首页> 外文会议>International Conference on Agro-Geoinformatics >Integrations remote sensing mapping with the environmental model to quantify emissions from rice paddies in Thailand
【24h】

Integrations remote sensing mapping with the environmental model to quantify emissions from rice paddies in Thailand

机译:将遥感地图与环境模型相集成,以量化泰国稻田的排放

获取原文

摘要

Wetland rice soils have been identified as an important source of GHG emissions at the global scale, particularly methane emissions. As paddy rice cropland in Thailand accounts for 52% of all cultivated land in the country and 6% of the world's rice paddies, accurately estimating emissions from rice paddies has become important in this country for GHG inventories or mitigation policies. This research integrated biogeochemical models with remote sensing technology to advance the DNDC regional application. This research identified spatio-temporal patterns of GHG emissions (CO2, CH4, and N2O) from rice fields in Thailand (Lopburi province). New Method and database system were developed to increase accuracy of DNDC model; moreover, spatial and temporal characteristics of phenological information derived from remote sensing data (MODIS) were used in DNDC to quantify emissions. The results demonstrate the influence of human management, climate variation, and physical geography on the change of GHG emissions. Phenology of rice and human management were the major factors effecting the changes of CH4 emissions. The change of CO2 emissions showed rapid changes in extreme climate years. N2O emission was strongly related to climate variation, especially rainfall changes. Rice intensification with longer length of flooding period and high application rates of fertilizer extremely enhanced CH4 production. Light soil texture produces higher emission than heavy soil texture. The results suggest that practical mitigation options should be carefully regulated to more efficiently balance among the emission types as well as to maintain or improve grain yields.
机译:在全球范围内,湿地稻田土壤已被确定为重要的GHG排放源,尤其是甲烷排放。由于泰国的稻田占该国所有耕地的52%,占世界稻田的6%,因此,准确估算稻田的排放量对该国的温室气体清单或减缓政策已变得至关重要。这项研究将生物地球化学模型与遥感技术集成在一起,以推进DNDC的区域应用。这项研究确定了泰国(Lopburi)稻田温室气体排放的时空格局(CO 2 ,CH 4 和N 2 O)省)。开发了新的方法和数据库系统以提高DNDC模型的准确性;此外,在DNDC中使用了来自遥感数据(MODIS)的物候信息的时空特征来量化排放。结果证明了人类管理,气候变化和自然地理环境对温室气体排放量变化的影响。水稻物候和人为管理是影响CH 4 排放量变化的主要因素。在极端气候年份,CO 2 排放的变化显示出快速的变化。 N 2 O的排放与气候变化特别是降雨变化密切相关。稻米集约化,较长的淹水期和较高的肥料施用量极大地提高了CH 4 的产量。轻质土壤产生的排放高于重质土壤。结果表明,应认真调整实际的缓解方案,以更有效地平衡排放类型,并保持或提高谷物产量。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号