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Integrating spectral indices with environmental parameters for estimating heavy metal concentrations in rice using a dynamic fuzzy neural-network model

机译:使用动态模糊神经网络模型将光谱指数与环境参数相结合以估算水稻中的重金属浓度

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摘要

A generalized dynamic fuzzy neural network (GDFNN) was created to estimate heavy metal concentrations in rice by integrating spectral indices and environmental parameters. Hyperspectral data, environmental parameters, and heavy metal content were collected from field experiments with different levels of heavy metal pollution (Cu and Cd). Input variables used in the GDFNN model were derived from 10 variables acquired by gray relational analysis. The assessment models for Cd and Cu concentration employed five and six input variables, respectively. The results showed that the GDFNN for estimating Cu and Cd concentrations in rice performed well at prediction with a compact network structure using the training, validation, and testing sets (for Cu, fuzzy rules = 9, R2 greater than 0.75, and RMSE less than 2.5; for Cd, fuzzy rules=9, R2 greater than 0.75, and RMSE less than 1.0). The final GDFNN model was then compared with a back-propagation (BP) neural network model, adaptive-network-based fuzzy interference systems (ANFIS), and a regression model. The accuracies of GDFNN model prediction were usually slightly better than those of the other three models. This demonstrates that the GDFNN model is more suitable for predicting heavy metal concentrations in rice.
机译:创建了一个通用动态模糊神经网络(GDFNN),通过综合光谱指数和环境参数来估算水稻中的重金属浓度。高光谱数据,环境参数和重金属含量是从具有不同重金属污染水平(铜和镉)的野外实验中收集的。 GDFNN模型中使用的输入变量来自通过灰色关联分析获得的10个变量。镉和铜浓度的评估模型分别采用了五个和六个输入变量。结果表明,使用训练,验证和测试集(对于Cu,模糊规则= 9,R2大于0.75,RMSE小于1),通过紧凑的网络结构,用于估计水稻中Cu和Cd浓度的GDFNN表现良好。 2.5;对于Cd,模糊规则= 9,R2大于0.75,RMSE小于1.0)。然后将最终的GDFNN模型与反向传播(BP)神经网络模型,基于自适应网络的模糊干扰系统(ANFIS)和回归模型进行比较。 GDFNN模型预测的准确性通常略优于其他三个模型。这表明GDFNN模型更适合于预测水稻中的重金属浓度。

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