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A ground-based real-time remote sensing system for diagnosing nitrogen status in cotton plants.

机译:一种基于地面的实时遥感系统,用于诊断棉株中的氮状况。

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摘要

A ground-based real-time remote sensing system has been developed for diagnosing nitrogen status in cotton plants. Study on spectral reflectance characteristics of cotton leaves was conducted for three consecutive years. Spectral reflectance from cotton canopies with different nitrogen treatments was measured using a spectrometer. It was found that useful spectral features could be extracted from the spectral reflectance spectra in the blue, green, red, and near infrared wavebands. A mathematical model was developed to calculate the spectral index of the measured plants. The spectral index showed strong correlation with nitrogen application rate, petiole nitrate content, and yield at pinhead square. Based on the relationship between the spectral reflectance characteristics and the nitrogen status in the cotton plants, a multispectral plant health sensor was developed and field tested. The sensor has four wavebands. Each output of the sensor represents the intensity measurement of spectral reflectance in that waveband. To avoid measurement error that may be induced by variations in spectral characteristic under natural illumination of the plant canopy a modulated light source was used to illuminate the canopy. The sensor only measures the spectral reflectance of the canopy resulting from the modulated light. Field test results demonstrated that the plant health index, calculated using the data from the plant health sensor, strongly correlated with the nitrogen application rate and the yield (R2 = 0.99 and 0.81, respectively). An artificial neural network (ANN) was trained using the spectral reflectance data. The ANN models had three layers, five inputs, and two outputs. Inputs were spectral reflectance measurements in blue, green, red, and near infrared wavebands and the stage of plant development. Nitrogen-deficiency and non-nitrogen-deficiency were the two outputs. ANN models were tested and results showed that the trained ANNs could diagnose the nitrogen status in cotton plants with an accuracy rate greater than 95%. The ground-based remote sensing system with ANNs has shown great potential for real-time variable-rate control of nitrogen in cotton.
机译:已经开发了一种基于地面的实时遥感系统,用于诊断棉株中的氮状况。连续三年对棉花叶片的光谱反射特性进行了研究。使用分光计测量了经过不同氮处理的棉冠的光谱反射率。发现可以从蓝色,绿色,红色和近红外波段的光谱反射光谱中提取有用的光谱特征。建立了数学模型以计算被测植物的光谱指数。光谱指数与施氮量,叶柄硝酸盐含量和顶头方型产量密切相关。基于棉株光谱反射特性与氮素状态之间的关系,开发了多光谱植物健康传感器并进行了现场测试。传感器具有四个波段。传感器的每个输出代表该波段中光谱反射率的强度测量。为了避免在植物冠层的自然照明下光谱特性变化可能引起的测量误差,使用了调制光源来照亮冠层。传感器仅测量由调制光产生的树冠的光谱反射率。现场测试结果表明,使用植物健康传感器的数据计算出的植物健康指数与施氮量和产量之间密切相关(分别为R2 = 0.99和0.81)。使用光谱反射率数据训练了人工神经网络(ANN)。 ANN模型具有三层,五个输入和两个输出。输入是在蓝色,绿色,红色和近红外波段的光谱反射率测量以及植物发育的阶段。氮缺乏和非氮缺乏是两个输出。对人工神经网络模型进行了测试,结果表明,训练有素的人工神经网络可以诊断棉株中的氮状况,准确率大于95%。具有人工神经网络的地面遥感系统显示了实时可变速率控制棉花中氮的巨大潜力。

著录项

  • 作者

    Sui, Ruixiu.;

  • 作者单位

    The University of Tennessee.;

  • 授予单位 The University of Tennessee.;
  • 学科 Engineering Agricultural.Remote Sensing.
  • 学位 Ph.D.
  • 年度 1999
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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