Uncertainty in Industrial Practice: A Guide to Quantitative Uncertainty ManagementISBN: 978-0-470-99447-4
Hardcover
364 pages
June 2008
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Managing uncertainties in industrial systems is a daily challenge
to ensure improved design, robust operation, accountable
performance and responsive risk control. Authored by a leading
European network of experts representing a cross section of
industries, Uncertainty in Industrial Practice aims to provide a
reference for the dissemination of uncertainty treatment in any
type of industry. It is concerned with the quantification of
uncertainties in the presence of data, model(s) and knowledge about
the system, and offers a technical contribution to decision-making
processes whilst acknowledging industrial constraints. The approach
presented can be applied to a range of different business contexts,
from research or early design through to certification or
in-service processes. The authors aim to foster optimal trade-offs
between literature-referenced methodologies and the simplified
approaches often inevitable in practice, owing to data, time or
budget limitations of technical decision-makers.
Uncertainty in Industrial Practice:
- Features recent uncertainty case studies carried out in the nuclear, air & space, oil, mechanical and civil engineering industries set in a common methodological framework.
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Presents methods for organizing and treating uncertainties in a generic and prioritized perspective.
- Illustrates practical difficulties and solutions encountered according to the level of complexity, information available and regulatory and financial constraints.
- Discusses best practice in uncertainty modeling, propagation and sensitivity analysis through a variety of statistical and numerical methods.
- Reviews recent standards, references and available software, providing an essential resource for engineers and risk analysts in a wide variety of industries.
This book provides a guide to dealing with quantitative uncertainty in engineering and modelling and is aimed at practitioners, including risk-industry regulators and academics wishing to develop industry-realistic methodologies.