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Moisture determination with an artificial neural network from microwave measurements on wheat

机译:用小麦微波测量的人工神经网络测定水分测定

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An Aritificial Neural Network (ANN) was used to determine the moisture content of hard red winter wheat. The ANN was trained to recognize moisture content in the range from 10.6% to 19.2% (wet basis) from transmission coefficient measurements on samples of wheat placed between two radiating elements. The measurements were made at 8 microwave frequencies (10 to 18 GHz) on wheat samples of varying bulk densities (0.72 to 0.88 g/cm↑3) at 24 °C. The trained network predicted moisture content (%) with a mean absolute error of 0.135.
机译:ARIP认证神经网络(ANN)用于确定硬红色冬小麦的水分含量。核查核查培训,以识别含水量为10.6%至19.2%(湿基)从置于两个辐射元件之间的小麦样品上的透射系数测量。在24℃下在不同堆积密度(0.72至0.88g / cm 3)的小麦样品上在8微波频率(10至18GHz)上进行测量。训练的网络预测了湿度含量(%),其平均绝对误差为0.135。

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