Image-based process monitoring using low-rank tensor decomposition H Yan, K Paynabar, J Shi IEEE Transactions on Automation Science and Engineering 12 (1), 216-227, 2014 | 169 | 2014 |
An overview and perspective on social network monitoring WH Woodall, MJ Zhao, K Paynabar, R Sparks, JD Wilson IISE Transactions 49 (3), 354-365, 2017 | 142 | 2017 |
Real-time monitoring of high-dimensional functional data streams via spatio-temporal smooth sparse decomposition H Yan, K Paynabar, J Shi Technometrics 60 (2), 181-197, 2018 | 132 | 2018 |
A change-point approach for phase-I analysis in multivariate profile monitoring and diagnosis K Paynabar, C Zou, P Qiu Technometrics 58 (2), 191-204, 2016 | 131 | 2016 |
Feature selection for manufacturing process monitoring using cross-validation C Shao, K Paynabar, TH Kim, JJ Jin, SJ Hu, JP Spicer, H Wang, JA Abell Journal of Manufacturing Systems 32 (4), 550-555, 2013 | 131 | 2013 |
Anomaly detection in images with smooth background via smooth-sparse decomposition H Yan, K Paynabar, J Shi Technometrics 59 (1), 102-114, 2017 | 124 | 2017 |
Analysis of multichannel nonlinear profiles using uncorrelated multilinear principal component analysis with applications in fault detection and diagnosis K Paynabar, J Jin, M Pacella IIE Transactions 45 (11), 1235-1247, 2013 | 103* | 2013 |
Multistream sensor fusion-based prognostics model for systems with single failure modes X Fang, K Paynabar, N Gebraeel Reliability Engineering & System Safety 159, 322-331, 2017 | 101 | 2017 |
Multiple tensor-on-tensor regression: An approach for modeling processes with heterogeneous sources of data MR Gahrooei, H Yan, K Paynabar, J Shi Technometrics 63 (2), 147-159, 2021 | 88 | 2021 |
Monitoring temporal homogeneity in attributed network streams B Azarnoush, K Paynabar, J Bekki, G Runger Journal of Quality Technology 48 (1), 28-43, 2016 | 81 | 2016 |
Characterization of non-linear profiles variations using mixed-effect models and wavelets K Paynabar, J Jin IIE transactions 43 (4), 275-290, 2011 | 81 | 2011 |
Phase I risk-adjusted control charts for monitoring surgical performance by considering categorical covariates K Paynabar, J Jin, AB Yeh Journal of Quality Technology 44 (1), 39-53, 2012 | 80 | 2012 |
Real-time detection of clustered events in video-imaging data with applications to additive manufacturing H Yan, M Grasso, K Paynabar, BM Colosimo IISE Transactions 54 (5), 464-480, 2022 | 65 | 2022 |
Detection and differentiation of replay attack and equipment faults in SCADA systems D Li, N Gebraeel, K Paynabar IEEE Transactions on Automation Science and Engineering 18 (4), 1626-1639, 2020 | 61 | 2020 |
Structured point cloud data analysis via regularized tensor regression for process modeling and optimization H Yan, K Paynabar, M Pacella Technometrics, 2019 | 60 | 2019 |
Multi-robot coordination for estimation and coverage of unknown spatial fields A Benevento, M Santos, G Notarstefano, K Paynabar, M Bloch, ... 2020 ieee international conference on robotics and automation (icra), 7740-7746, 2020 | 57 | 2020 |
Dataset: rare event classification in multivariate time series C Ranjan, M Reddy, M Mustonen, K Paynabar, K Pourak arXiv preprint arXiv:1809.10717, 2018 | 56 | 2018 |
Repeatability of cerebral perfusion using dynamic susceptibility contrast MRI in glioblastoma patients K Jafari-Khouzani, KE Emblem, J Kalpathy-Cramer, A Bjørnerud, ... Translational oncology 8 (3), 137-146, 2015 | 55 | 2015 |
Identifying the period of a step change in high‐yield processes R Noorossana, A Saghaei, K Paynabar, S Abdi Quality and Reliability Engineering International 25 (7), 875-883, 2009 | 54 | 2009 |
Scalable prognostic models for large-scale condition monitoring applications X Fang, NZ Gebraeel, K Paynabar IISE Transactions 49 (7), 698-710, 2017 | 52 | 2017 |