This paper introduces a probabilistic machine learning framework for the uncertainty quantification (UQ) of electronic circuits based on Gaussian process regression (GPR). As opposed to classical surrogate modeling techniques, GPR inherently provides information on the model uncertainty. The main contribution of this work is twofold. First, it describes how, in an UQ scenario, the model uncertainty can be combined with the uncertainty of the input design parameters to provide confidence bounds for the statistical estimates of the system outputs, such as moments and probability distributions. These confidence bounds allows assessing the accuracy of the predicted statistics. Second, in order to deal with dynamic multi-output systems, principa...
\u3cp\u3eA generalised probabilistic framework is proposed for reliability assessment and uncertaint...
Uncertainty quantification (UQ) has become a necessary step in the design of most modern engineering...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This paper discusses the application of a probabilistic surrogate modeling technique, based on Gauss...
This paper presents a preliminary version of a probabilistic model for the uncertainty quantificatio...
This paper presents a preliminary version of an active learning (AL) scheme for the sample selection...
This paper provides a quick overview on three machine learning regression techniques for the uncerta...
This paper presents a preliminary version of a probabilistic model for the uncertainty quantificatio...
This paper deals with the application of the support vector machine (SVM) and the least-squares SVM ...
On top of machine learning (ML) models, uncertainty quantification (UQ) functions as an essential la...
This paper presents an innovative modeling strategy for the construction of efficient and compact su...
In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow ...
In today's semiconductor technology, the size of a transistor is made smaller and smaller. One of th...
Semiconductor fabrication relies heavily on the precision and accuracy of its individual processes i...
Modeling the effects of uncertainty is of crucial importance in the signal integrity and Electromagn...
\u3cp\u3eA generalised probabilistic framework is proposed for reliability assessment and uncertaint...
Uncertainty quantification (UQ) has become a necessary step in the design of most modern engineering...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This paper discusses the application of a probabilistic surrogate modeling technique, based on Gauss...
This paper presents a preliminary version of a probabilistic model for the uncertainty quantificatio...
This paper presents a preliminary version of an active learning (AL) scheme for the sample selection...
This paper provides a quick overview on three machine learning regression techniques for the uncerta...
This paper presents a preliminary version of a probabilistic model for the uncertainty quantificatio...
This paper deals with the application of the support vector machine (SVM) and the least-squares SVM ...
On top of machine learning (ML) models, uncertainty quantification (UQ) functions as an essential la...
This paper presents an innovative modeling strategy for the construction of efficient and compact su...
In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow ...
In today's semiconductor technology, the size of a transistor is made smaller and smaller. One of th...
Semiconductor fabrication relies heavily on the precision and accuracy of its individual processes i...
Modeling the effects of uncertainty is of crucial importance in the signal integrity and Electromagn...
\u3cp\u3eA generalised probabilistic framework is proposed for reliability assessment and uncertaint...
Uncertainty quantification (UQ) has become a necessary step in the design of most modern engineering...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...