Soil Nitrogen Content Detection Based on Near-Infrared Spectroscopy

Author:

Tan BaohuaORCID,You Wenhao,Tian Shihao,Xiao Tengfei,Wang Mengchen,Zheng Beitian,Luo Lina

Abstract

Traditional soil nitrogen detection methods have the characteristics of being time-consuming and having an environmental pollution effect. We urgently need a rapid, easy-to-operate, and non-polluting soil nitrogen detection technology. In order to quickly measure the nitrogen content in soil, a new method for detecting the nitrogen content in soil is presented by using a near-infrared spectrum technique and random forest regression (RF). Firstly, the experiment took the soil by the Xunsi River in the area of Hubei University of Technology as the research object, and a total of 143 soil samples were collected. Secondly, NIR spectral data from 143 soil samples were acquired, and chemical and physical methods were used to determine the content of nitrogen in the soil. Thirdly, the raw spectral data of soil samples were denoised by preprocessing. Finally, a forecast model for the soil nitrogen content was developed by using the measured values of components and modeling algorithms. The model was optimized by adjusting the changes in the model parameters and Gini coefficient (∆Gini), and the model was compared with the back propagation (BP) and support vector machine (SVM) models. The results show that: the RF model modeling set prediction R2C is 0.921, the RMSEC is 0.115, the test set R2P is 0.83, and the RMSEP is 0.141; the detection of the soil nitrogen content can be realized by using a near-infrared spectrum technique and random forest algorithm, and its prediction accuracy is better than that of the BP and SVM models; using ∆ Gini to optimize the RF modeling data, the spectral information of the soil nitrogen content can be extracted, and the data redundancy can be reduced effectively.

Funder

the Innovation and Entrepreneurship Program for College Students of the Ministry of Education of China

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference49 articles.

1. Effects of different water and nitrogen dosages on tomato growth and soil environment in the root zone under facility conditions;Ma;Hubei Agric. Sci.,2021

2. Method Improvement of Kjeldahl Method for Determination of Total Nitrogen in Soil Quality;Liu;Chem. Manag.,2020

3. Determination of total nitrogen in soil—Modified Kjeldahl method;Zhang;Agric. Technol.,2018

4. Minimalizing Non-Point Source Pollution Using a Cooperative Ion Selection Electrode System for Estimating Nitrate Nitrogen in Soil;Su;Front. Plant Sci.,2022

5. Application and research progress of remote sensing in estimation of soil organic matter content;Chen;J. Shandong Agric. Univ.,2011

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