首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Development of hyperspectral model for rapid monitoring of soil organic carbon under precision farming in the Indo-Gangetic Plains of Punjab, India
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Development of hyperspectral model for rapid monitoring of soil organic carbon under precision farming in the Indo-Gangetic Plains of Punjab, India

机译:印度旁遮普邦印度洋平原平原精确耕作下快速监测土壤有机碳的高光谱模型的开发

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Degrading soil quality at an alarming rate as a result of high input agriculture under continuous rice-wheat cropping system in the Indo-Gangetic alluvial Plains of Punjab (India), a major food growing region of south-east Asia, has ushered the need of precision farming for which rapid site specific monitoring of soil organic carbon (an indicator of soil quality) is needed. In this study, visible-near infrared reflectance spectroscopy was evaluated for rapid prediction of soil organic carbon (SOC) contents in soils of the Indo-Gangetic alluvial Plains of Punjab, India. A total of 800 surface soil samples (480 for calibration and 320 for validation) from farmers' field representing the districts of Ludhiana, Moga, Gurdaspur and Bhatinda in Punjab State, India were collected, ensuring sufficient variation in SOC content. Reflectance spectra were obtained from air-dried samples (< 2 mm size) under controlled laboratory conditions using a hyperspectral ASD FieldSpecPro spectroradiometer. Part of the same samples was used for SOC determination by Walkley and Black titration method. The SOC value in the study area varies from 4.0 to 18.1 g kg(-1) (mean 7.9 g kg(-1) and standard deviation of 2.2 g kg(-1)) among the soil samples. Partial least squares regression technique was employed to examine the relationships between SOC and the reflectance spectra; and to identify the wavelengths sensitive to SOC variation. Among 15 spectral transformations used for calibration, SGF-2-3 transformation (transformation to 1st derivative with second order polynomial smoothing with 3 points using Savitzky-Golay filter) was the best for SOC modeling in the IGP soils as it showed highest validation r(2) (0.81) and RPD (2.30) and the lowest RMSEP (0.116) with 6 PLS factors. The most important wavelengths for SOC prediction were 460, 470 and 550 nm in the visible and 1400, 1420, 1920, 2040, 2210, 2270, 2320 and 2380 nm in the near-infrared region. At this juncture of much awaited second green revolution envisaged to be based on sustainability and precision agriculture in one hand and the increased availability of high resolution hyperspectral satellite data on the other hand; our findings regarding rapid evaluation of SOC through hyperspectral model are encouraging as it might assist in real time evaluation of pre and post-scenarios of soil quality and sustainability under precision farming system.
机译:在东南亚主要的粮食产区旁遮普邦(印度)的印度-恒河冲积平原上,由于稻米和小麦的连续耕作制度下的高投入农业,导致土壤质量以令人震惊的速度退化。精密农业,需要对土壤有机碳(土壤质量指标)进行特定地点的快速监测。在这项研究中,对可见-近红外反射光谱法进行了评估,以快速预测印度旁遮普邦印度恒河冲积平原土壤中的有机碳(SOC)含量。从印度旁遮普邦的卢迪亚纳,摩加,古达斯布尔和巴廷达等地区的农民田地中收集了总共800个表层土壤样品(用于校准的480个和用于验证的320个),以确保SOC含量有足够的变化。使用高光谱ASD FieldSpecPro光谱辐射仪,在受控的实验室条件下,从风干的样品(尺寸小于2 mm)获得反射光谱。通过Walkley和Black滴定法将部分相同样品用于SOC测定。在研究区域中,土壤样本中的SOC值从4.0到18.1 g kg(-1)(平均7.9 g kg(-1),标准偏差为2.2 g kg(-1))不等。采用偏最小二乘回归技术研究了SOC与反射光谱之间的关系。并确定对SOC变化敏感的波长。在用于校准的15个光谱转换中,SGF-2-3转换(使用Savitzky-Golay滤波器使用3点对具有二阶多项式平滑度的一阶导数进行转换)是IGP土壤中SOC建模的最佳方法,因为它显示出最高的验证r( 2)(0.81)和RPD(2.30),最低RMSEP(0.116),PLS因子为6。 SOC预测最重要的波长在可见光为460、470和550 nm,在近红外区为1400、1420、1920、2040、2210、2270、2320和2380 nm。在此刻,人们期待已久的第二次绿色革命是一方面基于可持续性和精确农业,另一方面基于高分辨率高光谱卫星数据的增加的可用性;我们关于通过高光谱模型快速评估SOC的发现令人鼓舞,因为它可能有助于在精确耕作系统下实时评估土壤质量和可持续性之前和之后的情况。

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