This unique text/reference describes in detail the latest advances in unsupervised process monitoring and fault diagnosis with machine learning methods. Abundant case studies throughout the text demonstrate the efficacy of each method in real-world settings. The broad coverage examines such cutting-edge topics as the use of information theory to enhance unsupervised learning in tree-based methods, the extension of kernel methods to multiple kernel learning for feature extraction from data, and the incremental training of multilayer perceptrons to construct deep architectures for enhanced data projections. Topics and features: discusses machine learning frameworks based on artificial neural networks, statistical learning theory and kernel-based methods, and tree-based methods; examines the application of machine learning to steady state and dynamic operations, with a focus on unsupervised learning; describes the use of spectral methods in process fault diagnosis.
[25] J. Mori and J. Yu, “Quality relevant nonlinear batch process performance monitoring using a kernel based multiway non-Gaussian latent subspace projection approach,” J. Process Control, vol. 24, no. 1, pp. 57–71, 2014.
This book aims to provide readers with the current information, developments, and trends in a time series analysis, particularly in time series data patterns, technical methodologies, and real-world applications.
... Unsupervised Process Monitoring and Fault Diagnosis with Machine Learning Methods . Springer , London ( 2013 ) 12. Venkatasubramanian , V. , Rengaswamy , R. , Yin , K. , Kavuri , S.N .: A review of process fault detection and diagnosis ...
Viewed as a guide book, this manual will lead a practitioner through the journey of a data science project in the oil and gas industry circumventing the pitfalls and articulating the business value.
M. M. Rashid and J. Yu. A new dissimilarity method integrating multidimensional mutual information and independent component analysis for non-gaussian dynamic process monitoring. Chemometrices and Intelligent Laboratory Systems, ...
... monitoring, the quality‐relevant diagnosis has only been recently developed (Li et al., 2010; Qin and Zheng, 2013; Zhu et al., 2017). Unlike diagnosis based on ... MACHINE LEARNING MODELING 10.5 ML APPLICATIONS IN THE PROCESS INDUSTRY.
... Unsupervised Process Monitoring and Fault Diagnosis with Machine Learning Methods. Springer Publishing Company, Incorporated, 2013. ISBN 1447151844. A. Amrane, A. Larabi, and A. Aitouche. Fault detection and. After pairing up these ...
The present edition brings together past experience, current work and promising future trends associated with distributed computing, artificial intelligence and their application in order to provide efficient solutions to real problems.
... machine learning approach based on response time and reliability for islanding detection of distributed generation. IET Renew. Power Gener. 11 (11), 1392–1400. Aldrich, C., Auret, L., 2013. Unsupervised Process Monitoring and Fault ...
[1] [2] [4] [5] [6] [7] [9] [10] Ben-Haim Y, Elishakoff I. Convex models of uncertainty in applied mechanics. Amsterdam: Elsevier Science Publishers; 1990. Elishakoff I. Essay on uncertainties in elastic and viscoelastic structures: ...