Nie Ling, Ma Weiguo, Xie Xiangdong
School of Computer Science, Yangtze University, Jingzhou, 434000, Hubei, China.
School of Mechanical Engineering, Yangtze University, Jingzhou, 434000, Hubei, China.
Sci Rep. 2024 Aug 6;14(1):18272. doi: 10.1038/s41598-024-69046-7.
The study of the dominant factors influencing moisture content is essential for investigating vacuum filtration mechanisms. In view of the present situation where there is insufficient experimental data and the dominant factors influencing the moisture content of a filter cake have not been identified, in this study a vacuum filtration apparatus was designed and constructed. Quartz sand particles were used as the filtration material. 300 datasets of moisture contents of a filter cake were obtained under different experimental conditions. Multiple Linear Regression, artificial neural network, decision tree, random forest, and extreme gradient boosting were used to establish a prediction model for moisture content during vacuum screening. By comprehensively analyzing the feature importance rankings and the effects of positive and negative correlations, the dominant factors influencing the moisture content of the filter cake during vacuum screening were the particle ratio, screen mesh, and airflow rate. This finding not only provides a scientific basis for the optimization of vacuum screening technology but also points the way for improving screening efficiency in practical applications. It is of significant importance for deepening the understanding of the vacuum screening mechanism and promoting its extensive application.
研究影响含水量的主要因素对于探究真空过滤机制至关重要。鉴于目前实验数据不足且尚未确定影响滤饼含水量的主要因素,本研究设计并构建了一套真空过滤装置。采用石英砂颗粒作为过滤材料。在不同实验条件下获得了300组滤饼含水量数据集。运用多元线性回归、人工神经网络、决策树、随机森林和极端梯度提升等方法建立了真空筛选过程中含水量的预测模型。通过综合分析特征重要性排名以及正负相关性的影响,发现真空筛选过程中影响滤饼含水量的主要因素为颗粒比、筛网目数和气流速度。这一发现不仅为真空筛选技术的优化提供了科学依据,也为实际应用中提高筛选效率指明了方向。对于深化对真空筛选机制的理解并推动其广泛应用具有重要意义。