A Least Squares Ensemble Model Based on Regularization and Augmentation Strategy

Surrogate models are often used as alternatives to considerably reduce the computational burden of the expensive computer simulations that are required for engineering designs. The development of surrogate models for complex relationships between the parameters often requires the modeling of high-di...

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Main Authors: Peng Zhang, Shuyou Zhang, Xiaojian Liu, Lemiao Qiu, Guodong Yi
Format: Article
Language:English
Published: MDPI AG 2019-05-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/9/9/1845
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spelling doaj-5fd5ce8664bc41768d3f6743277a54cc2020-11-25T01:14:20ZengMDPI AGApplied Sciences2076-34172019-05-0199184510.3390/app9091845app9091845A Least Squares Ensemble Model Based on Regularization and Augmentation StrategyPeng Zhang0Shuyou Zhang1Xiaojian Liu2Lemiao Qiu3Guodong Yi4State Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University, Hangzhou 310027, ChinaState Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University, Hangzhou 310027, ChinaState Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University, Hangzhou 310027, ChinaState Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University, Hangzhou 310027, ChinaState Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University, Hangzhou 310027, ChinaSurrogate models are often used as alternatives to considerably reduce the computational burden of the expensive computer simulations that are required for engineering designs. The development of surrogate models for complex relationships between the parameters often requires the modeling of high-dimensional functions with limited information, and it is challenging to choose an effective surrogate model over the unknown design space. To this end, the ensemble models—combined with different surrogate models—offer effective solutions. This paper presents a new ensemble model based on the least squares method, which is a regularization strategy and an augmentation strategy; we call the model the regularized least squares ensemble model (RLS-EM). Three individual surrogate models—Kriging, radial basis function, and support vector regression—are used to compose the RLS-EM. Further, the weight factors are estimated by the least squares method without using the global or local error metrics, which are used in most existing methods. To solve the collinearity in the least squares calculation process, a regularization strategy and an augmentation strategy are developed. The two strategies help explore the unknown regions and improve the accuracy on one hand; on the other hand, the collinearity can be reduced, and the overfitting phenomenon that may occur can be avoided. Six numerical functions, from two-dimensional to 12-dimensional, and a computer numerical control (CNC) milling machine bed design problem are used to verify the proposed method. The results of the numerical examples show that RLS-EM saves a considerable amount of computation time while ensuring the same level of robustness and accuracy compared with other ensemble models. The RLS-EM used for the CNC milling machine bed design problem also shows good accuracy characteristics compared with other ensemble methods.https://www.mdpi.com/2076-3417/9/9/1845ensemble modelregularized least squarescomputer simulationsaugmentation strategy
collection DOAJ
language English
format Article
sources DOAJ
author Peng Zhang
Shuyou Zhang
Xiaojian Liu
Lemiao Qiu
Guodong Yi
spellingShingle Peng Zhang
Shuyou Zhang
Xiaojian Liu
Lemiao Qiu
Guodong Yi
A Least Squares Ensemble Model Based on Regularization and Augmentation Strategy
Applied Sciences
ensemble model
regularized least squares
computer simulations
augmentation strategy
author_facet Peng Zhang
Shuyou Zhang
Xiaojian Liu
Lemiao Qiu
Guodong Yi
author_sort Peng Zhang
title A Least Squares Ensemble Model Based on Regularization and Augmentation Strategy
title_short A Least Squares Ensemble Model Based on Regularization and Augmentation Strategy
title_full A Least Squares Ensemble Model Based on Regularization and Augmentation Strategy
title_fullStr A Least Squares Ensemble Model Based on Regularization and Augmentation Strategy
title_full_unstemmed A Least Squares Ensemble Model Based on Regularization and Augmentation Strategy
title_sort least squares ensemble model based on regularization and augmentation strategy
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2019-05-01
description Surrogate models are often used as alternatives to considerably reduce the computational burden of the expensive computer simulations that are required for engineering designs. The development of surrogate models for complex relationships between the parameters often requires the modeling of high-dimensional functions with limited information, and it is challenging to choose an effective surrogate model over the unknown design space. To this end, the ensemble models—combined with different surrogate models—offer effective solutions. This paper presents a new ensemble model based on the least squares method, which is a regularization strategy and an augmentation strategy; we call the model the regularized least squares ensemble model (RLS-EM). Three individual surrogate models—Kriging, radial basis function, and support vector regression—are used to compose the RLS-EM. Further, the weight factors are estimated by the least squares method without using the global or local error metrics, which are used in most existing methods. To solve the collinearity in the least squares calculation process, a regularization strategy and an augmentation strategy are developed. The two strategies help explore the unknown regions and improve the accuracy on one hand; on the other hand, the collinearity can be reduced, and the overfitting phenomenon that may occur can be avoided. Six numerical functions, from two-dimensional to 12-dimensional, and a computer numerical control (CNC) milling machine bed design problem are used to verify the proposed method. The results of the numerical examples show that RLS-EM saves a considerable amount of computation time while ensuring the same level of robustness and accuracy compared with other ensemble models. The RLS-EM used for the CNC milling machine bed design problem also shows good accuracy characteristics compared with other ensemble methods.
topic ensemble model
regularized least squares
computer simulations
augmentation strategy
url https://www.mdpi.com/2076-3417/9/9/1845
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