Advanced Data Acquisition and Intelligent Data Processing
★★★★★
★★★★★
English
DAQ and data processing is a basic part of all automated production systems, diagnostic systems, watching over quality of production, energy distribution, transport control or in various other areas. Demands on the speed, accuracy and reliability increase in general. It is possible to achieve not only using superior (but also more expensive) hardware, but also applying advanced data acquisition and intelligent data processing. It deals e.g. optimal data fusion of a number of sensors, new stochastic methods for accuracy increasing, new algorithms for acceleration of data processing, etc. These are the grounds for publishing this book. Advanced Data Acquisition and Intelligent Data Processing offers 10 up-to-date examples of different applications of advanced data acquisition and intelligent data processing used in monitoring, measuring and diagnostics systems. The book arose based on the most interesting papers from this area published at IDAACS?2013 conference. However, the indivudual chapters include not only designed solution in wider context but also relevant theoretical parts, achieved results and possible future ways.Technical topics discussed in this book include: advanced methods of data acquisition in application that are not routine; measured data fusion using up-to-date advanced data processing; nonlinear dynamical systems identification; multidimensional image processing.Advanced Data Acquisition and Intelligent Data Processing is ideal for personnel of firms deals with advanced instrumentation, energy consumption monitoring, environment monitoring, non-descructive diagnostics robotics, etc., as well as academic staff and postgraduate students in electrical, control and computer engineering.Content: 1. Introduction; 2. Waveform acquisition with resolutions exceeding those of the ADC employed; 3. Different Disaggregation Algorithms in Non-Intrusive Home Energy Monitoring Systems; 4. Design and testing of an electronic nose system sensitive to the aroma of truffles; 5. DAQ System for Ultrasonic Transducer Evaluation under Spread Spectrum Excitation; 6. Optimal Data Fusion in Decentralized Stochastic Unknown Input Observers; 7. Odor Classification by Neural Networks; 8. ANFIS Based Approach for Improved Multisensors Signal Processing; 9. Neuro-Fuzzy Sensor's Linearization Based FPGA; 10. Interpolation Method of Nonlinear Dynamical Systems Identification Based on Volterra Model in Frequency Domain ; 11. Training Cellular Automata for Hyperspectral Image Segmentation
See more
Current price
€122.54
Original price
€128.99
Save 5%
Delivery/Collection within 10-20 working days
Product Details
Weight: 620g
Dimensions: 156 x 234mm
Publication Date: 15 May 2014
Publisher: River Publishers
Publication City/Country: Denmark
Language: English
ISBN13: 9788793102736
About
Vladimir Haasz finished Czech Technical University (CTU) in Prague Faculty of Electrical Engineering (FEE) in 1972 (branch Technological Cybernetics) and since that year he has been with Department of Measurement. In 1977 he obtained his Ph.D. degree and in 1991 he defended his habilitation thesis. In 1994 - 1995 he spent the half-year at ETH Zurich as a senior researcher. He was named as Full Professor of Measurement Technology in 1999. He managed the Department of Measurement at CTU-FEE 1997 - 2008 and 2011 - 2014. Vladimir Haasz is a member of TC 12 Quantities and Values of the Czech Institute of Standardization of IMEKO (International Measurement Confederation) TC-4 - Measurement of Electrical Quantities and of the editorial board of International Journal of Computing. He has been the honorary member of the Scientific Counsel of CTU 2011 - 2013. He is interested in the field of measuring systems of electrical quantities sampling methods of measurement of non-harmonic waveforms and in the last years especially in testing of dynamic quality of AD modules and their EMC. He gives lectures on the basic courses Electrical Measurement and Instrumentation and Sensors and Measurement and on the optional course Advanced Instrumentation. Kurosh Madani graduated in fundamental physics in June 1985 from PARIS 7 - Jussieu University (Paris France) he received his MSc. in Microelectronics and complex processors' architecture from University PARIS 11 (PARIS-SUD) Orsay France in September 1986. He received his Ph.D. in Electrical Engineering and Computer Sciences from University PARIS 11 (PARIS-SUD) Orsay France in February 1990. From 1989 to 1990 he worked as assistant professor at Institut d'Electronique Fondamentale (Institute of Fundamental Electronics) of PARIS 11 University and CNRS (National Center of Scientific Research) Orsay France. In 1990 he joined Creteil-Senart Institute of Technology of University PARIS-EST Creteil (UPEC) Lieusaint France where he worked from 1990 to 1998 as assistant professor. In 1995 he received the DHDR Doctor Hab. degree (senior research doctorate degree) from UPEC. Since 1998 he has been working as Chair Professor in Electrical Engineering of Senart Institute of Technology of UPEC. From 1992 to 2000 he was creator and head of DRN (Neural Networks Division) research group in LERISS laboratory of UPEC. From 2001 to 2004 he has been head of Intelligence in Instrumentation and Systems Laboratory of UPEC located at Senart Institute of Technology. Director of SCTIC research division one of the two research divisions of Images Signals and Intelligent Systems Laboratory (LISSI / EA 3956) of UPEC from 2005 to 2009 he is Vice-director of LISSI since 2009. Concerning his research interests he has worked on both digital and analog implementation of massively parallel processors arrays for image processing by stochastic relaxation electro-optical random number generation and both analog and digital Artificial Neural Networks (ANN) implementation. Author and coauthor of more than 300 publications in international scientific journals books (Springer Kluwer etc.) international conferences' and symposiums' proceedings he has been regularly invited as key-note and invited lecture by international conferences and symposiums (IEEE IFAC etc.). His current research interests include Bio-inspired Artificial systems' modeling and implementation self-organizing modular and hybrid neural based information processing systems and their software and hardware implementations Soft-Computing based complex applications: Automated negotiation mechanisms and systems neural based fault detection and diagnosis systems design and implementation of real-time neuro-control etc. humanoid robotics collective robotics and collective intelligence Intelligent machines & systems Since 1996 he is life-member (elected permanent Academician) of International Informatization Academy. Since 1997 he is also elected permanent Academician (life-member) of International Academy of Technological Cybernetics.