首页> 外文会议>Proceedings of the 2nd China-Japan graduate student forum : Life, environment and energy >Study on Intelligent Diagnosis Method for Corn Nitrogen Status Estimation Based on Hyperspectral Data
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Study on Intelligent Diagnosis Method for Corn Nitrogen Status Estimation Based on Hyperspectral Data

机译:基于高光谱数据的玉米氮素状况智能诊断方法研究

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Nitrogen nutrition index (NNI),a good indicator of the degree of nitrogen nutrition deficit of crop,is of special significance to precision agriculture.We develop a new method of corn nitrogen status estimation based on the three-layer dynamic structure of fuzzy neural network,which firstly acquires the sensitive spectral parameters related to leaf N content as a part of input variables by analyzing the correlation between leaf N content and canopy spectral parameters studied by the predecessors and comparing the effects of kinds of spectral parameters estimation on leaf N content.All together,influence factors (CWSI,heavy metal content (HMC) and soil pH value) as input variables of other observation data also and then NNI as output variable.The ultimate structure of network was 36-45-9 after training.The results showed that it had a high degree of fitting between the trained data and the measured data and network fitting accuracy reached 95%.Comparing to the statistical analysis methods just with sensitive spectral parameters related to leaf N content,the results got from two methods have good linearity with the measured data,but the study found that the results by statistical analysis had a big deviation with the actual data in the later filling stage,it was clearly unreasonable.This paper gets consideration to remote sensing data and other observation data affecting crop N to overcome the deviation problems of the statistical analysis.
机译:氮素营养指数(NNI)是作物氮素营养亏缺程度的良好指标,对精准农业具有特殊意义。基于模糊神经网络三层动态结构,开发了一种新的玉米氮素状况估算方法。首先,通过分析叶片氮含量与前人研究的冠层光谱参数之间的相关性,并比较各种光谱参数估计对叶片氮含量的影响,获取与叶片氮含量相关的敏感光谱参数作为输入变量的一部分。综合起来,影响因子(CWSI,重金属含量(HMC)和土壤pH值)也作为其他观测数据的输入变量,然后NNI作为输出变量。训练后网络的最终结构为36-45-9。结果表明,训练数据与实测数据之间具有较高的拟合度,网络拟合精度达到了95%。与统计分析方法相比ds只是具有与叶片N含量相关的敏感光谱参数,两种方法得到的结果与实测数据具有良好的线性关系,但研究发现,统计分析的结果与灌浆后期的实际数据有较大偏差,本文考虑了影响作物氮素的遥感数据和其他观测数据,克服了统计分析的偏差问题。

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