Hyperspectral analysis of leaf copper accumulation in agronomic crop based on artificial neural network

Huiping Liang, Xiangnan Liu
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引用次数: 9

Abstract

Copper is one kind of trace element in soil which is necessary for the growth and development of plants. Much more copper over the needed amount of agronomic crop is harmful to crop growth and becomes pollutants in soil. At present, there are few studies concerning the quantitative impact of heavy metal contamination on crops. This research investigates an alternative approach. Red edge parameters of rice canopy will be obtained based on the first order and second order derivative spectra, and its relationship with agricultural parameters will be analyzed. It is found that there is strong correlation between red edge position and leaf chlorophyll a / leaf chlorophyll b, red edge amplitude and carotenoid, red edge peak area and the leaf area index, margin and fresh leaves quality. There is no obvious correlation between moisture and red edge parameters. BP artificial neural network method is used to study quantitatively the inherent relation between the chlorophyll content of rice and copper contents in soil. Taking red edge parameters mentioned above which have strong correlation with agricultural parameters, as well as ph value as input, copper content as output, four layers BP neural network with five inputs, one output and two hidden layers will be established. It is tested that the network fitting accuracy reaches 98% and the model has a high fitting degree, which prediction accuracy also receives 85.4%. This study is helpful to improve the ability of monitoring the heavy metal contamination of soil and environment in agricultural region.
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基于人工神经网络的农艺作物叶片铜积累高光谱分析
铜是植物生长发育所必需的一种土壤微量元素。超过作物需要量的铜对作物生长有害,并成为土壤中的污染物。目前,关于重金属污染对作物影响的定量研究较少。本研究探讨了另一种方法。利用一阶和二阶导数光谱得到水稻冠层的红边参数,并分析其与农业参数的关系。发现红边位置与叶片叶绿素a /叶片叶绿素b、红边振幅与类胡萝卜素、红边峰面积与叶面积指数、边缘与鲜叶品质有较强的相关性。湿度与红边参数之间没有明显的相关性。采用BP人工神经网络方法定量研究了水稻叶绿素含量与土壤铜含量之间的内在关系。取上述与农业参数相关性较强的红边参数,以ph值为输入,铜含量为输出,建立5输入1输出2隐含的4层BP神经网络。经测试,网络拟合精度达到98%,模型拟合程度较高,预测精度达到85.4%。该研究有助于提高农区土壤和环境重金属污染的监测能力。
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