...
首页> 外文期刊>Water resources research >Spatiotemporal Analysis of Soil Moisture and Optimal Sampling Design for Regional-Scale Soil Moisture Estimation in a Tropical Watershed of India
【24h】

Spatiotemporal Analysis of Soil Moisture and Optimal Sampling Design for Regional-Scale Soil Moisture Estimation in a Tropical Watershed of India

机译:印度热带水域区域规模土壤水分估算土壤湿度和最优采样设计的时空分析

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Regional-scale soil moisture estimates are essential for several hydrological applications and for validating remote sensing-based soil moisture products. Characterization of the regional-scale soil moisture variability requires a robust in situ monitoring strategy at point scale to balance between representativeness and minimization of monitoring cost. In this study an optimal sampling design was determined to capture the spatiotemporal variability of soil moisture at watershed scale. The study was conducted for the typical Indian conditions of extreme seasonal variability that leads to very wet (during monsoon) to dry (during hot summer) in the eastern India. Soil moisture monitoring was done at 83 locations in an agricultural watershed of 500 km(2) for 56 days of field campaigns across a year. Based on the analyses of 41,832 measurements collected during field campaigns, it was found that maximum numbers of required locations necessary to estimate watershed-mean soil moisture within +/- 2% accuracy are 30. Moreover, five randomly selected locations were found to be sufficient for capturing the temporal variability of watershed-mean soil moisture with an accuracy of +/- 3%. In addition, five most representative locations identified through time stability analysis can provide robust estimate of watershed-mean soil moisture with accuracy of +/- 2%. Further, soil properties and topography are identified as significant physical parameters that jointly control the spatiotemporal persistence and variability of soil moisture in the Indian watershed. These findings will be quite useful to provide guidelines for optimizing short-term soil moisture campaigns by sampling at few selected points representative of the watershed-mean behavior.Plain Language Summary Soil moisture observations and their spatiotemporal analysis are critical for many hydrologic applications. However, few studies have ever been conducted in tropical watersheds of India. Rice cultivation and monsoon precipitation of the region creates a different hydroclimatic scenario for soil moisture dynamics as compared to other regions of the world. Using 56 ground-based soil moisture monitoring campaigns at 83 locations in an agricultural watershed of 500 km2 across a year, this study provides insight to the soil moisture spatiotemporal variability and temporal stability features. Based on 41,832 measurements collected during field campaigns, it was found that maximum numbers of required locations necessary to estimate watershed-mean soil moisture within +/- 2% accuracy are 30. Moreover, five randomly selected locations were found to be sufficient for capturing the temporal variability of watershed-mean soil moisture with an accuracy of +/- 3%. In fact, five most representative locations identified through time stability analysis can provide robust estimate of watershed-mean soil moisture with accuracy of +/- 2%. These findings will be quite useful to provide guidelines for optimizing short-term soil moisture campaigns by sampling at few selected points representative of the watershed-mean behavior.
机译:区域规模的土壤水分估算对于多种水文应用是必不可少的,并用于验证遥感的土壤水分产品。区域规模土壤湿度可变性的表征需要在点尺度方面稳健,以平衡代表性与监测成本的最小化。在这项研究中,确定了最佳采样设计,以捕获流域水分的时空变化。该研究是针对典型的印度季节性变异性的条件进行,导致印度东部冬季潮湿(季风)干燥(炎热夏季)。土壤水分监测在83个地点在500公里(2)的农业分水岭,每年56天的野外活动。基于在现场运动期间收集的41,832次测量的分析,发现估计流域的最大位置所需的最大位置是+/- 2%精度的水分为30.此外,发现五个随机选择的位置足够了用于捕获流域的时间变异性,精度为+/- 3%。此外,通过时间稳定性分析确定的五个最具代表性地点可以提供具有+/- 2%的精度的流域平均土壤水分的鲁棒估计。此外,土壤性质和地形被确定为显着的物理参数,共同控制印度流域土壤水分的时空持久性和变异性。这些调查结果非常有用,可以通过在分水岭 - 平均行为的少数选定点的少数选定的选定点来提供优化短期土壤水分活动的准则。术语摘要土壤水分观察及其时空分析对于许多水文应用至关重要。然而,曾在印度的热带流域进行过很少进行。与世界其他地区相比,该地区的水稻栽培和季风沉淀为土壤水分动力学产生了不同的循环情景。该研究使用56个地面土壤水分监测活动,在500平方公里的500平方公里的农业分水岭500平方公里,对土壤湿度造空虚和时间稳定特征进行了见解。基于在现场运动期间收集的41,832次测量,发现估计分水岭 - 平均水分在+/- 2%的精度内所需的最大数量是30.此外,发现五个随机选择的位置足以捕获流域的时间变异性,精度为+/- 3%。事实上,通过时间稳定性分析确定的五个最具代表性地区可以为流域的平均土壤水分提供鲁棒估计,精度为+/- 2%。这些调查结果非常有用,可以通过在少数选定的分歧平均行为的选定点采样来提供用于优化短期土壤湿度活动的准则。

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