预测磷酸-过氧化氢预处理小麦秸秆效率的人工神经网络模型

IF 1.3 4区 农林科学 Q2 MATERIALS SCIENCE, PAPER & WOOD Bioresources Pub Date : 2023-11-15 DOI:10.15376/biores.19.1.288-305
Qing Wang, Jinxiang Hua, Jinguang Hu, Li Zhao, Mei Huang, Dong Tian, Yongmei Zeng, Shi-huai Deng, Fei Shen, Xinquan Zhang
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引用次数: 0

摘要

磷酸-过氧化氢(PHP)预处理是从生物质中获得富含纤维素组分的有效方法。本研究采用人工神经网络(ANN)预测了不同预处理时间(t)、温度(T)、H3PO4 浓度(Cp)和 H2O2 浓度(Ch)条件下的纤维素含量(C-C)、纤维素回收率(C-Ry)、半纤维素去除率(H-Rl)和木质素去除率(L-Rl)的 PHP 预处理效率。ANN 模型的最终优化拓扑结构为 1 个隐藏层,C-C 和 C-Ry 分别有 9 个和 10 个神经元,H-Rl 有 10 个神经元,L-Rl 有 12 个神经元。实际测试数据与预测数据相吻合,R2 值在 0.8070 到 0.9989 之间。相对重要性(RI)显示,Cp 和 Ch 是影响 PHP 预处理效率的重要因素,总 RI 值在 12% 到 62.6% 之间。但是,它们在生物质三个组分中所占的权重不同。T 的值主导了半纤维素的去除效果,其 RI 值为 78.6%,而 t 似乎不是主导 PHP 预处理效率的主要因素。本研究的结果从 ANN 建模的角度为生物质预处理的便捷开发和优化提供了启示。
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Artificial neural network modeling to predict the efficiency of phosphoric acid-hydrogen peroxide pretreatment of wheat straw
Phosphoric acid-hydrogen peroxide (PHP) pretreatment is an effective method to obtain a cellulose-enriched fraction from biomass. In this study, artificial neural network (ANN) was used to predict PHP pretreatment efficiency of cellulose content (C-C), cellulose recovery (C-Ry), hemicellulose removal (H-Rl), and lignin removal (L-Rl) under various conditions of pretreatment time (t), temperature (T), H3PO4 concentration (Cp), and H2O2 concentration (Ch). The final optimized topology structure of the ANN models had 1 hidden layers with 9 neurons for C-C and 10 neurons for C-Ry, 10 neurons for H-Rl, and 12 neurons for L-Rl. The actual testing data fit the predicted data with R2 values ranging from 0.8070 to 0.9989. The relative importance (RI) revealed that Cp and Ch were significant factors influencing the efficiency of PHP pretreatment with total RI values ranging from 12% to 62.6%. However, their weights for the three components of biomass were different. The value of T dominated hemicellulose removal effectiveness with an RI value of 78.6%, while t did not seem to be a main factor dominating PHP pretreatment efficiency. The results of this study provide insights into the convenient development and optimization of biomass pretreatment from ANN modeling perspectives.
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来源期刊
Bioresources
Bioresources 工程技术-材料科学:纸与木材
CiteScore
2.90
自引率
13.30%
发文量
397
审稿时长
2.3 months
期刊介绍: The purpose of BioResources is to promote scientific discourse and to foster scientific developments related to sustainable manufacture involving lignocellulosic or woody biomass resources, including wood and agricultural residues. BioResources will focus on advances in science and technology. Emphasis will be placed on bioproducts, bioenergy, papermaking technology, wood products, new manufacturing materials, composite structures, and chemicals derived from lignocellulosic biomass.
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