Keynote Speakers

 

C. L. Philip Chen

Madan M. Gupta

C. L. Philip Chen

 

C. L. Philip Chen received his M.S. degree from the University of Michigan, Ann Arbor, Michigan, U.S.A. in 1985, and his Ph.D. degree from Purdue University, West Lafayette, Indiana, U.S.A., in 1988, both degrees in Electrical Engineering. He was with Wright State University, Department of Computer Science and Engineering, from 1989 to 2002 as an assistant, an associate, and a full professor before he joined the University of Texas, San Antonio, where he has been a Professor and Chair of the Department of Electrical and Computer Engineering, the Associate Dean for Research and Graduate Studies of the College of Engineering. Currently, he is Chair Professor and the Dean of Faculty of Science and Technology, University of Macau.

Dr. Chen has been a visiting research scientist at the Materials Directorate, U.S. Air Force Wright Lab. He has been a senior research fellow sponsored by the U.S. National Research Council and a research faculty fellow for NASA Glenn Research Center for several years. His current research interests include theoretical development in computational intelligence, intelligent systems, robotics and manufacturing automation, networking, diagnosis and prognosis, life prediction and life-extending control. Credited to his technical contribution, he is an elected IEEE Fellow and AAAS Fellow (www.aaas.org).

Dr. Chen has been active in many IEEE international conference services and publications as a Program Chair and Organizing Committee. He is the General Chair of the 2009 IEEE Systems, Man, and Cybernetics (SMC) annual conference, the General Co-Chair of 2008 IEEE SSIRI (Secure System Integration and Reliability Improvement), a Program Co-Chair of 2008 & 2010 ICMLC. He is the founding SMC Chapter Chair at Central Texas Section, Macau Chapter, and founding Co-Chairs of three SMCS Technical Committees (SoS, Enterprise Information Systems, and Information Assurance and Intelligent Multimedia). Currently, he is the Vice President on Conferences and Meetings of IEEE SMC Society, where he has been the VP on Technical Activities in Systems Science and Engineering, a member of IEEE SMC Board of Governors and Treasurer and serves as an Associate Editor of IEEE Transactions on SMC-C and IEEE Systems Journal. As a result of his assiduous service, he received Outstanding Contribution Award in 2008. In addition, he is a member of Tau Beta Pi and Eta Kappa Nu honor societies. On education and academic service, Dr. Chen is the founding faculty advisor of IEEE Computer society student chapter and has been the faculty advisor of the Tau Beta Pi engineering honor society at the University of Texas at San Antonio. In addition, he is a certified ABET (Accreditation Board of Engineering and Technology Education) Computer Engineering, Electrical Engineering, and Software Engineering program evaluator.

 

Life Extending and Adaptive Sensor Fault Detection and Identification in Health Monitoring Systems

We have modeled and calculated the probability of failure due to component damage. Using this model, a Monte Carlo simulation is also performed to evaluate the likelihood of damage accumulation under various operating conditions. Using thermal mechanical fatigue (TMF) of a critical component as an example, it has been shown that that an intelligent acceleration algorithm can drastically reduce life usage with minimum sacrifice in performance. By means of genetic search algorithms, optimal acceleration schedules can be obtained with multiple constraints. The simulation results show that an optimized acceleration schedule can provide a significant life saving in selected engine components.

Usually, solutions to sensor validation fall into two major categories: the data-based approaches and the model-based approaches. Model-based methods include nonparametric and parametric approaches. Belonging to the first category are neural-network-bank based approaches. The non-parametric methods are more robust, but a large number of training data are needed nevertheless. On the other hand, parametric approaches, including dynamic state space models (DSSM), provide better accuracy and tracking performance without the need of training. The price paid here is the need for high fidelity real-time system models. Particle filter (PF) is an alternative name for sequential importance sampling for DSSM. PF has been commonly employed to online processing of dynamic systems described by DSSM. We will also discuss a Markov jump DSSM (MJDSSM) for system modeling and mixture Kalman filter (MKF) solution-- a unique and efficient particle filtering detector being developed.

The ultimate goal of engine health monitoring is to maximize the amount of meaningful information to perform diagnostics and prognostics on engine health. To achieve highest level of intelligence in different levels and aspects, in the future work, we propose to implement the concept of data fusion that integrates data from multiple sources to obtain improved accuracy and more specific results.

Note: The presented work is funded by NASA and U.S. Air Force of Scientific Research.

 

 

Madan M. Gupta

 

Dr. Madan M. Gupta is a professor (Emeritus) and holds the position of Distinguished Research Chair in the College of Engineering and is the director of the Intelligent Systems Research Laboratory at the University of Saskatchewan.

Dr. Gupta's current research interests are in the areas of neuro-vision systems, neuro-control systems, integration of fuzzy-neural systems, neuronal morphology of biological vision systems, intelligent and cognitive robotic systems, cognitive information, new paradigms in information processing, chaos in neural systems, and fuzzy-neural logic in law. He is also developing some new architectures of computational neural networks and computational fuzzy neural networks for application to advanced robotics, aerospace, medical, industrial, and business systems and law. His interest also lies in signal and image processing with applications to medical systems.

Dr. Gupta has authored or co-authored over 825 published research papers. He has recently co-authored the seminal book Static and Dynamic Neural Networks: From Fundamentals to Advanced Theory. Dr. Gupta has previously co-authored Introduction to Fuzzy Arithmetic: Theory and Applications (the first book on fuzzy arithmetic) and Fuzzy Mathematical Models in Engineering and Management Science. Both of these books have Japanese translations. Also, Dr. Gupta has edited or co-edited 19 other books as well as many conference proceedings and journals in the fields of his research interests such as adaptive control systems, fuzzy computing, neuro-computing, neuro-vision systems, and neuro-control systems.

Dr. Gupta received his B.E. (Hons.) and M.E. degrees in electronics-communications engineering from the Birla Engineering College (now the Birla Institute of Technology & Science), Pilani, India, in 1961 and 1962, respectively. As a commonwealth scholar, he received his Ph.D. degree from the University of Warwick, United Kingdom, in 1967 in adaptive control systems. In the fall of 1998, for his extensive contributions in neuro-control, neuro-vision, and fuzzy-neural systems, Dr. Gupta was awarded an earned doctor of science (D.Sc.) degree by the University of Saskatchewan.

Dr. Gupta was elected fellow of the Institute of Electrical and Electronics Engineers (IEEE) for his contributions to the theory of fuzzy sets and adaptive control systems and for the advancement on the diagnosis of cardiovascular disease. He was elected fellow of the International Society for Optical Engineering (SPIE) for his contributions to the field of neuro-control and neuro-fuzzy systems. He was also elected fellow of the International Fuzzy Systems Association (IFSA) for his contributions to fuzzy-neural computing systems.

In 1998, Dr. Gupta was honored by the III- Kaufmann Prize and Gold Medal for his research in the field of fuzzy logic. This Gold Medal was presented by the Foundation FEGI (Fundacio per a l'Estudi de la Gestio en la Incertesa: Fuzzy Management Research Foundation) and SIGEF (Sociedad Internacional de Gestion Economia: Fuzzy, International Association for Fuzzy Set Management and Economy) in Reus, Spain. In 1991, Dr. Gupta was the co-recipient of the Institute of Electrical Engineering Kelvin Premium. He was elected as a visiting professor and a special advisor in the area of high technology to the European Centre for Peace and Development (ECPD), University for Peace, which was established by the United Nations. In 1991, he was invited by the ECPD to visit and lecture at about five industrial and research centers in India.

Dr. Gupta is or has been on the editorial board of over fifteen journals in the field of fuzzy- neural and intelligent systems. Also, he has participated in the initiation of some of these journals. He has also served as a founding member of some of the international societies such as International Fuzzy Systems Association (IFSA), North American Fuzzy Information Processing Society (NAFIPS) and Canadian Fuzzy Information and Neural Society (CAN-FINS).

 

On the Design of Error-Based Adaptive Controller: Some Performance and Stability Considerations


Abstract:
Design of an adaptive controller for complex dynamic systems is a big challenge that researchers are facing The Performance and stability in control systems are extremely important considerations in engineering systems. It is broadly known that in linear time-invariant systems, the stability of the system is guaranteed with a proper design of a linear controller. However, the performances of the system responses are not the same by using different linear controllers. The system may respond with or without oscillations. The transient response with oscillations becomes very fast, although some high amplitude of the oscillation may affect the stability of the system. The transient response without oscillations becomes slower, but the system is very stable. From an engineer’s point of view, both the oscillations of the system and the slow system response are not acceptable. It is desired to have system response fast, stable, and with no oscillations, but this is not achievable with a linear controller.

 

In this paper we introduce the design of an error-based adaptive controller (E-BAC) using the new notion of dynamic pole motion (DPM) for a general class of dynamic system, linear, nonlinear, or timevarying. The purpose of this novel approach is to design an error-based 2 adaptive controller (E-BAC) that makes the system response reasonably fast with no overshoot and with guaranteed stability. The E-BAC has two dominant dynamic parameters, the dynamic position feedback and the dynamic velocity feedback. In the design of the novel nonlinear controller, the parameters of position feedback, Kp(e,t), and velocity feedback, Kv(e,t), of the controller are designed as functions of the system error e(t). In these feedback parameters, the position feedback controls the system bandwidth, thereby the rise time in step response, whereas the velocity feedback controls the damping ratio of the system thereby the overshoot in the step response. In this design, for large errors, we make the position feedback large, and thus we increase the bandwidth of the system thereby yielding a smaller rise time. Whereas, for decreasing errors, the position feedback is continuously decreased to a small value which decreases the bandwidth of the system. Similarly, but contrarily, the damping ratio which is controlled by the velocity feedback, is kept very small for large errors, and it is continuously increased to a large value for decreasing error. Hence, in the design of the proposed error-based adaptive controller, the position feedback Kp(e,t) and the velocity feedback Kv(e,t) are formulated as functions of the system error. This novel approach for formulating the adaptive controller yields a very fast response with no overshoot, and the design methodology presented here completely assures the stability of the controlled system.