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基于叶绿素荧光光谱分析的黄瓜霜霉病预测模型

[Cucumber downy mildew prediction model based on analysis of chlorophyll fluorescence spectrum].

作者信息

Sui Yuan-Yuan, Yu Hai-Ye, Zhang Lei, Qu Jian-Wei, Wu Hai-Wei, Luo Han

机构信息

Key Laboratory of Bionic Engineering, Ministry of Education, School of Biological and Agricultural Engineering, Jilin University, Changchun 130022, China.

出版信息

Guang Pu Xue Yu Guang Pu Fen Xi. 2011 Nov;31(11):2987-90.

Abstract

In order to achieve quick and nondestructive prediction of cucumber disease, a prediction model of greenhouse cucumber downy mildew has been established and it is based on analysis technology of laser-induced chlorophyll fluorescence spectrum. By assaying the spectrum curve of healthy leaves, leaves inoculated with bacteria for three days and six days and after feature information extraction of those three groups of spectrum data using first-order derivative spectrum preprocessing with principal components and data reduction, principal components score scatter diagram has been built, and according to accumulation contribution rate, ten principal components have been selected to replace derivative spectrum curve, and then classification and prediction has been done by support vector machine. According to the training of 105 samples from the three groups, classification and prediction of 44 samples and comparing the classification capacities of four kernel function support vector machines, the consequence is that RBF has high quality in classification and identification and the accuracy rate in classification and prediction of cucumber downy mildew reaches 97.73%.

摘要

为实现黄瓜病害的快速无损预测,基于激光诱导叶绿素荧光光谱分析技术,建立了温室黄瓜霜霉病预测模型。通过测定健康叶片、接种病菌3天和6天叶片的光谱曲线,对这三组光谱数据进行一阶导数光谱预处理结合主成分分析及数据降维特征信息提取后,构建主成分得分散点图,依据累积贡献率选取10个主成分代替导数光谱曲线,再利用支持向量机进行分类预测。通过对三组105个样本的训练、44个样本的分类预测及比较四种核函数支持向量机的分类能力,结果表明径向基核函数(RBF)在分类识别方面具有优良性能,黄瓜霜霉病分类预测准确率达到97.73%。

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