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The Prediction of Rice Leaf 's Nitrogen Content based on Leaf Spectrum on the Heading Stage

机译:基于抽穗期叶片光谱的稻叶氮含量预测。

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摘要

The change of crops' nitrogen content can cause the surface of crop leaf and the physiological characteristics of the internal organization to change, thus can cause the spectrum reflection characteristic of the crop leaf to change. In this paper, the amount of fertilizer was controlled, and nitrogen-containing samples of the rice cultivation experiment was conducted to study the relevant relations of the reflection spectrum of the rice leaf and the nitrogen content of the rice leaf in the earing period. BP network and LM neural network, Bayesian neural network are used to set up prediction models of rice leaf's nitrogen content, and a comparative analysis of the network training situation and the predicted results are carried on. The results show that LM neural network converges faster than BP neural network, and convergence precision of Bayesian neural network is higher than BP neural network's. In terms of prediction accuracy, LM neural network is the best.
机译:作物氮含量的变化会导致作物叶片的表面和内部组织的生理特性发生变化,从而导致作物叶片的光谱反射特性发生变化。本文控制了肥料的用量,并进行了水稻栽培试验中的含氮样品,研究了穗期水稻叶片的反射光谱与叶片中氮含量的相关关系。利用BP网络,LM神经网络,贝叶斯神经网络建立了水稻叶片氮素含量的预测模型,并对网络训练情况和预测结果进行了比较分析。结果表明,LM神经网络的收敛速度快于BP神经网络,贝叶斯神经网络的收敛精度高于BP神经网络。就预测准确性而言,LM神经网络是最好的。

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