Metaheuristic Kriging: A New Spatial Estimation Method
Özet
Kriging is one of the most widely used spatial estimation method. In
kriging estimation, weights assigned to the neighboring data are determined by minimizing the estimation error variance (EEV). Due to
the minimization of the EEV the variability of the estimation result
is lower than the original data. This paper presents the metaheuristic
kriging (MK) as a new estimation method which has similar structure
with kriging. But unlike kriging MK does not minimize the estimation
error variance, instead converges to the EEV minimum which provides
MK to increase the variability of the estimation. The MK uses the
metaheuristic di erential evolution algorithm in minimization of the
EEV which gives names the MK. As a case study, Ordinary kriging
(OK) and MK are applied to the Jura data set to estimate the spatial
distribution of the Nickel (Ni) content. Results of the estimations are
compared. Results shows that metaheuristic kriging over performed to
the ordinary kriging in terms of variability of the estimation. The MK
can be used any place where kriging is applied due to the variability
of the estimation is higher than OK. The parameters used in MK are
case speci c so parameter tuning have to be made in the estimations
to reach the desired outcomes. This study only exposes the univariate
spatial estimation.
Bağlantı
https://doi.org/10.15672/HJMS.2017.418https://www.scopus.com/inward/record.url?eid=2-s2.0-85021069291&partnerID=40&md5=4d4460d13ad9e551eed1c4466d788a5f
http://hdl.handle.net/11655/21849