茴香籽茴香酚超声提取工艺的人工神经网络建模与优化

Q4 Chemical Engineering
H. Moradi, H. Bahmanyar, H. Azizpour, Nariman Rezamandi, Seyed Mohsen Mirdehghan Ashkezari
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引用次数: 1

摘要

药用植物精油的提取因其在不同行业的广泛应用而受到研究人员的关注。本研究采用超声波法提取茴香籽中的有效成分茴香脑。研究了提取时间(20、40、60 min)、功率(80、240、400 w)和固体粒径(0.3、1、1.7 mm)对茴香脑提取率的影响。实验设计采用box-Behnken设计方法,减少实验数量。提出了一个二阶多项式来预测自变量和因变量之间的关系。用实验数据训练人工神经网络,为系统提供另一种模型。当使用Levenberg-Marquardt反向传播算法、Logsig和Tansig传递函数用于隐藏层和输出层以及隐藏层中10个神经元的数量时,获得了最佳结果。ANN模型的决定系数、误差平方和、均方根误差和绝对平均偏差分别为0.9933、0.0199、0.0059和2.1944,DOE模型的决定系数为0.9851、0.0425、0.0059和2.1944。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and Optimization of Anethole Ultrasound-Assisted Extraction from Fennel Seeds using Artificial Neural Network
Extraction of essential oils from medicinal plants has received researcher’s attention as it has a wide variety of applications in different industries. In this study, ultrasonic method has been used to facilitate the extraction of active ingredient anethole from fennel seeds. Effect of different parameters like extraction time (20, 40, and 60 min), power (80, 240, and 400 Watts) and solid particle size (0.3, 1, and 1.7 mm) on the anethole extraction yield have been studied. The box-Behnken design method has been used for the design of experiments to reduce the number of experiments. A second-degree polynomial was proposed to predict the relationship between independent variables and the dependent variable. An artificial neural network was trained with experimental data to provide another model for the system. Optimal results achieved when using the Levenberg-Marquardt back-propagation algorithm, Logsig, and Tansig transfer functions for hidden and output layers and the number of 10 neurons in the hidden layer. Coefficient of determination, sum of squared errors, root of mean square error, and absolute average deviation were found to be 0.9933, 0.0199, 0.0059, and 2.1944 for the ANN model and 0.9851, 0.0425, 0.0059 and 2.1944 for the design of experiment (DOE) model, respectively.
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来源期刊
CiteScore
1.20
自引率
0.00%
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审稿时长
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