法的可行性。
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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来源期刊
Agriculture
Agriculture Agricultural and Biological Sciences-Horticulture
CiteScore
1.90
自引率
0.00%
发文量
4
审稿时长
11 weeks
期刊介绍: The Agriculture (Poľnohospodárstvo) is a peer-reviewed international journal that publishes mainly original research papers. The journal examines various aspects of research and is devoted to the publication of papers dealing with the following subjects: plant nutrition, protection, breeding, genetics and biotechnology, quality of plant products, grassland, mountain agriculture and environment, soil science and conservation, mechanization and economics of plant production and other spheres of plant science. Journal is published 4 times per year.
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