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Microwave assisted extraction of essential oil from the leaves of Palmarosa: Multi-response optimization and predictive modelling

机译:微波辅助提取棕榈叶中的香精油:多响应优化和预测建模

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摘要

Cymbopogon martinii (Palmarosa), an essential oil bearing industrial grass of India, is highly valued by cosmetics and perfumery industries for its rose like sweet odor from its inflorescences and leaves. Using microwave radiation, essential oil from the leaves of palmarosa was extracted for maximization of yield of oil, yield of geraniol and zone of inhibition (ZOI) as responses. For this purpose, various process parameters viz. solid loading, water volume, microwave power and extraction time were studied in detail and optimized using the Taguchi method and grey relational analysis. The optimized extraction conditions were obtained at, solid loading of 35 g, water volume of 300 mL, microwave power of 850W and extraction time of 20 min. Under optimized conditions, 2.4400% (w/w) yield of essential oil, 2.1700% (w/w) yield of geraniol and 20 mm ZOI were obtained. Artificial neural network (ANN) was used for the prediction of the results by studying different algorithms, transfer functions and numbers of neurons. A better prediction (overall R-2 = 0.9997; mean squared error = 0.0117) of the experimental data was observed using feed forward back propagation algorithm, log sigmoid transfer function as hidden layer and 4-7-3 topology. (C) 2016 Elsevier B.V. All rights reserved.
机译:Cymbopogon martinii(Palmarosa)是印度的一种含油工业草,因其玫瑰般的花序和叶子的香气而备受化妆品和香料行业的高度评价。使用微波辐射,从棕榈叶中提取香精油,以使油的产量,香叶醇的产量和抑制区(ZOI)的响应最大化。为此,各种工艺参数即。详细研究了固体含量,水量,微波功率和提取时间,并使用田口方法和灰色关联分析对它们进行了优化。在固含量35 g,水量300 mL,微波功率850W和萃取时间20分钟的条件下获得了最佳的萃取条件。在优化条件下,获得了2.4400%(w / w)的香精油产率,2.1700%(w / w)的香叶醇产率和20 mm ZOI。通过研究不同的算法,传递函数和神经元数量,使用人工神经网络(ANN)来预测结果。使用前馈传播算法,对数乙状结肠传递函数作为隐藏层和4-7-3拓扑,观察到了更好的实验数据预测(总体R-2 = 0.9997;均方误差= 0.0117)。 (C)2016 Elsevier B.V.保留所有权利。

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