The Modeling of above Ground Biomass in Ranges of Corbett Tiger Reserve using Dual-Polarization ALOS PALSAR Data

Y. Kumar, Sarnam Singh, R. Chatterjee
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Abstract

The study has been carried out in the Pauri Garhwal district of Uttarakhand keeping the focus on Corbett Tiger Reserve (CTR). The total area of CTR covered in the scene is 889 sq. km. The main aim of the paper is to develop a model by establishing a relationship between backscatter coefficients generated from dual polarization L-band ALOS PALSAR data acquired in July 2008 and the field inventory data collected by Forest Survey of India team in 2010. A total of 120 sample plots data were collected in the area out of which 60 plots were used for the training of the model and the remaining 60 plots were left for the validation of the most significant model. The Simple regression analysis was computed between HH & HV backscatter as independent variable and per plot biomass as dependent variable. The Linear, Logarithmic and Polynomial best fit regression models were analyzed. It was found that the coefficient of determination is more with HV backscatter (R 2 =0.75) using logarithmic model as compared among HV in linear and polynomial on one hand and HH in linear, logarithmic and polynomial on the other hand. To improve the accuracy and to know the combined effects of both the polarizations, multiple linear regression analysis (MLR) was applied. There was a significant improvement in correlation coefficients (R 2 =0.86).The in-situ field inventory data shows that the biomass in the CTR ranges from 9.6 t/ha to 322.6 t/ha. The simple regression modelled biomass ranges from 26.2 t/ha to 401.43 t/ha, whereas the MLR modelled biomass ranges from 10.96 t/ha to 312.64 t/ha. The majority of the area was found to be in the range of 100 t/ha to 150 t/ha biomass. The coefficient of determination (R 2 ) between observed and predicted biomass was found to be 0.734 with simple regression, whereas it was found to be 0.83 with MLR. Key words: biomass, modeling and remote sensing
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基于双偏振ALOS PALSAR数据的科贝特老虎保护区地上生物量模型
这项研究是在北阿坎德邦的保里加尔瓦尔地区进行的,重点是科贝特老虎保护区。现场CTR覆盖总面积为889平方公里。公里。本文的主要目的是通过建立2008年7月获得的双极化l波段ALOS PALSAR数据与2010年印度森林调查小组收集的野外清查数据的后向散射系数之间的关系,建立模型。该区域共收集120个样地数据,其中60个样地用于模型的训练,其余60个样地用于最显著模型的验证。以HH和HV背向散射为自变量,以每块生物量为因变量,进行简单回归分析。分析了线性、对数和多项式最佳拟合回归模型。对比线性、多项式的HV和线性、对数、多项式的HH,发现对数模型对HV后向散射的决定系数更大(r2 =0.75)。为了提高精度并了解两种极化的综合效应,采用了多元线性回归分析(MLR)。相关系数显著改善(r2 =0.86)。现场清查数据显示,CTR生物量在9.6 ~ 322.6 t/ha之间。简单回归模型的生物量范围为26.2 ~ 401.43 t/ha,而MLR模型的生物量范围为10.96 ~ 312.64 t/ha。发现大部分地区的生物量在100吨/公顷至150吨/公顷之间。用简单回归法测定实测生物量与预测生物量的决定系数r2为0.734,而用MLR法测定的决定系数r2为0.83。关键词:生物量,建模,遥感
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