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E-raamat: Probabilistic Prognostics and Health Management of Energy Systems

  • Formaat: PDF+DRM
  • Ilmumisaeg: 25-Apr-2017
  • Kirjastus: Springer International Publishing AG
  • Keel: eng
  • ISBN-13: 9783319558523
  • Formaat - PDF+DRM
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  • See e-raamat on mõeldud ainult isiklikuks kasutamiseks. E-raamatuid ei saa tagastada.
  • Formaat: PDF+DRM
  • Ilmumisaeg: 25-Apr-2017
  • Kirjastus: Springer International Publishing AG
  • Keel: eng
  • ISBN-13: 9783319558523

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This book proposes the formulation of an efficient methodology that estimates energy system uncertainty and predicts Remaining Useful Life (RUL) accurately with significantly reduced RUL prediction uncertainty. 

Renewable and non-renewable sources of energy are being used to supply the demands of societies worldwide. These sources are mainly thermo-chemo-electro-mechanical systems that are subject to uncertainty in future loading conditions, material properties, process noise, and other design parameters.It book informs the reader of existing and new ideas that will be implemented in RUL prediction of energy systems in the future. 

The book provides case studies, illustrations, graphs, and charts. Its chapters consider engineering, reliability, prognostics and health management, probabilistic multibody dynamical analysis, peridynamic and finite-element modelling, computer science, and mathematics.


Part I Trends and Applications
Probabilistic Prognostics and Health Management: A Brief Summary
3(6)
Fisseha M. Alemayehu
Stephen Ekwaro-Osire
Introduction to Data-Driven Methodologies for Prognostics and Health Management
9(24)
Jay Lee
Chao Jin
Zongchang Liu
Hossein Davari Ardakani
Prognostics and Health Management of Wind Turbines---Current Status and Future Opportunities
33(16)
Shuangwen Sheng
Overview on Gear Health Prognostics
49(18)
Fuqiong Zhao
Zhigang Tian
Yong Zeng
Probabilistic Model-Based Prognostics Using Meshfree Modeling
67(24)
Stephen Ekwaro-Osire
Haileyesus Belay Endeshaw
Fisseha M. Alemayehu
Ozhan Gecgel
Cognitive Architectures for Prognostic Health Management
91(20)
James A. Crowder
John N. Carbone
Part II Modeling and Uncertainty Quantification
A Review of Crack Propagation Modeling Using Peridynamics
111(16)
Joao Paulo Dias
Marcio Antonio Bazani
Amarildo Tabone Paschoalini
Luciano Barbanti
Modeling and Quantification of Physical Systems Uncertainties in a Probabilistic Framework
127(30)
Americo Cunha Jr.
Towards a More Robust Understanding of the Uncertainty of Wind Farm Reliability
157(12)
Carsten H. Westergaard
Shawn B. Martin
Jonathan R. White
Charles M. Carter
Benjamin Karlson
Data Analysis in Python: Anonymized Features and Imbalanced Data Target
169(20)
Emanuel Rocha Woiski
The Use of Trend Lines Channels and Remaining Useful Life Prediction
189(6)
Luciano Barbanti
Berenice Camargo Damasceno
Aparecido Carlos Goncalves
Hadamez Kuzminskas
The Derivative as a Probabilistic Synthesis of Past and Future Data and Remaining Useful Life Prediction
195(8)
Berenice Camargo Damasceno
Luciano Barbanti
Hadamez Kuzminskas
Marcio Antonio Bazani
Part III Condition Monitoring
Monitoring and Fault Identification in Aeronautical Structures Using an Wavelet-Artificial Immune System Algorithm
203(18)
Fernando P.A. Lima
Fabio R. Chavarette
Simone S.F. Souza
Mara L.M. Lopes
An Illustration of Some Methods to Detect Faults in Geared Systems Using a Simple Model of Two Meshed Gears
221(20)
Fabricio Cesar Lobato de Almeida
Aparecido Carlos Goncalves
Michael John Brennan
Amarildo T. Paschoalini
A. Arato Junior
Erickson F.M. Silva
Condition Monitoring of Structures Under Non-ideal Excitation Using Low Cost Equipment
241(22)
Paulo J. Paupitz Goncalves
Marcos Silveira
Maintenance Management and Case Studies in the Luis Carlos Prestes Thermoelectric Power Plant
263(8)
Bernardo Botamede
Leonardo Leucas
Marcelo Pelegrini
Stiffness Nonlinearity in Structural Dynamics: Our Friend or Enemy?
271
Michael John Brennan
Dr. Stephen Ekwaro-Osire is a full professor in the Department of Mechanical Engineering, and a licensed professional engineer in the state of Texas, USA. He was recently a Fulbright Scholar and the associate dean of research and graduate programs in the Whitacre College of Engineering. Dr. Ekwaro-Osires research interests are engineering design, wind energy, vibrations, probabilistic prognostics and health management, and orthopedic biomechanics. He has more than 160 refereed publications, 45 of these in archival journals. He has supervised and graduated 32 doctoral and master's students. He is an active member of the American Society for Engineering Education, the American Society of Mechanical Engineers, the Society for Design and Process Science, the American Society of Biomechanics, and the Society for Experimental Mechanics.



Dr. Fisseha Meresa Alemayehu received his B.Sc. from Addis Ababa University, Ethiopia, his M.Sc. from TU Delft, The Netherlands and his Ph.D. from Texas Tech University, all in Mechanical Engineering. He joined the School of Engineering, Computer Science and Mathematics in 2016 as an Assistant Professor of Mechanical Engineering. Previously, he has worked as an Assistant Professor at Penn State University for two years and as Post-Doctoral Research Associate at Texas Tech University for one year. He was also a visiting scholar for more than two months in the National Wind Technology Center of National Renewable Energy Laboratory. His research areas include Probabilistic Prognostics and Health Management, Reliability of Renewable Energy Systems, Probabilistic Design, Probabilistic Multibody Dynamic Analysis and Teaching and Assessment Effectiveness. His research outputs have been presented in international as well as national Conferences and workshops and he has published research articles in International Journal of Mechanical Engineering Education, Journal of Mechanical Design, Journal of Computational and Nonlinear Dynamics and in several conference proceedings. 

Prof. Dr. Aparecido Carlos Gonçalves graduated in Mechanical Engineering by University of Sao Paulo, Brazil in 1989. In 1993 he got a Master Degree, in Metallurgical Engineering, by University of Sao Paulo, Brazil. In 1997 he got his PhD in Mechanical Engineering also by University of Sao Paulo, Brazil. In the past he had actuated in Powder Injection Moulding and was referee of some Journal in the area. Today he is a Professor from University of State of Sao Paulo, Brazil where he was coordinator of Mechanical Project area for six years. He assembled a Laboratory of Oil Analysis and Tribology and now he is the Lab coordinator. He has Projects funded by the three main Grants agencies from Brazil: (FINEP Fund for Studies and Projects; FAPESP- State of Sao Paulo Research Foundation and CNPq- National Research Council). Nowadays he actuates in Predictive Maintenance, Oil Analysis, vibration Analysis, Tribology andMechanical Project. He is academic advisor and teacher the follow disciplines: Lubricant and Lubrication, Tribology, Predictive Maintenance, Solid Mechanical and Mechanical Design. He has oriented several graduate and undergraduate students.