机构地区:[1]中国计量学院生命科学学院,杭州310018 [2]浙江大学生命科学学院植物生理学与生物化学国家重点实验室,杭州310058
出 处:《浙江大学学报(农业与生命科学版)》2013年第1期50-55,共6页Journal of Zhejiang University:Agriculture and Life Sciences
基 金:浙江省重点科技创新团队--农产品安全标准与检测技术科技创新团队资助项目(2010R50028);"十二五"国家科技支撑计划资助项目(2012BAK17B03);"十一五"国家科技支撑计划:食品安全关键技术--粮油;蔬果等安全控制技术的研究资助项目(2006BAK02A18)
摘 要:通过近红外光谱技术结合模式识别技术,建立重金属Hg、Cd和Pb污染水稻叶片的判别模型,以发展快速检测重金属污染水稻的技术。结果表明:在模拟稻田重金属Hg、Cd和Pb质量分数分别在1.5、1和500mg/kg条件下水稻正常生长发育;叶片近红外光谱数据通过小波函数(daubechies 2,db2)在0~5水平预处理后分别输入反向传递神经网络(back propagation neural networks,BPNN)和径向基神经网络(radial basis function neuralnetworks,RBFNN)预测的结果表明,小波转换采用db2函数第3分解水平对光谱的预处理结合径向基人工神经网络对重金属胁迫下水稻叶片识别效果最优,对Hg、Cd和Pb污染土壤上以及正常条件下生长的水稻叶片的识别正确率分别为95.5%,81.8%,91.3%和100.0%。这为近红外光谱分析技术在重金属污染水稻的识别上提供了初步依据,并有利于保障植物环境安全。Summary There are hundreds of sources of heavy metal pollution, including the industries of coal, natural gas, paper, and mining. Toxic heavy metals, such as mercury, cadmium and lead, in air, soil, and water are global problems that are a growing threat to humanity. Rice is an important food crop in world, the rice polluted with heavy metal is seriously harmful to people' s health. There are many methods to detect the heavy metal, such as inductively coupled plasma-mass spectrometry (ICP MS), inductively coupled plasma atomic emission spectrometer (ICP AES), inductively coupled plasma optical emission spectrometry (ICP OES), atomic absorption spectrometry (AAS), X ray fluorescence spectrometry (XRF), atomic fluorescence spectrometry (AFS) and so on. Although there are many advantages in the above technologies respectively, they are time consuming, high cost and sometimes require considerable analytic skill. Nowadays, as near infrared spectroscopy (NIR) responds to molecular energy transitions associated with hydrogen bonds of organic, while inorganic salts are not expected to directly influenceNIR spectra. To our interest, several studies have described useful NIR calibrations for minerals analysis. NIR spectra with supposed NIR-transparent minerals may be due to the association of cations with organic or hydrated inorganic molecules. Thus, in order to develop the fast detective technology on heavy metal polluted rice leaves, NIR was combined with pattern recognition to discriminate the mercury, cadmium and lead in polluted rice leaves. The rice was grown in paddy field polluted by mercury, cadmium and lead, the concentration of which was 1.5, 1 and 500 mg/kg respectively. After 50 days growth, the absorbance of near infrared spectroscopy of back of flag leaf was detected with Nicolet Nexus 870 (Thermo Corporation USA) and the data was collected with the software of Omnic 7.0. The acquired spectra of leaves with different heavy metal treatments were firstly pretreated with wave
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