Ensemble of surrogates and cross-validation for rapid and accurate predictions using small data sets

In engineering design, surrogate models are often used instead of costly computer simulations. Typically, a single surrogate model is selected based on the previous experience. We observe, based on an analysis of the published literature, that fitting an ensemble of surrogates (EoS) based on cross-v...

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Veröffentlicht in:AI EDAM 2019-11, Vol.33 (4), p.484-501
Hauptverfasser: Alizadeh, Reza, Jia, Liangyue, Nellippallil, Anand Balu, Wang, Guoxin, Hao, Jia, Allen, Janet K., Mistree, Farrokh
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container_end_page 501
container_issue 4
container_start_page 484
container_title AI EDAM
container_volume 33
creator Alizadeh, Reza
Jia, Liangyue
Nellippallil, Anand Balu
Wang, Guoxin
Hao, Jia
Allen, Janet K.
Mistree, Farrokh
description In engineering design, surrogate models are often used instead of costly computer simulations. Typically, a single surrogate model is selected based on the previous experience. We observe, based on an analysis of the published literature, that fitting an ensemble of surrogates (EoS) based on cross-validation errors is more accurate but requires more computational time. In this paper, we propose a method to build an EoS that is both accurate and less computationally expensive. In the proposed method, the EoS is a weighted average surrogate of response surface models, kriging, and radial basis functions based on overall cross-validation error. We demonstrate that created EoS is accurate than individual surrogates even when fewer data points are used, so computationally efficient with relatively insensitive predictions. We demonstrate the use of an EoS using hot rod rolling as an example. Finally, we include a rule-based template which can be used for other problems with similar requirements, for example, the computational time, required accuracy, and the size of the data.
doi_str_mv 10.1017/S089006041900026X
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source Cambridge Journals
subjects Accuracy
Computational efficiency
Computer simulation
Computing time
Data points
Design engineering
Efficiency
Genetic algorithms
Kriging interpolation
Neural networks
Optimization
Radial basis function
Response surface methodology
Simulation
title Ensemble of surrogates and cross-validation for rapid and accurate predictions using small data sets
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