A study on hyperspectral soil total nitrogen inversion using a hybrid deep learning model CBiResNet-BiLSTM

IF 5.2 2区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY
Miao Sun, Yuzhu Yang, Shulong Li, Dongjie Yin, Geao Zhong, Liying Cao
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引用次数: 0

Abstract

Rapid, accurate and non-destructive acquisition of soil total nitrogen (TN) content in the black soil zone is significant for achieving precise fertilization. In this study, the soil types of corn and soybean fields in Jilin Agricultural University, China, were selected as the study area. A total of 162 soil samples were collected using a five-point mixed sampling method. Then, spectral data were obtained and the noisy edge were initially eliminated. Subsequently, the denoised spectral data underwent smoothing by using the Savitzky–Golay (SG) method. After performing the first-order difference (FD) and second-order difference (SD) transformations on the data, it was input to the model. In this study, a hybrid deep learning model, CBiResNet-BiLSTM, was designed for precise prediction of soil TN content. This model was optimized based on ResNet34, and its capabilities were enhanced by incorporating CBAM in the residual module to facilitate additional eigenvalue extraction. Also, Bidirectional Long Short-Term Memory (BiLSTM) was integrated to enhance model accuracy. Besides, partial least squares regression (PLSR), random forest regression (RFR), support vector machine regression (SVR), and back propagation neural network (BP), as well as ResNet(18, 34, 50, 101, 152) models were taken for comparative experiments. The results indicated that the traditional machine learning model PLSR achieved good performance, with R2 of 0.883, and the hybrid deep learning model CBiResNet-BiLSTM had the best inversion capability with R2 of 0.937, with the R2 being improved by 5.4%, compared with the PLSR model. On this basis, we present the LUCAS dataset to demonstrate the generalisability of the model. Therefore, the CBiResNet-BiLSTM model is a fast and feasible hyperspectral estimation method for soil TN content.

Graphical abstract

利用 CBiResNet-BiLSTM 混合深度学习模型对高光谱土壤全氮反演的研究
快速、准确、无损地获取黑土区土壤全氮(TN)含量对实现精准施肥具有重要意义。本研究选取吉林农业大学玉米田和大豆田的土壤类型作为研究区域。采用五点混合取样法,共采集了 162 个土壤样本。然后获取光谱数据,并初步去除噪声边缘。随后,使用 Savitzky-Golay (SG) 方法对去噪光谱数据进行平滑处理。对数据进行一阶差分(FD)和二阶差分(SD)变换后,将其输入模型。本研究设计了一个混合深度学习模型 CBiResNet-BiLSTM,用于精确预测土壤 TN 含量。该模型在 ResNet34 的基础上进行了优化,并通过在残差模块中加入 CBAM 来促进额外的特征值提取,从而增强了其功能。此外,还集成了双向长短期记忆(BiLSTM),以提高模型的准确性。此外,还采用了偏最小二乘回归(PLSR)、随机森林回归(RFR)、支持向量机回归(SVR)、反向传播神经网络(BP)以及 ResNet(18、34、50、101、152)模型进行对比实验。结果表明,传统机器学习模型 PLSR 性能良好,R2 为 0.883;混合深度学习模型 CBiResNet-BiLSTM 的反演能力最佳,R2 为 0.937,与 PLSR 模型相比,R2 提高了 5.4%。在此基础上,我们提出了 LUCAS 数据集,以证明该模型的通用性。因此,CBiResNet-BiLSTM 模型是一种快速可行的土壤 TN 含量高光谱估算方法。
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来源期刊
Chemical and Biological Technologies in Agriculture
Chemical and Biological Technologies in Agriculture Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
6.80
自引率
3.00%
发文量
83
审稿时长
15 weeks
期刊介绍: Chemical and Biological Technologies in Agriculture is an international, interdisciplinary, peer-reviewed forum for the advancement and application to all fields of agriculture of modern chemical, biochemical and molecular technologies. The scope of this journal includes chemical and biochemical processes aimed to increase sustainable agricultural and food production, the evaluation of quality and origin of raw primary products and their transformation into foods and chemicals, as well as environmental monitoring and remediation. Of special interest are the effects of chemical and biochemical technologies, also at the nano and supramolecular scale, on the relationships between soil, plants, microorganisms and their environment, with the help of modern bioinformatics. Another special focus is the use of modern bioorganic and biological chemistry to develop new technologies for plant nutrition and bio-stimulation, advancement of biorefineries from biomasses, safe and traceable food products, carbon storage in soil and plants and restoration of contaminated soils to agriculture. This journal presents the first opportunity to bring together researchers from a wide number of disciplines within the agricultural chemical and biological sciences, from both industry and academia. The principle aim of Chemical and Biological Technologies in Agriculture is to allow the exchange of the most advanced chemical and biochemical knowledge to develop technologies which address one of the most pressing challenges of our times - sustaining a growing world population. Chemical and Biological Technologies in Agriculture publishes original research articles, short letters and invited reviews. Articles from scientists in industry, academia as well as private research institutes, non-governmental and environmental organizations are encouraged.
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