Statistical Process Monitoring Using Advanced Data-Driven and Deep Learning Approaches tackles multivariate challenges in process monitoring by merging the advantages of univariate and traditional multivariate techniques to enhance their performance and widen their practical applicability. The book proceeds with merging the desirable properties of shallow learning approaches – such as a one-class support vector machine and k-nearest neighbours and unsupervised deep learning approaches – to develop more sophisticated and efficient monitoring techniques. Finally, the developed approaches are applied to monitor many processes, such as waste-water treatment plants, detection of obstacles in driving environments for autonomous robots and vehicles, robot swarm, chemical processes (continuous stirred tank reactor, plug flow rector, and distillation columns), ozone pollution, road traffic congestion, and solar photovoltaic systems. Uses a data-driven based approach to fault detection and attribution Provides an in-depth understanding of fault detection and attribution in complex and multivariate systems Familiarises you with the most suitable data-driven based techniques including multivariate statistical techniques and deep learning-based methods Includes case studies and comparison of different methods
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This book introduces the latest research on advanced control charts and new machine learning approaches to detect abnormalities in the smart manufacturing process.
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Control and process engineers, and academic researchers in the process monitoring, process control and fault detection and isolation (FDI) disciplines will be interested in this book.
D. Hoang and H. Kang, “A survey on deep learning based bearing fault diagnosis,” Neurocomputing, vol. ... J.-M. Lee, C. Yoo, S. Choi, P. Vanrolleghem, and I.-B. Lee, “Nonlinear process monitoring using kernel principal component ...
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This new data lake environment on the shopfloor, combined with real-time data analytics and Advanced Process ... quality control methods to new available techniques based on Machine Learning (ML) [10] for advanced (big) data analytics.
Application of machine learning techniques for data-driven modeling of value-creating processes promises ... Therefore, it is of utmost importance for economic progress to advance existing approaches and develop novel ways to monitor, ...
This book is a collective work by a number of leading scientists, analysts, engineers, mathematicians and statisticians who have been working at the forefront of data analysis.