Sign up
Forgot password?
FAQ: Login

Oakland J., Oakland R. Statistical Process Control and Data Analytic

  • pdf file
  • size 30,17 MB
Oakland J., Oakland R. Statistical Process Control and Data Analytic
8th Edition. — Routledge, 2025. — 387 p. — ISBN: 978-1-032-56902-4.
Now entitled Statistical Process Control and Data Analytics, this revised and updated eighth edition retains its focus on processes that require understanding, have variation, must be properly controlled, have a capability, and need improvement – as reflected in the five sections of the book. In this book, the authors provide not only an instructional guide for the tools but also communicate the management practices that have become so vital to success in organizations throughout the world. The book is supported by the author's extensive consulting work with thousands of organizations worldwide. A new chapter on data governance and data analytics reflects the increasing importance of Big Data in today’s business environment.
Fully updated to include real-life case studies, new research based on client work from an array of industries, and integration with the latest computer methods and software, the book also retains its valued textbook quality through clear learning objectives and online end-of-chapter discussion questions. It can still serve as a textbook for both student and practicing engineers, scientists, technologists, managers, and anyone wishing to understand or implement modern statistical process control techniques and data analytics.
‘Big Data’ (very large complex data sets, sometimes explained by the use of five Vs: volume, variety, veracity, value, and velocity), machine learning (ML), robotics, Artificial Intelligence (AI), the Internet of Things (IoT) and cloud computing will continue to greatly impact industry and business/organization models. The amount of data is constantly growing, but learning from more data depends massively on the data being collected and used correctly if we are not going to see increases in variation in processes through a lack of understanding of aggregated or filtered data with selected algorithms. That is why the application of modified SPC approaches, methods, and tools is still an essential part of making this transformation in the world of big data. When designing and using any large complex system involving data streams, data collection/aggregation, data analytics, and algorithms, it is important to measure its performance in terms of the system’s ‘correctness’ – how often it gives the right answer, the right decision/instruction.
Process understanding
Quality, processes, and control.
Understanding the process.
Process data collection and presentation.
Process variability
Variation – understanding and decision-making.
Variables and process variation.
Process control
Process control using variables.
Other types of control charts for variables.
Process control by attributes.
Cumulative sum (cusum) charts.
Process capability
Process capability for variables and their measurement.
Process improvement
Process problem-solving and improvement.
Managing out-of-control processes.
Designing the statistical process control system.
Six-sigma process quality.
Data governance and data analytics.
  • Sign up or login using form at top of the page to download this file.
  • Sign up
Up