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Optimization to the Phellinus experimental environment based on classification forecasting method

机译:基于分类预测方法的桑黄实验环境优化

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摘要

Phellinus is a kind of fungus and known as one of the elemental components in drugs to avoid cancer. With the purpose of finding optimized culture conditions for Phellinus production in the lab, plenty of experiments focusing on single factor were operated and large scale of experimental data was generated. In previous work, we used regression analysis and GA Gene-set based Genetic Algorithm (GA) to predict the production, but the data we used depended on experimental experience and only little part of the data was used. In this work we use the values of parameters involved in culture conditions, including inoculum size, PH value, initial liquid volume, temperature, seed age, fermentation time and rotation speed, to establish a high yield and a low yield classification model. Subsequently, a prediction model of BP neural network is established for high yield data set. GA is used to find the best culture conditions. The forecast accuracy rate more than 90% and the yield we got have a slight increase than the real yield.
机译:桑黄是一种真菌,被称为避免癌症的药物中的基本成分之一。为了在实验室中找到用于桑黄生产的最佳培养条件,进行了大量针对单因素的实验,并生成了大量实验数据。在以前的工作中,我们使用了回归分析和基于GA基因集的遗传算法(GA)来预测产量,但是我们使用的数据取决于实验经验,仅使用了很少的数据。在这项工作中,我们使用涉及培养条件的参数值,包括接种量,PH值,初始液体量,温度,种子年龄,发酵时间和转速,来建立高产量和低产量分类模型。随后,针对高产量数据集建立了BP神经网络的预测模型。 GA用于寻找最佳培养条件。预测准确率超过90%,我们得到的产量比实际产量略有增加。

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