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Response surface methodology and artificial neural network approach for the optimization of ultrasound-assisted extraction of polyphenols from garlic

机译:响应面方法和人工神经网络方法,用于优化大蒜多酚萃取多酚的优化

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摘要

This paper aimed to establish the optimal conditions for ultrasound-assisted extraction of polyphenols from domestic garlic (Allium sativum L.) using response surface methodology (RSM) and artificial neural network (ANN) approach. A 4-factor-3-level central composite design was used to optimize ultrasound-assisted extraction (UAE) to obtain a maximum yield of target responses. Maximum values of the two output parameters: 19.498 mg GAE/g fresh weight of sample total phenolic content and 1.422 mg RUT/g fresh weight of sample total flavonoid content were obtained under optimum extraction conditions: 13.50 min X-1, 59.00 degrees C X-2, 71.00% X-3 and 20.00 mL/g X-4. Root mean square error for training, validation, and testing were 0.0209, 3.6819 and 1.8341, respectively. The correlation coefficient between experimentally obtained total phenolic content and total flavonoid content and values predicted by ANN were 0.9998 for training, 0.9733 for validation, and 0.9821 for testing, indicating the good predictive ability of the model. The ANN model had a higher prediction efficiency than the RSM model. Hence, RSM can demonstrate the interaction effects of basic inherent UAE parameters on target responses, whereas ANN can reliably model the UAE process with better predictive and estimation capabilities.
机译:本文旨在利用响应面方法(RSM)和人工神经网络(ANN)方法来建立超声辅助提取多酚(Allium Sativum L.)的超声辅助提取多酚的最佳条件。使用4因素-3级中央复合设计来优化超声辅助提取(UAE)以获得最大靶响应的产率。两种输出参数的最大值:19.498mg gae / g样品总酚含量的新鲜重量和1.422mg rut / g在最佳提取条件下获得样品总异味含量的新鲜重量:13.50 min x-1,59.00℃x -2,71.00%X-3和20.00ml / g X-4。培训,验证和测试的根均方误差分别为0.0209,3.6819和1.8341。实验获得的总酚类含量和ANN预测的总黄酮含量和值的相关系数为0.9998,用于训练0.9733,测试0.9821,表明模型的良好预测能力。 ANN模型具有比RSM模型更高的预测效率。因此,RSM可以展示基本固有的UAE参数对目标响应的相互作用效应,而ANN可以通过更好的预测和估计能力来可靠地模拟UAE过程。

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