基于叶片反射率的人工神经网络水稻氮素估算

Whina Ayu Lestari, Y. Herdiyeni, L. Prasetyo, W. Hasbi, K. Arai, H. Okumura
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引用次数: 8

摘要

氮是植物需要量巨大的营养物质之一。施肥前需对植株的氮素有效性进行估算,以确定适宜的施氮量。本研究利用人工神经网络(ANN)技术,基于叶片反射率估算水稻氮素。本研究随机选取不同环境条件下的45个叶片样本。叶片反射率用手持式光谱辐射计测定,实际氮含量用凯氏定氮法测定。采用可见光波段(400 ~ 700 nm波长区域)的光谱反射率数据和实际N含量作为ANN模型构建的输入和目标数据。采用k -fold交叉验证(k=3)方法选择最佳模型并衡量模型的整体性能。结果表明,含有17个隐层神经元的神经网络模型可以较好地估计N。最小均方根误差(RMSE)为0.23,最高预测精度为93%。该研究有望帮助农民预测水稻的氮含量,以优化氮肥的施用。
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Nitrogen estimation of paddy based on leaf reflectance using Artificial Neural Network
Nitrogen (N) is one of nutrient required by plant in huge amounts. N availability of plant is needed to be estimated before applying fertilizers to determine proper N application rate. The purpose of this study is to estimate N of paddy (Oryza sativa, sp.) based on leaf reflectance using Artificial Neural Network (ANN). In this study, 45 leaf samples were randomly selected under various environmental condition. Leaf reflectance was measured by handheld spectroradiometer while actual leaf N content was determined by Kjeldahl method. Spectral reflectance data in visible band (400–700 nm wavelength region) and actual N content were used as input and target data in ANN model building. K-fold cross-validation (k=3) method was applied to select the best model and measure the overall performance of model. Results indicated that ANN model with 17 neurons of hidden layer in relatively could estimate N properly. It was shown by the lowest root mean square error (RMSE) of 0.23 and the highest prediction accuracy of 93%. This study promises to help farmers predicting N content of paddy for optimal N fertilizer application.
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