Kriging with Composite Kernel Learning for Surrogate Modeling in Computer Experiments

Author(s):  
Pramudita S. Palar ◽  
Koji Shimoyama
Technometrics ◽  
2014 ◽  
Vol 56 (3) ◽  
pp. 372-380 ◽  
Author(s):  
Rui Tuo ◽  
C. F. Jeff Wu ◽  
Dan Yu

2021 ◽  
Vol 42 (16) ◽  
pp. 6068-6091
Author(s):  
Zhe Wu ◽  
Jianjun Liu ◽  
Jinlong Yang ◽  
Zhiyong Xiao ◽  
Liang Xiao

Author(s):  
S. Niazmardi ◽  
A. Safari ◽  
S. Homayouni

Crop mapping through classification of Satellite Image Time-Series (SITS) data can provide very valuable information for several agricultural applications, such as crop monitoring, yield estimation, and crop inventory. However, the SITS data classification is not straightforward. Because different images of a SITS data have different levels of information regarding the classification problems. Moreover, the SITS data is a four-dimensional data that cannot be classified using the conventional classification algorithms. To address these issues in this paper, we presented a classification strategy based on Multiple Kernel Learning (MKL) algorithms for SITS data classification. In this strategy, initially different kernels are constructed from different images of the SITS data and then they are combined into a composite kernel using the MKL algorithms. The composite kernel, once constructed, can be used for the classification of the data using the kernel-based classification algorithms. We compared the computational time and the classification performances of the proposed classification strategy using different MKL algorithms for the purpose of crop mapping. The considered MKL algorithms are: MKL-Sum, SimpleMKL, LPMKL and Group-Lasso MKL algorithms. The experimental tests of the proposed strategy on two SITS data sets, acquired by SPOT satellite sensors, showed that this strategy was able to provide better performances when compared to the standard classification algorithm. The results also showed that the optimization method of the used MKL algorithms affects both the computational time and classification accuracy of this strategy.


AIAA Journal ◽  
2020 ◽  
Vol 58 (4) ◽  
pp. 1864-1880 ◽  
Author(s):  
Pramudita Satria Palar ◽  
Lavi Rizki Zuhal ◽  
Koji Shimoyama

Author(s):  
Felipe A. C. Viana ◽  
Christian Gogu ◽  
Raphael T. Haftka

Design analysis and optimization based on high-fidelity computer experiments is commonly expensive. Surrogate modeling is often the tool of choice for reducing the computational burden. However, even after years of intensive research, surrogate modeling still involves a struggle to achieve maximum accuracy within limited resources. This work summarizes advanced and yet simple statistical tools that help. We focus on four techniques with increasing popularity in the design automation community: (i) screening and variable reduction in both the input and the output spaces, (ii) simultaneous use of multiple surrogates, (iii) sequential sampling and optimization, and (iv) conservative estimators.


2009 ◽  
Vol 79 (1-2) ◽  
pp. 73-103 ◽  
Author(s):  
Marie Szafranski ◽  
Yves Grandvalet ◽  
Alain Rakotomamonjy

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