首页> 外文期刊>The Journal of Supercritical Fluids >Supercritical fluid extraction of Drimys angustifolia Miers: Experimental data and identification of the dynamic behavior of extraction curves using neural networks based on wavelets
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Supercritical fluid extraction of Drimys angustifolia Miers: Experimental data and identification of the dynamic behavior of extraction curves using neural networks based on wavelets

机译:基于小波的神经网络超临界流体萃取桔梗:实验数据和萃取曲线动态行为识别

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摘要

Drimys angustifolia Miers is a tree species native to and found in southern Brazil. The extract of this plant is rich with active compounds that show medicinal potential, its uses being prospected as phytotherapy. In this study, yield data from supercritical extraction of D. angustifolia Miers are provided at different pressure and temperature conditions, and for various process operation times. Additionally, with the view to allowing a scale-up process, a methodology for identifying the extraction curves using neural networks based on wavelets was proposed. This showed good prediction performance provided that a sufficient number of extraction curves are used during training. The identification method proposed is robust, fast and optimal, in the sense that the best neural network structure and respective associated weights can be determined, thus optimizing a quadratic approximation criterion. (C) 2016 Elsevier B.V. All rights reserved.
机译:Drimys angustifolia Miers是巴西南部的原生树种。这种植物的提取物富含具有药用潜力的活性化合物,其用途有望用作植物疗法。在这项研究中,提供了在不同压力和温度条件下以及在各种工艺操作时间下,从超临界提取桔梗中获得的产量数据。另外,为了允许放大处理,提出了一种使用基于小波的神经网络识别提取曲线的方法。如果在训练过程中使用了足够数量的提取曲线,则表明具有良好的预测性能。在可以确定最佳神经网络结构和各个相关权重的意义上,所提出的识别方法是鲁棒,快速和最佳的,从而优化了二次近似准则。 (C)2016 Elsevier B.V.保留所有权利。

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