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Muddu Madakyaru  Ph.D
Muddu Madakyaru Ph.D
Additional Professor, Manipal Institute of Technology, Manipal Academy of Higher Education, Manipal
Verified email at manipal.edu
Title
Cited by
Cited by
Year
Statistical fault detection using PCA-based GLR hypothesis testing
F Harrou, MN Nounou, HN Nounou, M Madakyaru
Journal of loss prevention in the process industries 26 (1), 129-139, 2013
1092013
PLS-based EWMA fault detection strategy for process monitoring
F Harrou, MN Nounou, HN Nounou, M Madakyaru
Journal of Loss Prevention in the Process Industries 36, 108-119, 2015
922015
Black anodizing of a magnesium-lithium alloy
AK Sharma, RU Rani, A Malek, KSN Acharya, M Muddu, S Kumar
Metal Finishing 94 (4), 16, 1996
871996
Statistical process monitoring using advanced data-driven and deep learning approaches: theory and practical applications
F Harrou, Y Sun, AS Hering, M Madakyaru
Elsevier, 2020
742020
Improved data-based fault detection strategy and application to distillation columns
M Madakyaru, F Harrou, Y Sun
Process Safety and Environmental Protection 107, 22-34, 2017
532017
Kullback-leibler distance-based enhanced detection of incipient anomalies
F Harrou, Y Sun, M Madakyaru
Journal of Loss Prevention in the Process Industries 44, 73-87, 2016
472016
An improved multivariate chart using partial least squares with continuous ranked probability score
F Harrou, Y Sun, M Madakyaru, B Bouyedou
IEEE Sensors Journal 18 (16), 6715-6726, 2018
462018
Reparametrized ARX models for predictive control of staged and packed bed distillation columns
M Muddu, A Narang, SC Patwardhan
Control engineering practice 18 (2), 114-130, 2010
252010
Improved detection of incipient anomalies via multivariate memory monitoring charts: Application to an air flow heating system
F Harrou, M Madakyaru, Y Sun, S Khadraoui
Applied Thermal Engineering 109, 65-74, 2016
242016
Improved nonlinear fault detection strategy based on the Hellinger distance metric: Plug flow reactor monitoring
F Harrou, M Madakyaru, Y Sun
Energy and Buildings 143, 149-161, 2017
232017
Monitoring distillation column systems using improved nonlinear partial least squares-based strategies
M Madakyaru, F Harrou, Y Sun
IEEE Sensors Journal 19 (23), 11697-11705, 2019
192019
Improved process monitoring scheme using multi-scale independent component analysis
KR Kini, M Madakyaru
Arabian Journal for Science and Engineering 47 (5), 5985-6000, 2022
152022
Improved process monitoring strategy using Kantorovich distance-independent component analysis: An application to Tennessee Eastman process
KR Kini, M Madakyaru
IEEE Access 8, 205863-205877, 2020
142020
Development of ARX models for predictive control using fractional order and orthonormal basis filter parametrization
M Madakyaru, A Narang, SC Patwardhan
Industrial & engineering chemistry research 48 (19), 8966-8979, 2009
142009
Unsupervised deep learning-based process monitoring methods
F Harrou, Y Sun, AS Hering, M Madakyaru, A Dairi
Statistical Process Monitoring Using Advanced Data-Driven and Deep Learning …, 2021
122021
Development of ARX models for predictive control using fractional order and orthonormal basis filter parameterization
M Muddu, A Narang, SC Patwardhan
Ind. Eng. Chem. Res 48 (19), 8966-8979, 2009
122009
Improved anomaly detection using multi-scale PLS and generalized likelihood ratio test
M Madakyaru, F Harrou, Y Sun
2016 IEEE Symposium Series on Computational Intelligence (SSCI), 1-6, 2016
112016
Linear inferential modeling: theoretical perspectives, extensions, and comparative analysis
M Madakyaru, MN Nounou, HN Nounou
Scientific Research Publishing, 2012
112012
Unsupervised recurrent deep learning scheme for process monitoring
F Harrou, Y Sun, AS Hering, M Madakyaru, A Dairi
Elsevier BV, 2021
92021
Anomaly detection using multi-scale dynamic principal component analysis for Tenneesse Eastman Process
KR Kini, M Madakyaru
2019 Fifth Indian Control Conference (ICC), 219-224, 2019
92019
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