Predicting xylose yield from prehydrolysis of hardwoods: A machine learning approach

IF 2.5 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Edward Wang, Riley Ballachay, Genpei Cai, Yankai Cao, Heather L. Trajano
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引用次数: 2

Abstract

Hemicelluloses are amorphous polymers of sugar molecules that make up a major fraction of lignocellulosic biomasses. They have applications in the bioenergy, textile, mining, cosmetic, and pharmaceutical industries. Industrial use of hemicellulose often requires that the polymer be hydrolyzed into constituent oligomers and monomers. Traditional models of hemicellulose degradation are kinetic, and usually only appropriate for limited operating regimes and specific species. The study of hemicellulose hydrolysis has yielded substantial data in the literature, enabling a diverse data set to be collected for general and widely applicable machine learning models. In this paper, a dataset containing 1955 experimental data points on batch hemicellulose hydrolysis of hardwood was collected from 71 published papers dated from 1985 to 2019. Three machine learning models (ridge regression, support vector regression and artificial neural networks) are assessed on their ability to predict xylose yield and compared to a kinetic model. Although the performance of ridge regression was unsatisfactory, both support vector regression and artificial neural networks outperformed the simple kinetic model. The artificial neural network outperformed support vector regression, reducing the mean absolute error in predicting soluble xylose yield of test data to 6.18%. The results suggest that machine learning models trained on historical data may be used to supplement experimental data, reducing the number of experiments needed.
预测硬木预水解木糖产量:一种机器学习方法
半纤维素是糖分子的无定形聚合物,构成木质纤维素生物质的主要部分。它们在生物能源、纺织、采矿、化妆品和制药行业都有应用。半纤维素的工业应用通常需要将聚合物水解成组成低聚物和单体。半纤维素降解的传统模型是动力学的,通常只适用于有限的操作制度和特定物种。半纤维素水解的研究在文献中产生了大量数据,使得能够为通用和广泛应用的机器学习模型收集各种数据集。本文从1985年至2019年发表的71篇论文中收集了一个包含1955个硬木分批半纤维素水解实验数据点的数据集。评估了三种机器学习模型(岭回归、支持向量回归和人工神经网络)预测木糖产量的能力,并将其与动力学模型进行了比较。尽管岭回归的性能不令人满意,但支持向量回归和人工神经网络都优于简单的动力学模型。人工神经网络的性能优于支持向量回归,将预测测试数据可溶性木糖产量的平均绝对误差降低到6.18%。结果表明,根据历史数据训练的机器学习模型可以用于补充实验数据,减少了所需的实验次数。
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
CiteScore
3.50
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0.00%
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审稿时长
13 weeks
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