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上海城市森林叶生物量遥感监测

王紫君1,申广荣1,3*,朱赟1,韩玉洁4,刘春江2,3,薛春燕4#br#   

  1. 1上海交通大学农业与生物学院, 低碳农业研究中心, 上海 200240; 2国家林业局上海城市森林生态系统国家定位观测研究站, 上海 200240; 3农业部都市农业(南方)重点实验室, 上海 200240; 4上海林业总站, 上海 200072)
  • 出版日期:2016-05-10 发布日期:2016-05-10

Remote-sensing monitoring of urban forest leaf biomass in Shanghai.

WANG Zi-Jun1 , SHEN Guang-Rong1,3*, ZHU Yun1, HAN Yu-Jie4 , LIU Chun-Jiang2,3,  XUE Chun-Yan4#br#   

  1. (1Centre for Low Carbon Agriculture, School of Agriculture and Biology Research, Shanghai Jiao Tong University, Shanghai 200240, China; 2Shanghai Urban Forest Ecosystem Research Station of National Positioning and Observation, State Forestry Administration, Shanghai 200240, China; 3Key Laboratory of Urban Agriculture (South), Ministry of Agriculture, Shanghai 200240, China;  4Shanghai Forestry Station, Shanghai 200072, China).
  • Online:2016-05-10 Published:2016-05-10

摘要: 区域尺度城市森林叶生物量的估测对了解植物长势、碳同化过程和森林生态系统具有显著作用。本研究基于2011年6月—2012年6月样地实测叶生物量数据以及同期遥感信息,采用回归分析与空间分析相结合的方法,估测了上海城市森林叶生物量的空间分布,探讨了区域尺度森林叶生物量的遥感估测方法。结果表明:(1)上海城市森林叶生物量密度总体呈现出中心城区(静安区、黄浦区等)高,郊区县(松江区、金山区等)低的空间分布特征,其生物量密度分别介于4~10和1~6 t·hm-2。(2)研究区森林叶的平均生物量密度和生物量总量分别为2.55 t·hm-2和300.81×103 t,郊区县与中心城区森林叶生物量分别占总量的94.16%和5.84%。在所有区县中,以林地面积最大的崇明县和浦东新区具有最高的森林叶生物量值,两者总量达到研究区总量的34.82%;以林地面积最小的静安区为最低,仅占总量的0.1%。(3)通过残差计算并引入空间分析的森林叶生物量遥感估算方法,其标准误差RMSE、平均绝对误差MAE、平均相对误差MRE较回归模型分别降低了58.46%、48.76%和48.71%,较空间插值的结果分别降低了47.74%、38%和49.24%。结合空间分析和回归分析的城市森林叶生物量研究方法为快速、便捷、客观、高效的区域生物量遥感监测提供了可能。

关键词: 秸秆还田, 土壤有机碳, 碳库管理指数, 碳储量

Abstract: Estimation of urban forest leaf biomass at regional scale plays a significant role in understanding plant growth, carbon assimilation processes and forest ecosystems. In this study, an urban forest leaf biomass estimation method which combined regression analysis and spatial analysis in Shanghai, China was explored. Based on the measured data of leaf biomass from June 2011 to June 2012 and a variety of remote sensing data, an analysis of the distribution characteristics of urban forest leaf biomass was also carried out. The results showed that (1) The higher leaf biomass densities concentrated mainly in the urban areas like Jing’an District and the Huangpu District, while suburban localities like Songjiang District and Jinshan District presented lower biomass densities, which were around 4 to 10 and 1 to 6 t·hm-2, respectively. (2) The density and the amount of urban forest leaf biomass in Shanghai were 2.55 t·hm-2 and 300.81×103 t, respectively. The overall leaf biomass was also found to be distributed mainly in the suburban areas with a fraction of 94.16%, whereas the urban areas shared a little fraction of 5.84%. Among the administrative districts of Shanghai, Chongming County and Pudong New District owned the highest and second highest leaf biomass, altogether reaching 34.82% of the total, however, Jing’an District occupied only 0.11%, which was in accordance with its area proportion. (3) The rootmeansquare error (RMSE), mean absolute error (MAE) and mean relative error (MRE) of the regressionIDW model for urban forest leaf biomass in this study were respectively 0.81%, 0.62% and 29.33%, which were decreased by 58.46%, 48.76% and 48.71% respectively than those of the original simple regression model and by 47.74%, 38% and 49.24% respectively than those of the spatial analysis method. The combination of spatial analysis and regression analysis provided a quick, convenient and efficient method for estimating the urban forest leaf biomass and monitoring upscaled forest inventory data at a regional scale.

Key words: straw-returning to field, soil total organic carbon, carbon pool management index, carbon stock.