B-DeepONet: An enhanced Bayesian DeepONet for solving noisy parametric PDEs using accelerated replica exchange SGLD G Lin, C Moya, Z Zhang Journal of Computational Physics 473, 111713, 2023 | 67* | 2023 |
Deeponet-grid-uq: A trustworthy deep operator framework for predicting the power grid’s post-fault trajectories C Moya, S Zhang, G Lin, M Yue Neurocomputing 535, 166-182, 2023 | 52 | 2023 |
DAE-PINN: a physics-informed neural network model for simulating differential algebraic equations with application to power networks C Moya, G Lin Neural Computing and Applications 35 (5), 3789-3804, 2023 | 46 | 2023 |
Learning the dynamical response of nonlinear non-autonomous dynamical systems with deep operator neural networks G Lin, C Moya, Z Zhang Engineering Applications of Artificial Intelligence 125, 106689, 2023 | 35* | 2023 |
A hierarchical framework for demand-side frequency control C Moya, W Zhang, J Lian, K Kalsi 2014 American Control Conference, 52-57, 2014 | 29 | 2014 |
Developing correlation indices to identify coordinated cyber‐attacks on power grids C Moya, J Wang IET Cyber‐Physical Systems: Theory & Applications 3 (4), 178-186, 2018 | 21 | 2018 |
Semantic analysis framework for protecting the power grid against monitoring‐control attacks J Wang, G Constante, C Moya, J Hong IET Cyber‐Physical Systems: Theory & Applications 5 (1), 119-126, 2020 | 19* | 2020 |
Fed-deeponet: Stochastic gradient-based federated training of deep operator networks C Moya, G Lin Algorithms 15 (9), 325, 2022 | 16 | 2022 |
Deep operator learning-based surrogate models with uncertainty quantification for optimizing internal cooling channel rib profiles I Sahin, C Moya, A Mollaali, G Lin, G Paniagua International Journal of Heat and Mass Transfer 219, 124813, 2024 | 15 | 2024 |
Frequency responsive demand in US western power system model MA Elizondo, K Kalsi, CM Calderon, W Zhang 2015 IEEE Power & Energy Society General Meeting, 1-5, 2015 | 15 | 2015 |
Deepgraphonet: A deep graph operator network to learn and zero-shot transfer the dynamic response of networked systems Y Sun, C Moya, G Lin, M Yue IEEE Systems Journal, 1-11, 2023 | 14 | 2023 |
Distributed smart grid asset control strategies for providing ancillary services K Kalsi, W Zhang, J Lian, LD Marinovici, C Moya, JE Dagle Pacific Northwest National Lab.(PNNL), Richland, WA (United States), 2013 | 14 | 2013 |
On approximating the dynamic response of synchronous generators via operator learning: A step towards building deep operator-based power grid simulators C Moya, G Lin, T Zhao, M Yue arXiv preprint arXiv:2301.12538, 2023 | 13 | 2023 |
NSGA-PINN: a multi-objective optimization method for physics-informed neural network training B Lu, C Moya, G Lin Algorithms 16 (4), 194, 2023 | 10 | 2023 |
Conformalized-deeponet: A distribution-free framework for uncertainty quantification in deep operator networks C Moya, A Mollaali, Z Zhang, L Lu, G Lin Physica D: Nonlinear Phenomena 471, 134418, 2025 | 9 | 2025 |
D2no: Efficient handling of heterogeneous input function spaces with distributed deep neural operators Z Zhang, C Moya, L Lu, G Lin, H Schaeffer Computer Methods in Applied Mechanics and Engineering 428, 117084, 2024 | 9 | 2024 |
Bayesian deep operator learning for homogenized to fine-scale maps for multiscale PDE Z Zhang, C Moya, WT Leung, G Lin, H Schaeffer Multiscale Modeling & Simulation 22 (3), 956-972, 2024 | 7 | 2024 |
A cyber-physical testbed design for the electric power grid Z O'Toole, C Moya, C Rubin, A Schnabel, J Wang 2019 North American Power Symposium (NAPS), 1-5, 2019 | 7 | 2019 |
Accelerating approximate thompson sampling with underdamped langevin monte carlo H Zheng, W Deng, C Moya, G Lin International Conference on Artificial Intelligence and Statistics, 2611-2619, 2024 | 6 | 2024 |
Bayesian, multifidelity operator learning for complex engineering systems–a position paper C Moya, G Lin Journal of Computing and Information Science in Engineering 23 (6), 2023 | 5 | 2023 |