中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
Combination of Convolutional Neural Networks and Recurrent Neural Networks for predicting soil properties using Vis–NIR spectroscopy

文献类型:期刊论文

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作者Yang JC(杨杰超)1,2; Wang XL(王学雷)1; Wang RH(王瑞华)1,2; Wang HJ(王焕杰)1,2
刊名Geoderma ; Geoderma
出版日期2020 ; 2020
期号380页码:114616
关键词Vis–NIR spectroscopy Vis–NIR spectroscopy Convolutional Neural Network Recurrent Neural Network Soil properties estimation Convolutional Neural Network Recurrent Neural Network Soil properties estimation
英文摘要

Visible and Near-infrared diffuse reflectance spectroscopy (Vis–NIR) serves as a rapid and non-destructive technique to estimate various soil properties. Recently, there is a growing need for developing a more accurate and robust calibration model in large soil spectral libraries to support the implementation of effective soil quality assessments and digital soil maps at national, continental and even global scales. Traditional calibration methods, such as partial least squares regression (PLSR), support vector machines regression(SVMR), multivariate
adaptive regression splines(MARS), random forests(RF), and artificial neural networks (ANN), may not be successfully applied in large spectral libraries due to their relatively weak generation performance in large
regions. To overcome these weaknesses, we proposed a jointed Convolutional Neural Network (CNN) and
Recurrent Neural Network (RNN) architecture called CCNVR, which combines the ability of CNN to extract the local and abstract features from the raw spectrum with the advantage of RNN to learn various dependencies of sequence features. We then compared the prediction accuracy of CCNVR with other conventional methods,
namely, PLSR, SVMR, CNN, ANN, and RNN, on the selected soil properties of mineral soil samples in the Land Use/Land Cover Area Frame Survey (LUCAS) database. Of all calibration models, our proposed CCNVR achieved the best model performance with the lowest RMSE value (6.40, 0.45, 3.30, and 0.35 for OC, N, CEC, and pH, respectively) and the highest R2 (0.73, 0.70, 0.73, and 0.86 for OC, N, CEC, and pH, respectively) for the selected properties, indicating the outstanding prediction ability of our proposed model. Besides, to quantify the robustness of different calibration models, we added different levels of white noise on the original Vis–NIR spectra of the calibration set to observe how the prediction accuracy changes in the test set. The result showed that our
proposed CCNVR model has a better resistance towards noise compared to other calibration models. Finally, we explored the transferability of our proposed CCNVR model. We extended the calibration model trained on the mineral samples to the organic samples through transfer learning. The result revealed that the transfer-based CCNVR fine-tuning model had a better prediction accuracy than that of the non-transfer CCNVR model with an improvement of R2 value from 0.79 to 0.84. The result demonstrated the excellent transferability of our proposed  CCNVR model across different soil types and sample sizes.

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Visible and Near-infrared diffuse reflectance spectroscopy (Vis–NIR) serves as a rapid and non-destructive technique to estimate various soil properties. Recently, there is a growing need for developing a more accurate and robust calibration model in large soil spectral libraries to support the implementation of effective soil quality assessments and digital soil maps at national, continental and even global scales. Traditional calibration methods, such as partial least squares regression (PLSR), support vector machines regression(SVMR), multivariate
adaptive regression splines(MARS), random forests(RF), and artificial neural networks (ANN), may not be successfully applied in large spectral libraries due to their relatively weak generation performance in large
regions. To overcome these weaknesses, we proposed a jointed Convolutional Neural Network (CNN) and
Recurrent Neural Network (RNN) architecture called CCNVR, which combines the ability of CNN to extract the local and abstract features from the raw spectrum with the advantage of RNN to learn various dependencies of sequence features. We then compared the prediction accuracy of CCNVR with other conventional methods,
namely, PLSR, SVMR, CNN, ANN, and RNN, on the selected soil properties of mineral soil samples in the Land Use/Land Cover Area Frame Survey (LUCAS) database. Of all calibration models, our proposed CCNVR achieved the best model performance with the lowest RMSE value (6.40, 0.45, 3.30, and 0.35 for OC, N, CEC, and pH, respectively) and the highest R2 (0.73, 0.70, 0.73, and 0.86 for OC, N, CEC, and pH, respectively) for the selected properties, indicating the outstanding prediction ability of our proposed model. Besides, to quantify the robustness of different calibration models, we added different levels of white noise on the original Vis–NIR spectra of the calibration set to observe how the prediction accuracy changes in the test set. The result showed that our
proposed CCNVR model has a better resistance towards noise compared to other calibration models. Finally, we explored the transferability of our proposed CCNVR model. We extended the calibration model trained on the mineral samples to the organic samples through transfer learning. The result revealed that the transfer-based CCNVR fine-tuning model had a better prediction accuracy than that of the non-transfer CCNVR model with an improvement of R2 value from 0.79 to 0.84. The result demonstrated the excellent transferability of our proposed  CCNVR model across different soil types and sample sizes.

语种英语 ; 英语
源URL[http://ir.ia.ac.cn/handle/173211/44324]  
专题综合信息系统研究中心_工业智能技术与系统
通讯作者Wang XL(王学雷)
作者单位1.中国科学院自动化研究所
2.中国科学院大学
推荐引用方式
GB/T 7714
Yang JC,Wang XL,Wang RH,et al. Combination of Convolutional Neural Networks and Recurrent Neural Networks for predicting soil properties using Vis–NIR spectroscopy, Combination of Convolutional Neural Networks and Recurrent Neural Networks for predicting soil properties using Vis–NIR spectroscopy[J]. Geoderma, Geoderma,2020, 2020(380):114616, 114616.
APA 杨杰超,王学雷,王瑞华,&王焕杰.(2020).Combination of Convolutional Neural Networks and Recurrent Neural Networks for predicting soil properties using Vis–NIR spectroscopy.Geoderma(380),114616.
MLA 杨杰超,et al."Combination of Convolutional Neural Networks and Recurrent Neural Networks for predicting soil properties using Vis–NIR spectroscopy".Geoderma .380(2020):114616.

入库方式: OAI收割

来源:自动化研究所

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