Follow
Nick Pepper
Nick Pepper
The Alan Turing Institute
Verified email at turing.ac.uk
Title
Cited by
Cited by
Year
Machine learning methods in CFD for turbomachinery: A review
J Hammond, N Pepper, F Montomoli, V Michelassi
International Journal of Turbomachinery, Propulsion and Power 7 (2), 16, 2022
262022
Adaptive learning for reliability analysis using support vector machines
N Pepper, L Crespo, F Montomoli
Reliability Engineering & System Safety 226, 108635, 2022
222022
Multiscale uncertainty quantification with arbitrary polynomial chaos
N Pepper, F Montomoli, S Sharma
Computer Methods in Applied Mechanics and Engineering 357, 112571, 2019
182019
Data fusion for uncertainty quantification with non-intrusive polynomial chaos
N Pepper, F Montomoli, S Sharma
Computer Methods in Applied Mechanics and Engineering 374, 113577, 2021
102021
Meta-modeling on detailed geography for accurate prediction of invasive alien species dispersal
N Pepper, L Gerardo-Giorda, F Montomoli
Scientific Reports 9 (1), 16237, 2019
92019
Data-driven uncertainty quantification for Formula 1: Diffuser, wing tip and front wing variations
R Ahlfeld, F Ciampoli, M Pietropaoli, N Pepper, F Montomoli
Proceedings of the Institution of Mechanical Engineers, Part D: Journal of …, 2019
92019
Probabilistic machine learning to improve generalisation of data-driven turbulence modelling
J Ho, N Pepper, T Dodwell
arXiv preprint arXiv:2301.09443, 2023
7*2023
Local bi-fidelity field approximation with knowledge based neural networks for computational fluid dynamics
N Pepper, A Gaymann, S Sharma, F Montomoli
Scientific Reports 11 (1), 14459, 2021
72021
Identification of missing input distributions with an inverse multi-modal Polynomial Chaos approach based on scarce data
N Pepper, F Montomoli, S Sharma
Probabilistic Engineering Mechanics 65, 103138, 2021
32021
A probabilistic model for aircraft in climb using monotonic functional Gaussian process emulators
N Pepper, M Thomas, G De Ath, E Olivier, R Cannon, R Everson, ...
Proceedings of the Royal Society A 479 (2271), 20220607, 2023
22023
Multi-fidelity uncertainty quantification of high Reynolds number turbulent flow around a rectangular 5: 1 cylinder
M Sakuma, N Pepper, S Warnakulasuriya, F Montomoli, R Wuch-ner, ...
Wind and Structures 34 (1), 127-136, 2022
12022
Uncertainty Quantification and Missing Data for Turbomachinery With Probabilistic Equivalence and Arbitrary Polynomial Chaos, Applied to Scroll Compressors
N Pepper, F Montomoli, F Giacomel, G Cavazzini, M Pinelli, N Casari, ...
Turbo Expo: Power for Land, Sea, and Air 84225, V10BT28A007, 2020
12020
SeAr PC: Sensitivity Enhanced Arbitrary Polynomial Chaos
N Pepper, F Montomoli, K Kantarakias
arXiv preprint arXiv:2402.05507, 2024
2024
Learning Generative Models for Climbing Aircraft from Radar Data
N Pepper, M Thomas
Journal of Aerospace Information Systems, 1-8, 2024
2024
Context-Aware Generative Models for Prediction of Aircraft Ground Tracks
N Pepper, G De Ath, M Thomas, R Everson, T Dodwell
arXiv preprint arXiv:2309.14957, 2023
2023
Using remote sensing data within an optimal spatiotemporal model for invasive plant management: the case of Ailanthus altissima in the Alta Murgia National Park
CM Baker, P Blonda, F Casella, F Diele, C Marangi, A Martiradonna, ...
Scientific Reports 13 (1), 14587, 2023
2023
A Non-Parametric Histogram Interpolation Method for Design Space Exploration
N Pepper, F Montomoli, S Sharma
Journal of Mechanical Design 144 (8), 081703, 2022
2022
MULTI-FIDELITY UNCERTAINTY QUANTIFICATION OF THE FLOW AROUND A RECTANGULAR 5: 1 CYLINDER
M Sakuma, N Pepper, A Kodakkal, R Wüchner, KU Bletzinger, ...
IDENTIFYING INFORMATIVE FEATURES FOR DATA-DRIVEN TURBULENCE MODELLING
J Ho, N Pepper, T Dodwell
The system can't perform the operation now. Try again later.
Articles 1–19