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THE RESEARCH OF PADDY RICE MOISTURE LOSSLESS DETECTION BASED ON L-M BP NEURAL NETWORK

机译:基于L-M BP神经网络的稻米水分流失检测研究

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The method of the quantitative analysis on the paddy rice moisture condition is studied, which is based on the spectral reflectivity of the leaf crest layer. Several subsections are carried on the entire spectrum curve by the equidistance, The sensitive characteristic wave-length is selected based on the table of molecular spectrum sensitive wave band, obtains the characteristic spectral reflection index value to take as the characteristic value. The convergence rate of the BP neural network is slow, so the L-M algorithm is introduced to carry on the renewal of the neural network weights. The paddy rice water moisture quantitative analysis forecast model is established by making use of the fast study function of the L-M algorithm neural network. The forecasting results indicate that the highest prediction error of the paddy rice water content is 6.72% and the average error rate is 4.23%. The prediction effect is better than the traditional BP network arithmetic, and it can be used in the lossless inspection of paddy rice moisture.
机译:基于叶冠层的光谱反射率,研究了水稻水分状况的定量分析方法。等距离地在整个光谱曲线上进行几个小节,根据分子光谱敏感波段表选择敏感特征波长,得到特征光谱反射指数值作为特征值。 BP神经网络的收敛速度慢,因此引入L-M算法进行神经网络权重的更新。利用L-M算法神经网络的快速学习功能,建立了水稻水水分定量分析预测模型。预测结果表明,水稻含水量的最高预测误差为6.72%,平均误差率为4.23%。预测效果优于传统的BP网络算法,可用于水稻水分的无损检测。

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