Data-Centric Safety: Challenges, Approaches, and Incident Investigation

Data-Centric Safety

Challenges, Approaches, and Incident Investigation
 
Publisher: Elsevier
Date of Publication:
 
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Product details:

ISBN13:9780128207901
ISBN10:0128207906
Binding:Paperback
No. of pages:540 pages
Size:276x215 mm
Weight:1480 g
Language:English
216
Category:
Long description:
Data-Centric Safety presents core concepts and principles of system safety management, and then guides the reader through the application of these techniques and measures to Data-Centric Systems (DCS). The authors have compiled their decades of experience in industry and academia to provide guidance on the management of safety risk. Data Safety has become increasingly important as many solutions depend on data for their correct and safe operation and assurance. The book's content covers the definition and use of data. It recognises that data is frequently used as the basis of operational decisions and that DCS are often used to reduce user oversight. This data is often invisible, hidden. DCS analysis is based on a Data Safety Model (DSM). The DSM provides the basis for a toolkit leading to improvement recommendations. It also discusses operation and oversight of DCS and the organisations that use them. The content covers incident management, providing an outline for incident response. Incident investigation is explored to address evidence collection and management.Current standards do not adequately address how to manage data (and the errors it may contain) and this leads to incidents, possibly loss of life. The DSM toolset is based on Interface Agreements to create soft boundaries to help engineers facilitate proportionate analysis, rationalisation and management of data safety. Data-Centric Safety is ideal for engineers who are working in the field of data safety management.


This book will help developers and safety engineers to:

  • Determine what data can be used in safety systems, and what it can be used for
  • Verify that the data being used is appropriate and has the right characteristics, illustrated through a set of application areas
  • Engineer their systems to ensure they are robust to data errors and failures


"A book that literally puts data where it should be - central to systems and systems thinking. The authors have created a comprehensive and detailed volume on the issues of data in systems. Many aspects are covered: some traditional areas, others new and developing (e.g. data in autonomous flight). It is a very wide-ranging book which describes data issues in lots of different contexts, in some cases this only touches on the problems but it provides lots of pointers and prompts for further thinking, including the concept of 'Scary Monsters' (open questions). There are some excellent colour diagrams which show the relationships between the data and other aspects of the systems under consideration. These help to make a complex topic more understandable. It is an academic reference work which includes copious definitions, abbreviations and references and provides a broad entry point into the world of Data Safety." -- Mike Parsons

Table of Contents:
I. Data-Centric Safety
1. Introduction
2. System Safety Management
3. Challenges to Systems Engineering

II. Data-Centric Fundamentals
4. Data Fundamentals
5. Data-Centric Systems
6. System Context
7. System Definition

III. Data-Centric Design
8. Data-Centric Architecture
9. Development
10. Acceptance and Approval

IV. Operational Management and Maintenance
11. Operational Matters
12. Live Management and Control

V. Incident Investigation
13. Major Incident Response
14. Investigation Management
15. DCI Investigation Methods
16. Incident Investigation
17. Investigation Methodology Maturity
18. Analysis as Part of a DCI
19. Incident Report

VI. Data Safety Model
20. Data Safety Model
21. Using the DSM
22. Validation

VII. Application Areas
23. Autonomous Flight
24. Enterprise
25. Healthcare

VIII. References