Kriging for interpolation in random simulation 论文

2003Journal of the Operational Research Society引用 279
Soil Geostatistics and Mapping3D Modeling in Geospatial ApplicationsAdvanced Multi-Objective Optimization Algorithms

详细信息

发表期刊/会议
Journal of the Operational Research Society
发表日期
2003-03-01
发表年份
2003

关键词

Soil Geostatistics and Mapping3D Modeling in Geospatial ApplicationsAdvanced Multi-Objective Optimization Algorithms

摘要

Whenever simulation requires much computer time, interpolation is needed. Simulationists use different interpolation techniques (eg linear regression), but this paper focuses on Kriging. This technique was originally developed in geostatistics by DG Krige, and has recently been widely applied in deterministic simulation. This paper, however, focuses on random or stochastic simulation. Essentially, Kriging gives more weight to ‘neighbouring’ observations. There are several types of Kriging; this paper discusses—besides Ordinary Kriging—a novel type, which ‘detrends’ data through the use of linear regression. Results are presented for two examples of input/output behaviour of the underlying random simulation model: Ordinary and Detrended Kriging give quite acceptable predictions; traditional linear regression gives the worst results.