首页> 外文期刊>Remote Sensing >Simulation of the Grazing Effects on Grassland Aboveground Net Primary Production Using DNDC Model Combined with Time-Series Remote Sensing Data—A Case Study in Zoige Plateau, China
【24h】

Simulation of the Grazing Effects on Grassland Aboveground Net Primary Production Using DNDC Model Combined with Time-Series Remote Sensing Data—A Case Study in Zoige Plateau, China

机译:DNDC模型与时间序列遥感数据相结合模拟草地放牧对地上净初级生产力的影响-以中国若尔盖高原为例

获取原文
           

摘要

Measuring the impact of livestock grazing on grassland above-ground net primary production (ANPP) is essential for grass yield estimation and pasture management. However, since there is a lack of accurate and repeatable techniques to obtain the details of grazing locations and stocking rates at the regional scale, it is an extremely challenging task to study the influence of regional grazing on the grassland ANPP. Taking Zoige County as a case, this paper proposes an approach to quantify the spatial and temporal variation of grazing intensity and grazing period through time-series remote sensing data, simulated grassland ANPP through the denitrification and decomposition (DNDC) model, and then explores the impact of grazing on grassland ANPP. The result showed that the model-estimated ANPP while considering grazing had a significant relationship with the field-observed ANPP, with the coefficient of determination (R 2 ) of 0.75, root mean square error (RMSE) of 122.86 kgC/ha, and average relative error (RE) of 8.77%. On the contrary, if grazing activity was not considered in simulation, a large uncertainty was found when the model-estimated ANPP was compared with the field observation, showing R 2 of 0.4, RMSE of 211.51 kgC/ha, and average RE of 32.5%. For the whole area of Zoige County in 2012, the statistics of the estimation showed that the total regional ANPP was up to 3.815 × 10 5 tC, while the total regional ANPP, without considering grazing, would be overestimated by 44.4%, up to 5.51 × 10 5 tC. This indicates that the grazing parameters derived in this study could effectively improve the accuracy of ANPP simulation results. Therefore, it is feasible to combine time-series remote sensing data with the process model to simulate the grazing effects on grassland ANPP. However, some issues, such as selecting proper remote sensing data, improving the quality of model input parameters, collecting more field data, and exploring the data assimilation approaches, still should be considered in the future work.
机译:评估牲畜放牧对草地地上净初级生产量(ANPP)的影响对于草产量估算和牧场管理至关重要。但是,由于缺乏准确和可重复的技术来获取区域规模上的放牧地点和放牧率的详细信息,因此研究区域放牧对草地ANPP的影响是一项极富挑战性的任务。以佐伊格县为例,提出了一种通过时间序列遥感数据量化放牧强度和放牧期时空变化的方法,通过反硝化分解(DNDC)模型模拟​​草地ANPP,然后探索放牧对草原ANPP的影响。结果表明,在考虑放牧的情况下,模型估算的ANPP与实地观测的ANPP有显着关系,测定系数(R 2)为0.75,均方根误差(RMSE)为122.86 kgC / ha,平均相对误差(RE)为8.77%。相反,如果在模拟中不考虑放牧活动,则将模型估算的ANPP与现场观察进行比较时会发现很大的不确定性,R 2为0.4,RMSE为211.51 kgC / ha,平均RE为32.5%。 。对于2012年若尔盖县的整个地区,估计的统计数据表明,区域ANPP的总量高达3.815×10 5 tC,而不考虑放牧的区域ANPP的总量将被高估44.4%,高达5.51。 ×10 5摄氏度这表明本研究得出的放牧参数可以有效提高ANPP模拟结果的准确性。因此,将时间序列遥感数据与过程模型相结合,模拟对草原ANPP的放牧影响是可行的。但是,在未来的工作中仍应考虑一些问题,例如选择适当的遥感数据,提高模型输入参数的质量,收集更多的现场数据以及探索数据同化方法。

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