Follow
Felipe A. C. Viana
Felipe A. C. Viana
Other namesFelipe Antonio Chegury Viana, Felipe Viana
Head of Applied Research
Verified email at articul8.ai
Title
Cited by
Cited by
Year
Multiple surrogates: how cross-validation errors can help us to obtain the best predictor
FAC Viana, RT Haftka, V Steffen
Structural and Multidisciplinary Optimization 39 (4), 439-457, 2009
4792009
Metamodeling in Multidisciplinary Design Optimization: How Far Have We Really Come?
FAC Viana, TW Simpson, V Balabanov, V Toropov
AIAA Journal 52 (4), 670-690, 2014
442*2014
Design and analysis of computer experiments in multidisciplinary design optimization: a review of how far we have come or not
TW Simpson, V Toropov, V Balabanov, FAC Viana
12th AIAA/ISSMO Multidisciplinary Analysis and Optimization Conference, AIAA …, 2008
4182008
An algorithm for fast optimal Latin hypercube design of experiments
FAC Viana, G Venter, V Balabanov
International Journal for Numerical Methods in Engineering 82 (2), 135-156, 2010
3982010
Efficient global optimization algorithm assisted by multiple surrogate techniques
FAC Viana, RT Haftka, LT Watson
Journal of Global Optimization 56 (2), 669-689, 2013
2982013
A Tutorial on Latin Hypercube Design of Experiments
FAC Viana
Quality and Reliability Engineering International, 2015
2372015
Things you wanted to know about the Latin hypercube design and were afraid to ask
FAC Viana
10th World Congress on Structural and Multidisciplinary Optimization …, 2013
1492013
SURROGATES toolbox user’s guide
FAC Viana
Users manual, http://fchegury. googlepages. com, 2009
148*2009
Multimodal vibration damping through piezoelectric patches and optimal resonant shunt circuits
FAC Viana, V Steffen Jr
Journal of the Brazilian Society of Mechanical Sciences and Engineering 28 …, 2006
1322006
Hybrid physics-informed neural networks for lithium-ion battery modeling and prognosis
RG Nascimento, M Corbetta, CS Kulkarni, FAC Viana
Journal of Power Sources 513, 230526, 2021
1252021
Making the most out of surrogate models: tricks of the trade
FAC Viana, C Gogu, RT Haftka
ASME 2010 International Design Engineering Technical Conferences & Computers …, 2010
1202010
A tutorial on solving ordinary differential equations using Python and hybrid physics-informed neural network
RG Nascimento, K Fricke, FAC Viana
Engineering Applications of Artificial Intelligence 96, DOI: 10.1016/j …, 2020
1192020
Physics-informed neural networks for missing physics estimation in cumulative damage models: a case study in corrosion fatigue
A Dourado, FAC Viana
ASME Journal of Computing and Information Science in Engineering, 2020
1092020
A physics-informed neural network for wind turbine main bearing fatigue
YA Yucesan, FAC Viana
International Journal of Prognostics and Health Management 11 (1), 2020
1022020
Tuning dynamic vibration absorbers by using ant colony optimization
FAC Viana, GI Kotinda, DA Rade, V Steffen Jr
Computers & Structures 86 (13-14), 1539-1549, 2008
782008
Surrogate-based optimization with parallel simulations using the probability of improvement
FAC Viana, RT Haftka
13th AIAA/ISSMO Multidisciplinary Analysis and Optimization Conference, AIAA …, 2010
772010
A survey of modeling for prognosis and health management of industrial equipment
YA Yucesan, A Dourado, FAC Viana
Advanced Engineering Informatics 50, 101404, 2021
752021
Estimating model inadequacy in ordinary differential equations with physics-informed neural networks
FAC Viana, RG Nascimento, A Dourado, YA Yucesan
Computers and Structures 245, 106458 (DOI: 10.1016/j.compstruc.2020.10, 2021
712021
Fleet Prognosis with Physics-informed Recurrent Neural Networks
RG Nascimento, FAC Viana
The 12th International Workshop on Structural Health Monitoring, 2019
712019
A hybrid physics-informed neural network for main bearing fatigue prognosis under grease quality variation
YA Yucesan, FAC Viana
Mechanical Systems and Signal Processing 171, 108875, 2022
662022
The system can't perform the operation now. Try again later.
Articles 1–20