当前栏目: 论文成果

Combining Regression Kriging With Machine Learning Mapping for Spatial Variable Estimation

发布时间:2025-04-29 点击次数:

影响因子: 4.0
DOI码: 10.1109/LGRS.2019.2914934
所属单位: 长江大学电子信息与电气工程学院
教研室: 电子系
发表刊物: IEEE Geoscience and Remote Sensing Letters
关键字: Geostatistical interpolation, machine learning mapping (MLM), regression kriging (RK), spatial estimation.
摘要: Abstract— Spatial variable estimation is a basic application of geostatistics. In general, this task is performed based on observations of limited points. For some cases, intensive observed data obtained from other sources are also available as the auxiliary variables. To utilize the auxiliary information in these data, methods such as regression kriging (RK) or cokriging are proposed. However, these methods all assume that the auxiliary variables keep linear correlation with the target variable implicitly, which is not satisfied in most cases. In this letter, through the combination of nonlinear machine learning mapping (MLM), we propose a novel hybrid method to relax the linear assumption of RK. The proposed method is applied to a real-world subsurface shale volume estimation task for demonstration. Compared with existing methods such as ordinary kriging, RK, and MLM, the relative estimation error reduction of the proposed method is larger than 10%. Meanwhile, the estimation resolution is also improved. This indicates that the proposed method provides an alternative way for further spatial variable estimation practices.
第一作者: 李修权
论文类型: SCI
学科门类: 工学
卷号: 17
期号: 1
页面范围: 27-31
发表时间: 2020-01-01
收录刊物: SCI
版权所有©长江大学 鄂ICP备05003301号-1 公网安备42100202000009号   访问量: 最后更新时间:..