Study on Differential-Based Multispectral Modeling of Soil Organic Matter in Ebinur Lake Wetland
LI Xue-ping1, ZHANG Fei1,2,3*, WANG Xiao-ping1,2
1. College of Resources & Environmental Science, Xinjiang University, Urumqi 830046, China
2. Key Laboratory of Oasis Ecology, Xinjiang University, Urumqi 830046,China
3. General Institutes of Higher Learning Key Laboratory of Smart City and Environmental Modeling, Xinjiang University,Urumqi 830046,China
Abstract:In this paper, according to the feasibility and reliability of using the hyperspectral data to retrieve SOM from hyperspectral data, combined with the high efficiency of differential processing in extracting spectral information, a new method based on differential algorithm for soil organic matter modeling In this study, the content of soil organic matter can be obtained by differentiating the multi-spectral remote sensing images directly, which aims to provide the direction for the future study of soil organic matter rapid measurement is proposed. In this paper, Landsat 8_OLI multi-spectral remote sensing image data is used to perform the radiation calibration, geometric correction, atmospheric correction, mosaic and cropping of multi-spectral remote sensing images. The first order differential and second order differential are processed by IDL software. The image can better express the real situation of the object. The first-order differential image can distinguish the water body from the soil better. The original remote sensing image contains a lot of information, including the noise. The differential image processed by the remote sensing image excludes the original image In the study area, five-point method was used to collect soil samples, indoor potassium dichromate oxidation-volume method to measure soil organic matter data, and multispectral data was used to analyze soil organic matter data from the ground to analyze soil organic matter It is found that there is a sensitive band in the correlation between the first-order differential data and soil organic matter content, indicating that the first-order differential processing can transform the original remote sensing image data in some obscure soil in the multi-spectral range. Organic information is released; select a high correlation number established based on the raw remote sensing data, first-order differential data, single-band multi-spectral data of the second order differential linear and multi-band multi-spectral linear model, and select the best model to estimate soil organic matter content retrieval. The main conclusions are as follows: (1) By differentiating the original image, it is found that the image after differential processing changes obviously and the image noise of first-order differential processing decreases, which further highlights the hidden information of soil organic matter in the image. The second-order differential processing suppresses soil organic matter information. (2) The data of the original remote sensing images have a low correlation with soil organic matter content. The data of the first-order differential treatment reflect the correlation of the soil organic matter sensitive band, that is, the partial band data, and the second-order differential processing after the remote sensing images of each band data on soil organic matter content of the correlation is weak. (3) Multi-band modeling is superior to single-band modeling, and the first-order differential multiband model has the best prediction accuracy. The model’s coefficient of determination and the coefficient of model fitting are 0. 898 and 0. 854 respectively. The soil organic matter content in this region was well estimated. The fitting accuracy of single-band model and multi-band model was compared comprehensively. It was found that both the single-band model and the first-order differential model had better prediction ability. (4) Based on the first-order differential multi-band model, the inversion of SOM in the study area was carried out. The inversion result is in accordance with the actual situation, which provides a practical method and reference for the mapping of soil organic matter content in arid area.
李雪萍,张 飞,王小平. 微分算法的艾比湖湿地自然保护区土壤有机质多光谱建模[J]. 光谱学与光谱分析, 2019, 39(02): 535-542.
LI Xue-ping, ZHANG Fei, WANG Xiao-ping. Study on Differential-Based Multispectral Modeling of Soil Organic Matter in Ebinur Lake Wetland. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2019, 39(02): 535-542.
[1] Anne N J P, Abd-Elrahman A H, Lewis D B, et al. International Journal of Applied Earth Observation and Geoinformation, 2014, 33(11): 47.
[2] WANG Xiang-feng, MENG Ji-hua(王祥峰, 蒙继华). Transactions of the Chinese Society of Agricultural Engineering(农业工程学报), 2014, 30(8): 101.
[3] TIAN Yong-chao, ZHANG Juan-juan, YAO Xia, et al(田永超,张娟娟,姚 霞, 等). Transactions of the Chinese Society of Agricultural Engineering(农业工程学报), 2012, 28(1): 145.
[4] YU Lei, HONG Yong-sheng, GENG Lei, et al(于 雷, 洪永胜, 耿 雷, 等). Transactions of the Chinese Society of Agricultural Engineering(农业工程学报), 2015, 31(14): 103.
[5] WANG Yan-cang, GU Xiao-he, et al(王延仓, 顾晓鹤, 等). Spectroscopy and Spectral Analysis(光谱学与光谱分析), 2014, 34(1): 201.
[6] Wang X, Zhang F, Ding J, et al. Science of the Total Environment, 2017, 615(12): 918.
[7] ZHANG Yue, ZHANG Fei, ZHOU Mei,et al(张 月, 张 飞, 周 梅, 等). Chinese Journal of Applied Ecology(应用生态学报), 2016, 27(1): 233.
[8] ZHANG Lei, ZHU A-xing, YANG lin, er al(张 磊, 朱阿兴, 杨 琳, 等). Acta Pedologica Sinica(土壤学报), 2017, 54(5): 1079.
[9] WANG Ji-zhong, YAO Hai-yan(王纪忠, 姚海燕). Transactions of the Chinese Society of Agricultural Engineering(农业工程技术), 2017, 37(11): 21.
[10] GUAN Hong, JIA Ke-li, ZHANG Zhi-nan, et al(关 红, 贾科利, 张至楠, 等). Remote Sensing For Land & Resources(国土资源遥感), 2015, 27(2): 100.
[11] WANG Yong-hui,JIAO Li, et al(王勇辉, 焦 黎, 等). Acta Ecologica Sinica(生态学报), 2016, 36(18): 5893.
[12] PENG Jie, ZHOU Qing, ZHANG Yang-zhu, et al(彭 杰,周 清,张杨珠,等). Acta Pedologica Sinica(土壤学报),2013,50(3):517.
[13] WANG Miao, XIE Xian-li, ZHOU Rui, et al(王 淼, 解宪丽, 周 睿, 等). Acta Pedologica Sinica(土壤学报), 2011, 48(5):1083.
[14] CHEN Song-chao, FENG Lai-lei, LI Shuo, et al(陈颂超, 冯来磊, 李 硕, 等). Acta Pedologica Sinica(土壤学报), 2015, 52(2):312.