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使用人工神经网络预测苹果渣酶解的最佳条件。

Using an artificial neural network to predict the optimal conditions for enzymatic hydrolysis of apple pomace.

作者信息

Gama Repson, Van Dyk J Susan, Burton Mike H, Pletschke Brett I

机构信息

Department of Biochemistry and Microbiology, Rhodes University, PO Box 94, Grahamstown, 6140, South Africa.

Forest Products Biotechnology Group, University of British Columbia, 2424 Main Mall, Vancouver, BC, V6T 1Z4, Canada.

出版信息

3 Biotech. 2017 Jun;7(2):138. doi: 10.1007/s13205-017-0754-1. Epub 2017 Jun 8.

Abstract

The enzymatic degradation of lignocellulosic biomass such as apple pomace is a complex process influenced by a number of hydrolysis conditions. Predicting optimal conditions, including enzyme and substrate concentration, temperature and pH can improve conversion efficiency. In this study, the production of sugar monomers from apple pomace using commercial enzyme preparations, Celluclast 1.5L, Viscozyme L and Novozyme 188 was investigated. A limited number of experiments were carried out and then analysed using an artificial neural network (ANN) to model the enzymatic hydrolysis process. The ANN was used to simulate the enzymatic hydrolysis process for a range of input variables and the optimal conditions were successfully selected as was indicated by the R value of 0.99 and a small MSE value. The inputs for the ANN were substrate loading, enzyme loading, temperature, initial pH and a combination of these parameters, while release profiles of glucose and reducing sugars were the outputs. Enzyme loadings of 0.5 and 0.2 mg/g substrate and a substrate loading of 30% were optimal for glucose and reducing sugar release from apple pomace, respectively, resulting in concentrations of 6.5 g/L glucose and 28.9 g/L reducing sugars. Apple pomace hydrolysis can be successfully carried out based on the predicted optimal conditions from the ANN.

摘要

木质纤维素生物质(如苹果渣)的酶促降解是一个受多种水解条件影响的复杂过程。预测包括酶和底物浓度、温度及pH值在内的最佳条件可提高转化效率。在本研究中,使用商业酶制剂Celluclast 1.5L、Viscozyme L和Novozyme 188从苹果渣中生产糖单体的情况进行了研究。开展了有限数量的实验,然后使用人工神经网络(ANN)进行分析,以模拟酶促水解过程。ANN用于模拟一系列输入变量的酶促水解过程,并且如0.99的R值和较小的均方误差值所示,成功选择了最佳条件。ANN的输入为底物负载量、酶负载量、温度、初始pH值以及这些参数的组合,而葡萄糖和还原糖的释放曲线则为输出。对于从苹果渣中释放葡萄糖和还原糖而言,酶负载量分别为0.5和0.2 mg/g底物以及底物负载量为30%是最佳的,分别产生6.5 g/L葡萄糖和28.9 g/L还原糖的浓度。基于ANN预测的最佳条件,苹果渣水解能够成功进行。

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