DocumentCode :
634670
Title :
Online identification of complex multi-input-multi-output system based on generic evolving neuro-fuzzy inference system
Author :
Pratama, Mahardhika ; Anavatti, Sreenatha G. ; Garratt, Matthew ; Lughofer, Edwin
Author_Institution :
Sch. of Eng. & Inf. Technol., Univ. of New South Wales, Canberra, ACT, Australia
fYear :
2013
fDate :
16-19 April 2013
Firstpage :
106
Lastpage :
113
Abstract :
Nowadays, unmanned aerial vehicles (UAV) play a noteworthy role in miscellaneous defence and civilian operation. A major facet in the UAV control system is an identification phase feeding the valid and up-to-date information of the system dynamic in order to generate proper adaptive control action to handle various UAV maneuvers. UAV, however, constitutes a complex system possessing a highly non-linear property. Conversely, the learning environment in modeling UAV´s dynamic varies overtime and demands online learning scheme encouraging a fully adaptive and evolving algorithm with a mild computational load to settle the task. In contrast, contemporaneous literatures scrutinizing the identification of UAV dynamic yet rely on offline or batched learning procedures. Evolving neuro-fuzzy system (ENFS) where the landmarks are flexible rule base and usable in the time-critical applications offers a promising impetus in the UAV research field, and in particular its identification standpoint. The principle cornerstone is ENFS can commence its learning mechanism from scratch with an empty rule base and very limited expert knowledge. Nonetheless, it can perform automatic knowledge building from streaming data without catastrophic forgetting previous valid knowledge which is alike autonomous mental development of human brain. This paper elaborates the identification of rotary wing UAV based on our incipient ENFS algorithm termed generic evolving neuro-fuzzy system (GENEFIS). In summary, our algorithm can not only trace footprint of the UAV dynamic but also ameliorate the performance of existing ENFS in terms of predictive quality and resultant rule base burden.
Keywords :
MIMO systems; adaptive control; aerospace computing; autonomous aerial vehicles; control engineering computing; fuzzy neural nets; inference mechanisms; learning (artificial intelligence); mobile robots; telerobotics; ENFS; GENEFIS; UAV control system; UAV maneuvers; adaptive algorithm; adaptive control; autonomous mental development; batched learning procedures; civilian operation; complex multi-input-multi-output system; complex system possessing; data streaming; evolving algorithm; expert knowledge; generic evolving neurofuzzy inference system; generic evolving neurofuzzy system; human brain; identification phase feeding; learning environment; learning mechanism; miscellaneous defence; nonlinear property; offline learning procedure; online identification; online learning; unmanned aerial vehicles; Adaptive systems; Conferences; Decision support systems; Erbium; Intelligent systems; Manganese; Evolving Fuzzy Systems; GENEFIS; UAV;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Evolving and Adaptive Intelligent Systems (EAIS), 2013 IEEE Conference on
Conference_Location :
Singapore
Type :
conf
DOI :
10.1109/EAIS.2013.6604112
Filename :
6604112
Link To Document :
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