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Use of neural networks to discriminate between control leaves of wheat or those deficient in nitrogen, phosphorus, potassium, and calcium using spectral data

机译:使用神经网络使用光谱数据区分小麦的对照叶片或氮,磷,钾和钙缺乏的对照叶片

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Rapid identification of deficiencies in major elements using spectral characteristics would be a useful tool in precision farming and in other nutrient intensive agricultural production systems such as those proposed for long term space missions. A Multilayer Perceptron (MLP) neural network and backpropagation algorithm was used to discriminate between control leaves of wheat (Triticum aestivum L.) and those deficient in nitrogen (N), phosphorus (P), potassium (K), and calcium (Ca) using hyperspectral data. The network consisted of three layers (input, hidden, and output) with spectral reflectance of the leaves in wavelengths 401 nm to 770 nm as the input layer and the quantified nutrient concentrations of each element as the output layer. Based upon the values of actual nutrient concentrations (ppm), plants were classified as either deficient or normal. Wheat plants were grown for /spl sim/100 d under both hydroponic conditions in the greenhouse and semi-hydroponic conditions in a growth chamber using Hoagland's complete nutrient solution with selected elements removed to induce specific nutrient deficiencies. Control plants received complete nutrient solutions. The MLP model was trained and tested successfully within 1000 epochs as the MSE of the sample training curve approached zero. The back propagation algorithm performed well with the following accuracies for the classification model: N 90.9%, P 100%, K 90%, and Ca 100%. Using the regression model, the following accuracies were obtained: N 93.0%, P 87.2%, K 91.9%, and Ca 97.4%. This affirms the potential of using spectral data coupled with either a classification or regression neural network models to identify quickly leaves deficient in these four major elements so that remedial applications of those nutrients can be made before the crop is substantially impacted.
机译:利用光谱特性快速识别主要元素中的缺陷,将在精密农业和其他营养密集型农业生产系统(如为长期太空飞行而提出的系统)中有用。使用多层感知器(MLP)神经网络和反向传播算法来区分小麦(Triticum aestivum L.)的控制叶和氮(N),磷(P),钾(K)和钙(Ca)不足的那些使用高光谱数据。该网络由三层(输入,隐藏和输出)组成,叶子在401 nm至770 nm波长处的光谱反射率作为输入层,每个元素的定量营养物浓度作为输出层。根据实际营养物浓度(ppm)的值,将植物分类为缺乏或正常。使用Hoagland的完整营养液并去除选定的元素以引起特定的营养缺乏,在温室的水培条件和半水培条件下,将小麦植​​株在温室中的水培条件下/ spl sim / 100 d生长。对照植物接受了完整的营养液。当样本训练曲线的MSE接近零时,MLP模型已在1000个时期内成功训练和测试。反向传播算法在分类模型的以下精度方面表现良好:N 90.9%,P 100%,K 90%和Ca 100%。使用回归模型,获得以下准确度:N 93.0%,P 87.2%,K 91.9%和Ca 97.4%。这肯定了使用光谱数据结合分类或回归神经网络模型来快速识别这四个主要元素不足的叶片的潜力,从而可以在作物受到重大影响之前对这些养分进行补救。

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