Parameter fitting of variogram based on hybrid algorithm of particle swarm and artificial fish swarm

Variation function is an important tool for describing the spatial correlation characteristics of regionalized variables in geostatistical methods. Variation function modeling is an important part of kriging interpolation and will directly affect the accuracy of the final interpolation result. The p...

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Veröffentlicht in:Future generation computer systems Jg. 116; S. 265 - 274
Hauptverfasser: Zhang, Xialin, Lian, Lingkun, Zhu, Fukang
Format: Journal Article
Sprache:Englisch
Veröffentlicht: Elsevier B.V 01.03.2021
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ISSN:0167-739X, 1872-7115
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Zusammenfassung:Variation function is an important tool for describing the spatial correlation characteristics of regionalized variables in geostatistical methods. Variation function modeling is an important part of kriging interpolation and will directly affect the accuracy of the final interpolation result. The purpose of this work is to address the shortcomings of traditional variogram fitting methods, introduce particle swarm algorithm and artificial fish swarm algorithm under swarm intelligence framework, and design a variogram parameter fitting based on the hybrid algorithm of particle swarm and artificial fish swarm method. With this method, the minimum difference between the variation function fitting model and the given experimental variation value is utilized as the optimization goal. An appropriate objective function is set to convert it into a minimum problem. The hybrid algorithm has a strong search ability and convergence, as well as the ability to obtain the satisfactory fitness values. By comparing the results of the VARFIT fitting and the results of the optimization algorithm, it can be concluded that the absolute deviation of the fitting results of the optimization algorithm is 3.39 lower than the results of the VARFIT fitting. Compared with the traditional variogram modeling approach, this method has a strong optimization ability and high precision, and can effectively realize the automatic fitting of variogram parameters. •Using the VARFIT program and the algorithm in this paper to fit the experimental variogram, we can conclude that the effect of the algorithm in this paper is better than that in the VARFIT program.•Using particle swarm algorithm’s fast local convergence and artificial fish swarm’s global convergence, a new particle swarm artificial fish swarm hybrid optimization algorithm is proposed. The experimental results show that this method can effectively realize the automatic fitting of the variogram parameters, and the fitting effect is good.
ISSN:0167-739X
1872-7115
DOI:10.1016/j.future.2020.09.026