农业大数据学报 ›› 2021, Vol. 3 ›› Issue (3): 33-44.doi: 10.19788/j.issn.2096-6369.210304

• 专题——农业模型 • 上一篇    下一篇

基于遥感识别与DNDC模型的不同稻作模式评价——以潜江市为例

阿依吐拉·买买提祖农null1(), 帅艳菊2, 魏浩东3, 何真4, 肖沁茜2, 胡琼4, 徐保东3, 游良志5, 曹凑贵2, 凌霖6()   

  1. 1. 华中农业大学植物科学技术学院/宏观农业研究院,武汉 430070
    2. 华中农业大学植物科学技术学院/农业农村部长江中游作物生理生态与耕作重点实验室,武汉 430070
    3. 华中农业大学资源与环境学院/宏观农业研究院,武汉 430070
    4. 华中师范大学城市与环境科学学院/湖北省地理过程分析与模拟重点实验室,武汉 430079
    5. 国际食物政策研究所,美国 华盛顿 20005
    6. 上海海关学院检验检疫技术交流部,上海 201204
  • 收稿日期:2021-06-10 出版日期:2021-09-26 发布日期:2021-12-22
  • 通讯作者: 凌霖 E-mail:m.ayitula@webmail.hzau.edu.cn;liz@hzau.edu.cn
  • 作者简介:阿依吐拉·买买提祖农,女,硕士,研究方向:种植制度评价; E-mail: m.ayitula@webmail.hzau.edu.cn
  • 基金资助:
    大田油料作物机械化优质高产品种筛选评价技术研究及示范(2020YFD1000901)

Evaluation of Green Development of Rice-Based Cropping Systems Using Remote Sensing Data and the DNDC Model: Case Study of Qianjiang City

Ayitula Maimaitizunong1(), Shuai Yanju2, Haodong Wei3, Zhen He4, Qinxi Xiao2, Qiong Hu4, Baodong Xu3, Liangzhi You5, Cougui Cao2, Lin Ling6()   

  1. 1. Macro Agriculture Research Institute/College of Plant Science and Technology, Huazhong Agricultural University, Wuhan 430070, China
    2. Ministry of Agriculture and Rural Affairs Key Laboratory of Crop Physiology, Ecology and Cultivation (The Middle Reaches of Yangtze River)/College of Plant Science and Technology, Huazhong Agricultural University, Wuhan 430070, China
    3. Macro Agriculture Research Institute/College of Resources &Environment, Huazhong Agricultural University, Wuhan 430070, China
    4. Key Laboratory for Geographical Process Analysis & Simulation of Hubei Province/College of Urban and Environmental Sciences, Central China Normal University, Wuhan 430079, China
    5. International Food Policy Research Institute, Washington D. C. 20005, USA
    6. Inspection and Quarantine Technology Communication Department, Shanghai Customs College, Shanghai 201204, China
  • Received:2021-06-10 Online:2021-09-26 Published:2021-12-22
  • Contact: Lin Ling E-mail:m.ayitula@webmail.hzau.edu.cn;liz@hzau.edu.cn

摘要: 目的

本研究旨在获得潜江市不同稻作模式温室气体排放和固碳情况,以评价不同稻作模式的绿色发展潜力。

方法

首先,利用随机森林对遥感影像进行分类,获得了潜江市各稻作模式分布数据,结合气象、土壤、作物管理数据库,利用校正和验证后的DNDC模型进行区域模拟,获得潜江市甲烷(CH4)和氧化亚氮(N2O)两种温室气体排放量及土壤有机碳变化量(dSOC)。其次,在DNDC模型中设置情景分析,假设目前稻虾模式由不同稻作模式变迁而来,利用相关指标的变化评价稻虾模式在潜江地区的绿色发展潜力。

结果

各项指标表明,校正后DNDC模型对CH4和N2O模拟效果良好。2019年潜江市每1 km2范围内主要稻作模式CH4和N2O排放量及全年dSOC总量变化区间分别为0.40kg~64043.34 kg,0.002kg~227.08 kg和0.18 kg C~35835.27 kg C。潜江市全年单位面积CH4和N2O排放量均表现为稻虾模式最小,分别为394.50kg·hm-2,1.43kg·hm-2,单位面积dSOC表现为稻虾模式最大为274.30 kg C·hm-2,稻闲模式最小,为204.95 kg C·hm-2。当潜江市稻虾模式转变为其他主要模式后,其周年CH4排放总量增加2.31%~11.25%, N2O排放总量增加11.49%~67.09%,dSOC减少9.95%~22.81%。

结论

本研究中,稻麦模式表现为CH4排放最大,稻油模式的N2O排放最大,两者固碳能力中等;稻闲模式由于只有一季种植,温室气体排放小于稻旱轮作模式,但其固碳能力较差;稻虾模式的减排和固碳能力相较于稻闲与稻旱轮作模式强,具有更高的绿色发展潜力,但其仍具有减排空间。

关键词: DNDC模型, 遥感影像识别, 稻虾模式, 温室气体, 有机碳积累, 随机森林, 减排

Abstract: Objective

The purpose of this study was to estimate the greenhouse gas emission and carbon sequestration of different rice-based cropping systems in Qianjiang City, China, and to evaluate potential for their green development.

Method

First, classified remote-sensing images were with the random forest method to map the distribution of rice cropping systems in Qianjiang City. Combined with meteorological, soil, and crop management datasets, a revised and validated DeNitrification–DeComposition (DNDC) model was used to conduct regional simulations. Estimates for methane (CH4) and nitrous oxide (N2O) emissions and changes in soil organic carbon (dSOC) in Qianjiang City were obtained. Second, scenario simulations were conducted in the DNDC model under the assumption that the current rice–crayfish system was evolved from different rice cropping systems, and changes in the related indicators were used to evaluate the green development potential of the systems.

Results

All indicators showed that the validated DNDC model had good performance to simulate the effect on CH4 and N2O. In 2019, the CH4 and N2O emissions and the annual dSOC of the main rice cropping systems per km2 in Qianjiang City were 0.40–64,043.34 kg, 0.002–227.08 kg, and 0.18–5,835.27 kg C, respectively. The annual CH4 and N2O emissions per unit area in the rice–crayfish system were the lowest, at 394.50 kg·hm-2 and 1.43 kg·hm-2, respectively. The dSOC per unit area was the highest in the rice–crayfish system, at 274.30 kg C·hm-2, and that in the rice–fallow system was the lowest, at 204.95 kg C·hm-2. The annual total CH4 emission increased by 2.31%–11.25%, the total N2O emission increased by 11.49%–67.09%, and the dSOC decreased by 9.95%–22.81% when the rice–crayfish system was converted to other rice cropping systems in Qianjiang City.

Conclusion

In this study, the rice–wheat system showed the largest CH4 emission, and the rice–rape system showed the largest N2O emission, both of which had moderate carbon sequestration capacity. The greenhouse gas emission of the rice–fallow system is lower than that of the rice–dryland rotation system, but its carbon sequestration ability is poor. The rice–crayfish system has stronger emission reduction and carbon sequestration ability compared with the other rice-based systems, and has higher green development potential, though there is still potential for emission mitigation.

Key words: DNDC model, remote sensing recognition, rice cropping systems, greenhouse gases, carbon sequestration, random forest, emission reduction

中图分类号: 

  • P407.8