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Trusted Artificial Intelligence in Manufacturing

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The ebook edition of this title is Open Access and freely available to read online. This book is co-authored by the STAR consortium members and provides a review of technologies, techniques and sys...
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  • 22 November 2021
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The ebook edition of this title is Open Access and freely available to read online.

The successful deployment of AI solutions in manufacturing environments hinges on their security, safety and reliability which becomes more challenging in settings where multiple AI systems (e.g., industrial robots, robotic cells, Deep Neural Networks (DNNs)) interact as atomic systems and with humans. To guarantee the safe and reliable operation of AI systems in the shopfloor, there is a need to address many challenges in the scope of complex, heterogeneous, dynamic and unpredictable environments. Specifically, data reliability, human machine interaction, security, transparency and explainability challenges need to be addressed at the same time. Recent advances in AI research (e.g., in deep neural networks security and explainable AI (XAI) systems), coupled with novel research outcomes in the formal specification and verification of AI systems provide a sound basis for safe and reliable AI deployments in production lines. Moreover, the legal and regulatory dimension of safe and reliable AI solutions in production lines must be considered as well.

To address some of the above listed challenges, fifteen European Organizations collaborate in the scope of the STAR project, a research initiative funded by the European Commission in the scope of its H2020 program (Grant Agreement Number: 956573). STAR researches, develops, and validates novel technologies that enable AI systems to acquire knowledge in order to take timely and safe decisions in dynamic and unpredictable environments. Moreover, the project researches and delivers approaches that enable AI systems to confront sophisticated adversaries and to remain robust against security attacks.

This book is co-authored by the STAR consortium members and provides a review of technologies, techniques and systems for trusted, ethical, and secure AI in manufacturing. The different chapters of the book cover systems and technologies for industrial data reliability, responsible and transparent artificial intelligence systems, human centered manufacturing systems such as human-centred digital twins, cyber-defence in AI systems, simulated reality systems, human robot collaboration systems, as well as automated mobile robots for manufacturing environments. A variety of cutting-edge AI technologies are employed by these systems including deep neural networks, reinforcement learning systems, and explainable artificial intelligence systems. Furthermore, relevant standards and applicable regulations are discussed. Beyond reviewing state of the art standards and technologies, the book illustrates how the STAR research goes beyond the state of the art, towards enabling and showcasing human-centred technologies in production lines. Emphasis is put on dynamic human in the loop scenarios, where ethical, transparent, and trusted AI systems co-exist with human workers. The book is made available as an open access publication, which could make it broadly and freely available to the AI and smart manufacturing communities.

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Price: $110.00
Pages: 248
Publisher: Emerald Publishing Limited
Imprint: Now Publishers Inc
Publication Date: 22 November 2021
ISBN: 9781680838763
Format: Hardcover
BISACs: COMPUTERS / Artificial Intelligence / General, Artificial intelligence (AI)
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John Soldatos holds a PhD in Electrical & Computer Engineering from the National Technical University of Athens (2000) and is currently Honorary Research Fellow at the University of Glasgow, UK (2014-present). He was Associate Professor and Head of the Internet of Things (IoT) Group at the Athens Information Technology (AIT), Greece (2006-2019), and Adjunct Professor at the Carnegie Mellon University, Pittsburgh, PA (2007-2010). Since January 2020 he is a Senior R&D Consultant Innovation Delivery Specialist with INTRASOFT International.

Dimosthenis Kyriazis is an Associate Professor at University of Piraeus (Department of Digital Systems). He received his diploma from the school of Electrical and Computer Engineering of the National Technical University of Athens (NTUA) in 2001 and his MSc degree in "Techno-economics" in 2004. Since 2007, he holds a PhD in the area of Service Oriented Architectures with a focus on quality aspects and workflow management.

Preface
Chapter 1. Blockchain based Data Provenance for Trusted Artificial Intelligence
Chapter 2. Artificial Intelligence and Secure Manufacturing: Filling Gaps in Making Industrial Environments Safer
Chapter 3. Knowledge Modelling and Active Learning in Manufacturing
Chapter 4. Multimodal Human Machine Interactions in Industrial Environments
Chapter 5. A Review of Explainable Artificial Intelligence in Manufacturing
Chapter 6. Confidence Assessment of AI Models in Simulated Industrial Environments
Chapter 7. The Human-Digital Twin in the manufacturing industry: current perspectives and a glimpse of future
Chapter 8. Video Analytics for Situation Awareness Safe Robot-Human Cohabitation In Production Lines
Chapter 9. Human in the Loop of AI Systems in Manufacturing
Chapter 10. A Review of Industrial Standards for AI in manufacturing
Chapter 11. AI that Works