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A Novel Intelligent System to Nitrogen Content Prediction in Plants Using Indirect Chlorophyll Measurements

机译:间接叶绿素测量的植物氮素含量预测的一种新型智能系统

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The accurate identification of the nitrogen content in plants is extremely important since it involves economic aspects and environmental impacts. Several experimental tests have been carried out to obtain characteristics and parameters associated with the health of plants and its growing. The nitrogen content identification in plants involves a lot of non-linear parameters and complexes mathematical models. This paper describes a novel approach for identification of nitrogen content thought SPAD index using artificial neural networks (ANN). The network acts as identifier of relationships among, crop varieties, fertilizer treatments, type of leaf and nitrogen content in the plants (target). So, nitrogen content can be generalized and estimated and from an input parameter set. This approach can form the basis for development of an accurate real time system to predict nitrogen content in plants.
机译:植物中氮含量的准确鉴定非常重要,因为它涉及经济方面和环境影响。已经进行了几种实验测试以获得与植物健康相关的特征和参数及其生长。植物中的氮含量鉴定涉及许多非线性参数和复合物数学模型。本文介绍了一种使用人工神经网络(ANN)鉴定氮素含量思想Spad指数的新方法。该网络充当植物(靶)中的作物品种,肥料处理,叶片和氮含量的关系中的关系的标识符。因此,可以通过输入参数集来广泛化和估计氮气含量。这种方法可以构成开发准确的实时系统以预测植物中的氮含量的基础。

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