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首页> 外文期刊>Enzyme and Microbial Technology >Optimization and modelling of enzymatic polymerization of epsilon-caprolactone to polycaprolactone using Candida Antartica Lipase B with response surface methodology and artificial neural network
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Optimization and modelling of enzymatic polymerization of epsilon-caprolactone to polycaprolactone using Candida Antartica Lipase B with response surface methodology and artificial neural network

机译:用念珠菌脂肪酶B具有响应面法和人工神经网络的念珠菌 - 己内酮酶聚合对聚己内酯酶聚合的优化与建模

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摘要

Recently enzymatic catalysts have replaced organic and organometallic catalysts in the synthesis of bio-resorbable polymers. Enzymatic polymerization is considered as an alternative to conventional polymerization as they are less toxic, environmental friendly and can operate under mild conditions. In this research, the enzymatic ring-opening polymerization (e-ROP) of e-caprolactone (e-CL) using Candida Antartica Lipase B (CALB) as catalyst to produce the Polycaprolactone, Two modelling techniques namely response surface methodology (RSM) and artificial neural network (ANN) have been used in this work. RSM is used to optimize the parameters and to develop a model of the process. ANN is used to develop the model to predict the results obtained from the experiment. The parameters involved are time, reaction temperature, mixing speed and enzyme-solvent ratio. The experimental result is Polydispersity index (PDI) of the polymer. The experimental data obtained was adequately fitted into second-order polynomial models. Simulation was done using artificial neural network model developed with Mean absolute error (MAD) value of 1.65 in comparison with MAD value of 7.4 for RSM. The Regression value (R-2) values of RSM and ANN were found to be 0.96 and 0.93 respectively. The predictive models were validated experimentally and were found to be in agreement with the experimental values.
机译:最近酶促催化剂在合成生物可再吸收性聚合物中取代了有机和有机金属催化剂。酶促聚合被认为是常规聚合的替代方案,因为它们的毒性较小,环保且可以在温和条件下运行。在该研究中,E-己内酯(E-CL)的酶开环聚合(E-ROP)使用念珠菌脂肪酶B(CALB)作为催化剂以产生聚己内酯,两个建模技术即响应表面方法(RSM)和人工神经网络(ANN)已被用于这项工作。 RSM用于优化参数并开发过程的模型。 ANN用于开发模型以预测从实验中获得的结果。所涉及的参数是时间,反应温度,混合速度和酶溶剂比。实验结果是聚合物的多分散指数(PDI)。所获得的实验数据充分配合到二阶多项式模型中。使用具有1.65的平均绝对误差(疯狂)值的人工神经网络模型进行了模拟,与RSM为7.4的疯狂值。 RSM和ANN的回归值(R-2)值分别为0.96和0.93。预测模型实验验证,并被发现与实验值一致。

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