首页> 外文期刊>International Journal of Agricultural and Environmental Information Systems >Discriminating Biomass and Nitrogen Status in Wheat Crop by Spectral Reflectance Using Artificial Neural Networks
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Discriminating Biomass and Nitrogen Status in Wheat Crop by Spectral Reflectance Using Artificial Neural Networks

机译:基于光谱反射率的人工神经网络识别小麦作物的生物量和氮素状况

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摘要

Precision Agriculture has the goal of reducing cost which is difficult when it is related to fertilizers application. Nitrogen (N) is the nutrient absorbed in greater amounts by crops and the N fertilizers application present significant costs. The use of spectral reflectance sensors has been studied to identify the nutritional status of crops and prescribe varying N rates. This study aimed to contribute to the determination of a model to discriminating biomass and nitrogen status in wheat through two sensors. GreenSeeker and Crop Circle, using the Resilient Propagation and Backpropagation Artificial Neural Networks algorithms. As a result was detected a strong correlation to the sensor readings with the aboveground biomass production and N extraction by plants. For both algorithms it was established a satisfactory model for estimating wheat dry biomass production. The best Backpropagation and Resilient Propagation models defined showed better performance for the GreenSeeker and Crop Circle sensors, respectively.
机译:精准农业的目标是降低成本,而这与肥料的施用有关。氮是作物吸收的大量养分,氮肥的使用成本很高。已经研究了使用光谱反射传感器来识别农作物的营养状况并规定不同的氮含量。这项研究旨在通过两个传感器,为区分小麦生物量和氮状况的模型的确定做出贡献。使用弹性传播和反向传播人工神经网络算法的GreenSeeker和Crop Circle。结果,检测到了与传感器读数与地上生物量生产和植物氮素吸收的强烈相关性。对于这两种算法,都建立了一个令人满意的模型来估算小麦干生物量的产量。定义的最佳反向传播和弹性传播模型分别对GreenSeeker和Crop Circle传感器表现出更好的性能。

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