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Intelligent and Soft Computing in Infrastructure Systems Engineering [electronic resource] : Recent Advances / edited by Kasthurirangan Gopalakrishnan, Halil Ceylan, Nii O. Attoh-Okine.

By: Contributor(s): Material type: TextTextSeries: Studies in Computational Intelligence ; 259Publisher: Berlin, Heidelberg : Springer Berlin Heidelberg, 2009Description: X, 325 p. online resourceContent type:
  • text
Media type:
  • computer
Carrier type:
  • online resource
ISBN:
  • 9783642045868
Subject(s): Additional physical formats: Printed edition:: No titleDDC classification:
  • 519 23
LOC classification:
  • TA329-348
  • TA640-643
Online resources:
Contents:
Rapid Interpretation of Nondestructive Testing Results Using Neural Networks -- Probabilistic Inversion: A New Approach to Inversion Problems in Pavement and Geomechanical Engineering -- Neural Networks Application in Pavement Infrastructure Materials -- Backcalculation of Flexible Pavements Using Soft Computing -- Knowledge Discovery and Data Mining Using Artificial Intelligence to Unravel Porous Asphalt Concrete in the Netherlands -- Backcalculation of Pavement Layer Thickness and Moduli Using Adaptive Neuro-fuzzy Inference System -- Case Studies of Asphalt Pavement Analysis/Design with Application of the Genetic Algorithm -- Extended Kalman Filter and Its Application in Pavement Engineering -- Hybrid Stochastic Global Optimization Scheme for Rapid Pavement Backcalculation -- Regression and Artificial Neural Network Modeling of Resilient Modulus of Subgrade Soils for Pavement Design Applications -- Application of Soft Computing Techniques to Expansive Soil Characterization.
In: Springer eBooksSummary: The use of intelligent and soft computing techniques in the field of geomechanical and pavement engineering has steadily increased over the past decade owing to their ability to admit approximate reasoning, imprecision, uncertainty and partial truth. Since real-life infrastructure engineering decisions are made in ambiguous environments that require human expertise, the application of soft computing techniques has been an attractive option in pavement and geomechanical modeling. The objective of this carefully edited book is to highlight key recent advances made in the application of soft computing techniques in pavement and geomechanical systems. Soft computing techniques discussed in this book include, but are not limited to: neural networks, evolutionary computing, swarm intelligence, probabilistic modeling, kernel machines, knowledge discovery and data mining, neuro-fuzzy systems and hybrid approaches. Highlighted application areas include infrastructure materials modeling, pavement analysis and design, rapid interpretation of nondestructive testing results, porous asphalt concrete distress modeling, model parameter identification, pavement engineering inversion problems, subgrade soils characterization, and backcalculation of pavement layer thickness and moduli. Researchers and practitioners engaged in developing and applying soft computing and intelligent systems principles to solving real-world infrastructure engineering problems will find this book very useful. This book will also serve as an excellent state-of-the-art reference material for graduate and postgraduate students in transportation infrastructure engineering.
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E-Book E-Book Central Library Available E-46288

Rapid Interpretation of Nondestructive Testing Results Using Neural Networks -- Probabilistic Inversion: A New Approach to Inversion Problems in Pavement and Geomechanical Engineering -- Neural Networks Application in Pavement Infrastructure Materials -- Backcalculation of Flexible Pavements Using Soft Computing -- Knowledge Discovery and Data Mining Using Artificial Intelligence to Unravel Porous Asphalt Concrete in the Netherlands -- Backcalculation of Pavement Layer Thickness and Moduli Using Adaptive Neuro-fuzzy Inference System -- Case Studies of Asphalt Pavement Analysis/Design with Application of the Genetic Algorithm -- Extended Kalman Filter and Its Application in Pavement Engineering -- Hybrid Stochastic Global Optimization Scheme for Rapid Pavement Backcalculation -- Regression and Artificial Neural Network Modeling of Resilient Modulus of Subgrade Soils for Pavement Design Applications -- Application of Soft Computing Techniques to Expansive Soil Characterization.

The use of intelligent and soft computing techniques in the field of geomechanical and pavement engineering has steadily increased over the past decade owing to their ability to admit approximate reasoning, imprecision, uncertainty and partial truth. Since real-life infrastructure engineering decisions are made in ambiguous environments that require human expertise, the application of soft computing techniques has been an attractive option in pavement and geomechanical modeling. The objective of this carefully edited book is to highlight key recent advances made in the application of soft computing techniques in pavement and geomechanical systems. Soft computing techniques discussed in this book include, but are not limited to: neural networks, evolutionary computing, swarm intelligence, probabilistic modeling, kernel machines, knowledge discovery and data mining, neuro-fuzzy systems and hybrid approaches. Highlighted application areas include infrastructure materials modeling, pavement analysis and design, rapid interpretation of nondestructive testing results, porous asphalt concrete distress modeling, model parameter identification, pavement engineering inversion problems, subgrade soils characterization, and backcalculation of pavement layer thickness and moduli. Researchers and practitioners engaged in developing and applying soft computing and intelligent systems principles to solving real-world infrastructure engineering problems will find this book very useful. This book will also serve as an excellent state-of-the-art reference material for graduate and postgraduate students in transportation infrastructure engineering.

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