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Uncertainty Forecasting in Engineering

By: M�ller, Bernd [author.1].
Contributor(s): Reuter, Uwe [author.2 ] | SpringerLink (Online service)0.
Material type: materialTypeLabelBookBerlin, Heidelberg : Springer Berlin Heidelberg, 2007. Description: XIV, 202 p. online resource.Content type: text Media type: computer Carrier type: online resourceISBN: 9783540371762.Subject(s): Statistics. 0 | Probabilities. 0 | Mechanics. 0 | Mechanics, Applied. 0 | Buildings -- Design and construction. 0 | Building. 0 | Construction. 0 | Engineering, Architectural.14 | Statistics.24 | Statistics for Engineering, Physics, Computer Science, Chemistry and Earth Sciences.24 | Theoretical and Applied Mechanics.24 | Environmental Monitoring/Analysis.24 | Building Construction.24 | Probability Theory and Stochastic Processes.1DDC classification: 519.5 Online resources: Click here to access online
Contents:
Mathematical Description of Uncertain Data -- Analysis of Time Series Comprised of Uncertain Data -- Forecasting of Time Series Comprised of Uncertain Data -- Uncertain Forecasting in Engineering and Environmental Science.
In: Springer eBooks08Summary: This book deals with uncertainty forecasting based on a fuzzy time series approach, including fuzzy random processes and artificial neural networks. A consideration of data and measurement uncertainty enhances forecasting in a wide range of applications, particularly in the fields of engineering, environmental science and civil engineering. Uncertain data are described by means of a new incremental fuzzy representation which permits a complete and accurate estimation of uncertainty. The book is aimed at engineers as well as professionals working in related fields. Descriptive, modeling and forecasting methods pertaining to fuzzy time series are introduced and explained in detail. Emphasis is placed on forecasting with the aid of fuzzy random processes, such as fuzzy ARMA processes and fuzzy white-noise processes, as well as forecasting based on artificial neural networks. All numerical algorithms are comprehensively described and demonstrated by way of practical examples. 0
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PK Kelkar Library, IIT Kanpur
Available EBK9315
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Mathematical Description of Uncertain Data -- Analysis of Time Series Comprised of Uncertain Data -- Forecasting of Time Series Comprised of Uncertain Data -- Uncertain Forecasting in Engineering and Environmental Science.

This book deals with uncertainty forecasting based on a fuzzy time series approach, including fuzzy random processes and artificial neural networks. A consideration of data and measurement uncertainty enhances forecasting in a wide range of applications, particularly in the fields of engineering, environmental science and civil engineering. Uncertain data are described by means of a new incremental fuzzy representation which permits a complete and accurate estimation of uncertainty. The book is aimed at engineers as well as professionals working in related fields. Descriptive, modeling and forecasting methods pertaining to fuzzy time series are introduced and explained in detail. Emphasis is placed on forecasting with the aid of fuzzy random processes, such as fuzzy ARMA processes and fuzzy white-noise processes, as well as forecasting based on artificial neural networks. All numerical algorithms are comprehensively described and demonstrated by way of practical examples. 0

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