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岩石风化碳汇遥感估算及其时空变化分析

张宇 罗为群 刘美玲 李梦琦 张莉 陈芳芳 张扬岑 陈蕊

张 宇,罗为群,刘美玲,等. 岩石风化碳汇遥感估算及其时空变化分析[J]. 中国岩溶,2024,43(4):727-741 doi: 10.11932/karst20240401
引用本文: 张 宇,罗为群,刘美玲,等. 岩石风化碳汇遥感估算及其时空变化分析[J]. 中国岩溶,2024,43(4):727-741 doi: 10.11932/karst20240401
ZHANG Yu, LUO Weiqun, LIU Meiling, LI Mengqi, ZHANG Li, CHEN Fangfang, ZHANG Yangcen, CHEN Rui. Estimation of the carbon sink of rock weathering by remote sensing and analysis of its spatiotemporal variations[J]. CARSOLOGICA SINICA, 2024, 43(4): 727-741. doi: 10.11932/karst20240401
Citation: ZHANG Yu, LUO Weiqun, LIU Meiling, LI Mengqi, ZHANG Li, CHEN Fangfang, ZHANG Yangcen, CHEN Rui. Estimation of the carbon sink of rock weathering by remote sensing and analysis of its spatiotemporal variations[J]. CARSOLOGICA SINICA, 2024, 43(4): 727-741. doi: 10.11932/karst20240401

岩石风化碳汇遥感估算及其时空变化分析

doi: 10.11932/karst20240401
基金项目: 国家重点研发课题(2022YFF1300702);中国地质调查局项目(DD20221820);广西岩溶动力学重大科技创新基地开放课题(KBL202103)
详细信息
    作者简介:

    张宇(1995-),男,硕士,研究方向:生态遥感。E-mail:zhangyu_yf@piesat.cn

    通讯作者:

    罗为群(1980-),男,研究员,研究方向:岩溶生态与石漠化治理。E-mail:125639802@qq.com

  • 中图分类号: X141

Estimation of the carbon sink of rock weathering by remote sensing and analysis of its spatiotemporal variations

  • 摘要: 岩石风化过程吸收的 CO2 是全球碳循环“遗漏汇”中的一部分, 岩石风化碳汇估算对掌握区域与全球碳汇效应及与全球气候变化的关系具有重要意义。文章选取贵州省作为实验区域,以20年作为时间跨度,收集了气象、岩性等数据,首先借助动态时间规整方法选取了岩石风化碳汇的影响因子,然后利用GEM-CO2模型进行岩溶碳汇量的估算,最后运用Mann-Kendall趋势法和统计法揭示实验区域的2001-2020年岩溶碳汇时空演变规律。结果表明:(1) 影响岩石风化速度、消耗CO2量的主要因素为岩石类别,其次为年均降水量,温度对于CO2消耗的响应具有滞后性;(2) 贵州省岩石风化消耗CO2量较多的地区主要在黔东北、黔西南、黔南以及黔东南部分地区,消耗CO2较少的地区主要分布在黔西北地区;(3) 20年间,贵州省年均岩溶碳汇量大约在0~1.04×103 t C·km−2·a−1之间,呈波动上升的趋势。基于遥感数据的全球或区域尺度碳汇估算为碳源/汇时空变化分析提供了基础数据,为当地碳汇交易、环境政策的制定提供参考。

     

  • 图  1  贵州省行政区划及岩性分布

    Figure  1.  Administrative division and lithology distribution of Guizhou Province

    图  2  基于DTW的年均降水量、气温与总碳汇量的相关性分析

    Figure  2.  Correlation analysis of annual average precipitation, temperature and total carbon sink based on DTW

    图  3  不同岩石风化作用消耗CO2百分比

    Figure  3.  Percentage of CO2 consumed by weathering of different rocks

    图  4  2001、2010、2020年岩溶碳汇量分布

    Figure  4.  Distribution of karst carbon sink in 2001, 2010 and 2020

    图  5  2001-2020年贵州省相邻年份岩石风化碳汇量变化

    Figure  5.  Variations of carbon sink of rock weathering in Guizhou Province from 2001 to 2020

    图  6  2001-2020年贵州省相邻年份气候因子变化

    Figure  6.  Variations of climate factors in Guizhou Province from 2001 to 2020

    图  7  Mann-Kendall趋势检验 (a)总碳汇量变化趋势 (b) 典型岩溶地貌碳汇量变化趋势(c)非岩溶区碳汇量变化趋势

    Figure  7.  Trend testing of Mann-Kendall (a) change of total carbon sink; (b) change of carbon sink in typical karst landforms; (c) change of carbon sink in non-karst areas

    图  8  2001-2020年贵州省岩石风化碳汇量的变化趋势 (a) 20年中碳汇增加型发生频率 (b) 20年中碳汇不同变化形式空间分布

    Figure  8.  ariations of carbon sink of rock weathering in Guizhou Province from 2001 to 2020 (a) frequency of increasing carbon sink in 20 years; (b) spatial distribution of different patterns of carbon sink in 20 years

    图  9  Z-归一化年均降水、温度时序数据

    Figure  9.  Z-normalized time-sequencing data on annual average precipitation and temperature

    图  10  不同岩石碳汇Z-归一化时序数据

    Figure  10.  Z-normalized time-sequencing data on carbon sink in different rocks

    图  11  2001-2020各地物类型面积变化

    Figure  11.  Variations in area of different object types from 2001 to 2020

    图  12  Z-归一化森林面积与碳汇时序数据

    Figure  12.  Z-normalized forest area and time-sequencing data on carbon sink

    表  1  GEM-CO2模型经验系数[31]

    Table  1.   Empirical coefficient of the GEM-CO2 model[31]

    岩石类型经验系数a
    变质岩及深成岩类0.095
    酸性火山岩0.222
    玄武岩0.479
    砂层与砂岩类0.152
    页岩类0.627
    碳酸盐岩类1.586
    蒸发岩类0.293
    下载: 导出CSV

    表  2  2001-2010年贵州省岩溶碳汇类型

    Table  2.   Types of karst carbon sink in Guizhou Province from 2001 to 2010

    类型 面积占比/% 描述
    波动减少 5.43 20年中相邻年份碳汇量表现为减少形式的次数与面积显著大于增加形式,方差波动较大,碳汇总量减少。
    稳定减少 3.90 20年中相邻年份碳汇量表现为减少形式的次数与面积显著大于增加形式,方差波动较小,碳汇总量减少。
    波动稳定 33.86 20年中相邻年份碳汇量表现为减少的次数与面积同增加形式持平或相近,方差波动较大,碳汇总量几乎不变。
    稳定 19.47 20年中相邻年份碳汇量表现为减少的次数与面积同增加形式持平或相近,方差波动较小,碳汇总量几乎不变。
    波动增加 29.01 20年中相邻年份碳汇量表现为减少形式的次数与面积显著小于增加形式,方差波动较大,碳汇总量增加。
    稳定增加 8.33 20年中相邻年份碳汇量表现为减少形式的次数与面积显著小于增加形式,方差波动较小,碳汇总量增加。
    下载: 导出CSV

    表  3  2001-2020年贵州省不同类型岩石碳汇量贡献度

    Table  3.   Contribution rates of carbon sink of different types of rocks in Guizhou Province from 2001 to 2020

    岩石类型 统计面积/km2 碳汇量占比/%
    酸性火山岩 1413 0.26
    砂岩、页岩、碳酸盐岩 59329 30.46
    砂岩、碳酸盐岩 25648 14.59
    碳酸盐岩 35566 34.10
    砂岩、页岩 2215 0.64
    页岩、碳酸盐岩 23654 14.62
    深成岩及变质岩 2 010 0.22
    砂岩 12095 1.66
    砂岩、页岩、碳酸盐岩、玄武岩 5107 2.27
    页岩 655 0.27
    砂岩、碳酸盐岩、玄武岩 680 0.28
    砂岩、页岩、玄武岩 1188 0.42
    砂岩、玄武岩 297 0.07
    蒸发岩类 / /
    下载: 导出CSV

    表  4  2001-2020年不同地物类型面积与碳汇的Pearson相关系数

    Table  4.   Pearson correlation coefficient between the area of different object types and the carbon sink from 2001 to 2020

    土地利用类型 相关系数
    森林 0.29
    草地 −0.22
    耕地 −0.12
    建筑 0.19
    其它 0.18
    下载: 导出CSV
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出版历程
  • 收稿日期:  2023-01-19
  • 录用日期:  2023-07-21
  • 修回日期:  2023-07-20
  • 刊出日期:  2024-08-25

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