Sparse polynomial chaos expansion for universal stochastic kriging
Metadatos
Mostrar el registro completo del ítemEditorial
Elsevier
Materia
Kriging Least angle regression Polynomial chaos expansion
Fecha
2024-01-26Referencia bibliográfica
García-Merino, J. C., Carmen Calvo-Jurado, and Enrique García-Macías. Sparse polynomial chaos expansion for universal stochastic kriging. Journal of Computational and Applied Mathematics 444 (2024) 115794 [10.1016/j.cam.2024.115794]
Patrocinador
Ministerio de Ciencia e Innovación (Spain) [PID2020-116809GB-I00]; Junta de Extremadura (Spain) through Research Group Grants [GR18023]; European Regional Development Fund (ERDF); Junta de Extremadura, Spain (Ref. IB20040); Ministerio de Ciencia e Innovación (Spain) through the research project ‘‘BRIDGEXT - Life-extension of ageing bridges: Towards a long-term sustainable Structural Health Monitoring’’ (Ref. PID2020-116644RB-I00)Resumen
Surrogate modelling techniques have opened up new possibilities to overcome the limitations
of computationally intensive numerical models in various areas of engineering and science.
However, while fundamental in many engineering applications and decision-making, the
incorporation of uncertainty quantification into meta-models remains a challenging open area
of research. To address this issue, this paper presents a novel stochastic simulation approach
combining sparse polynomial chaos expansion (PCE) and Stochastic Kriging (SK). Specifically,
the proposed approach adopts adaptive sparse PCE as the trend model in SK, achieving both
global and local prediction capabilities and maximizing the role of the stochastic term to conduct
uncertainty quantification. To maximize the generalization and computational efficiency
of the meta-model, the Least Angle Regression (LAR) algorithm is adopted to automatically
select the optimal polynomial basis in the PCE. The computational effectiveness and accuracy
of the proposed approach are appraised through a comprehensive set of case studies and
different quality metrics. The presented numerical results and discussion demonstrate the
superior performance of the proposed approach compared to the classical ordinary SK model,
offering high flexibility for the characterization of both extrinsic and intrinsic uncertainty for
a wide variety of problems.





