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SOIL PROPERTIES PREDICTION FOR REAL-TIME SOIL SENSOR BASED ON NEURAL NETWORK

机译:基于神经网络的实时土传感器土壤性能预测

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Real-time soil sensor (RTSS) was built and tested, making use of a near-infrared spectrophotometer, which offered a convenient and quick method for in-situ soil organic matter (SOM), total nitrogen (TN), pH and moisture content (MC) measurement. The sensor could collect a spectrum absorbance of soil (i.e. 500-1650nm with 7nm interval). Neural network was used for making prediction model for each soil component. The training and testing of neural network was based on 1300 dataset was taken by the RTSS from 7 location of Japan where included paddy and upland crop field. Input variables represent spectrum absorbance of the points of interest, while the output variables represent SOM, TN, pH and MC data of the points of interest, which was analyzed in the laboratory. After the neural network has been successfully trained, its performance was tested on a separate testing set. The result of MC, pH, SOM and TN prediction indicated that the NN model validated coefficient of determination of R{sup}2=0.91, 0.75, 0.95 and 0.96, respectively.
机译:实时土壤传感器(RTSS)中的构建和测试,利用近红外分光光度计,其提供了一个方便的和快速的方法用于原位土壤有机质(SOM),总氮(TN),pH值和水分含量的(MC)的测量。该传感器可以收集土壤的光谱吸光度(即500-1650nm具有7nm的间隔)。用于制作预测模型为每个土壤组分神经网络。神经网络的训练和测试基于1300的数据集是由日本7的位置,其中包括水田和旱地作物田间采取RTSS。输入变量表示的兴趣点的光谱吸光度,而输出变量代表SOM,TN,pH和兴趣点,这是在实验室中分析的MC数据。神经网络已经成功地训练后,其性能在单独的测试组的测试。 MC,pH值,SOM和TN预测的结果表明,神经网络模型分别为2 = 0.91,0.75,0.95和0.96,验证判定环R {} SUP的系数。

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