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Estimation of soil properties using a combination of spectral and scalar sensor data.

机译:利用光谱和标量传感器数据的组合估算土壤性质。

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摘要

Soil is a critical component of a production agriculture system and must possess favorable physical properties and fertility in order to be productive. Due to the importance of soil attributes, sophisticated methods and systems have been developed for their measurement. Furthermore, the availability of affordable global positioning systems (GPS) has extended the characterization of soil attributes to a site-specific basis. This management concept, referred to as precision agriculture, has demonstrated the high spatial variability of soil attributes and the need for field-mobilized sensors and systems for their measurement. The research reported here tests the effectiveness of an on-the-go near infrared (NIR) reflectance sensor for the measurement of a number of soil attributes. Two experiments that include data from seven different fields are used to demonstrate accuracy in predicting total carbon, total nitrogen, calcium, CEC, and moisture. Accurate predictions of pH and magnesium are also demonstrated when an improved reflectance system was used. Furthermore, the results indicate that the augmentation of NIR spectra with auxiliary sensors including electrical conductivity, temperature, and ion-selective pH electrode improved the prediction accuracy of many of the above attributes and was most effective when the calibrations span multiple fields. In addition, in order to create the calibrations, an automated method was developed to test the following approaches: multiple linear regression (MLR), multiple linear regression after principal components compression (MLRPC), partial least squares regression (PLS), and locally-weighted PLS (LWPLS). LWPLS is shown to create the most accurate calibrations in 9 of the 11 successful multi-field calibrations. Lastly, the calibrations were applied to the sensor data to create attribute maps for each of the seven fields investigated.
机译:土壤是农业生产系统的重要组成部分,必须具有良好的物理特性和肥力才能进行生产。由于土壤属性的重要性,已经开发了用于测量的先进方法和系统。此外,可负担得起的全球定位系统(GPS)的可用性将土壤属性的表征扩展到了特定地点。这种被称为精准农业的管理理念已经证明了土壤属性的高度空间变异性,并且需要现场使用的传感器和系统进行测量。此处报道的研究测试了一种持续移动的近红外(NIR)反射率传感器在测量多种土壤属性方面的有效性。包含来自七个不同领域的数据的两个实验用于证明预测总碳,总氮,钙,CEC和水分的准确性。当使用改进的反射系统时,还可以准确预测pH和镁的含量。此外,结果表明,使用辅助传感器(包括电导率,温度和离子选择性pH电极)增强NIR光谱可提高上述许多属性的预测精度,并且在跨多个领域进行校准时最有效。此外,为了创建校准,开发了一种自动方法来测试以下方法:多元线性回归(MLR),主成分压缩后的多元线性回归(MLRPC),偏最小二乘回归(PLS)和局部加权PLS(LWPLS)。在11个成功的多场校准中,有9个显示LWPLS可创建最准确的校准。最后,将校准应用于传感器数据以为所研究的七个领域中的每个领域创建属性图。

著录项

  • 作者

    Christy, Colin David.;

  • 作者单位

    Kansas State University.;

  • 授予单位 Kansas State University.;
  • 学科 Engineering Electronics and Electrical.; Agriculture Soil Science.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 126 p.
  • 总页数 126
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;土壤学;
  • 关键词

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