基于综合学习算法的生物炭产量和比表面积预测

C Pub Date : 2024-01-12 DOI:10.3390/c10010010
Xiaohu Zhou, Xiaochen Liu, Linlin Sun, Xinyu Jia, Fei Tian, Yueqin Liu, Zhansheng Wu
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引用次数: 0

摘要

生物炭是一种通过热解获得的生物材料,具有高孔隙率和高比表面积(SSA),被广泛应用于多个领域。生物炭的产量对生产成本和利用效率有重要影响,而比表面积则在吸附、催化和去除污染物方面起着关键作用。制备具有更好 SSA 的生物炭材料是目前该研究领域的前沿之一。然而,传统方法费时费力,因此本文开发了一种机器学习模型,通过交叉验证和超参数调整,高效地预测和研究生物炭的工程性质。本文使用了 622 个数据样本来预测生物炭的产量和 SSA,并选择了在性能方面表现出色(产量相关系数 R2 = 0.79,SSA 相关系数 R2 = 0.92)的 eXtreme Gradient Boosting (XGBoost) 作为模型,并使用 Shapley Additive Explanation 对其进行了分析。利用皮尔逊相关系数矩阵揭示了输入参数与生物炭产量和 SSA 之间的相关性。结果表明,影响生物炭产量的重要特征是温度和生物质原料,而影响 SSA 的重要特征是灰分和停留时间。所开发的 XGBoost 模型为预测生物炭产量和 SSA 与生物炭特征输入参数之间的关系提供了新的应用方案和思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Biochar Yield and Specific Surface Area Based on Integrated Learning Algorithm
Biochar is a biomaterial obtained by pyrolysis with high porosity and high specific surface area (SSA), which is widely used in several fields. The yield of biochar has an important effect on production cost and utilization efficiency, while SSA plays a key role in adsorption, catalysis, and pollutant removal. The preparation of biochar materials with better SSA is currently one of the frontiers in this research field. However, traditional methods are time consuming and laborious, so this paper developed a machine learning model to predict and study the properties of biochar efficiently for engineering through cross-validation and hyper parameter tuning. This paper used 622 data samples to predict the yield and SSA of biochar and selected eXtreme Gradient Boosting (XGBoost) as the model due to its excellent performance in terms of performance (yield correlation coefficient R2 = 0.79 and SSA correlation coefficient R2 = 0.92) and analyzed it using Shapley Additive Explanation. Using the Pearson correlation coefficient matrix revealed the correlations between the input parameters and the biochar yield and SSA. Results showed the important features affecting biochar yield were temperature and biomass feedstock, while the important features affecting SSA were ash and retention time. The XGBoost model developed provides new application scenarios and ideas for predicting biochar yield and SSA in response to the characteristic input parameters of biochar.
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