首页> 外文OA文献 >Coupling of dielectric mixing models with full-wave ground-penetrating radar signal inversion for sandy-soil-moisture estimation
【2h】

Coupling of dielectric mixing models with full-wave ground-penetrating radar signal inversion for sandy-soil-moisture estimation

机译:介电混合模型与全波探地雷达信号反演的耦合,用于沙土土壤水分估算

摘要

We coupled dielectric mixing models with a full-wave ground-penetrating-radar (GPR) model to estimate the soil water content by inversion. Two mixing models were taken into account in this study, namely, a power law model and the Wang and Schmugge model.With this combination, we could account for the frequency dependence of the dielectric permittivity and apparent conductivity in the inverse algorithm and directly estimate the soil water content without using an empirical petrophysical formula or a priori knowledge on soil porosity. The approach was validated by a series of experiments with sandy soil in controlled laboratory conditions. The results showed that the performance of our approach is better than the common approach, which assumes a linear dependence of apparent conductivity on frequency and uses Topp’s equation to transform permittivity to water content. GPR data were perfectly reproduced in the time and frequency domains, leading to very accurate water-content estimates with an average absolute error of less than 0.013 cm3∕cm3. However, the accuracy was reduced as the water content increased. Sensitivity analysis indicated that the Green’s function was most sensitive to the water content and sand-layer thickness but much less so with DC conductivity. The results also revealed that as the frequency increased, although the permittivity was nearly constant, the apparent electrical conductivity and the attenuation increased remarkably, especially for wet sands due to dielectric losses. The successful validation of the proposed approach opens a promising avenue of development to use dielectric mixing models for soil-moisture mapping from GPR measurements.
机译:我们将介电混合模型与全波地面穿透雷达(GPR)模型耦合,以通过反演估算土壤含水量。本研究考虑了两种混合模型,分别是幂律模型和Wang和Schmugge模型,通过这种组合,我们可以在逆算法中考虑介电常数和视在电导率的频率依赖性,并直接估算无需使用经验岩石物理公式或土壤孔隙度先验知识的土壤水分含量。通过在受控实验室条件下用沙土进行的一系列实验验证了该方法。结果表明,我们的方法的性能优于常规方法,后者假设视在电导率与频率呈线性关系,并使用Topp方程将介电常数转换为水含量。 GPR数据在时域和频域得到了完美的再现,从而得出了非常准确的含水量估计值,平均绝对误差小于0.013 cm3×cm3。但是,精度随着水含量的增加而降低。灵敏度分析表明,格林函数对水含量和沙层厚度最敏感,而对直流电导率的影响较小。结果还表明,随着频率的增加,尽管介电常数几乎恒定,但表观电导率和衰减显着增加,尤其是由于介电损耗引起的湿沙。该方法的成功验证为使用介电混合模型进行GPR测量中的土壤水分测绘开辟了广阔的发展前景。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

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