پديد آورنده :
فردوسي، حسن
عنوان :
مدل سازي و كنترل سيستم TRMS با استفاده از منطق فازي و ANFIS
مقطع تحصيلي :
كارشناسي ارشد
محل تحصيل :
اصفهان: دانشگاه صنعتي اصفهان، دانشكده برق و كامپيوتر
صفحه شمار :
نه،81ص.: مصور،جدول،نمودار
يادداشت :
ص.ع.به فارسي و انگليسي
استاد راهنما :
فريد شيخ الاسلام
توصيفگر ها :
مدل سازي غير خطي چند متغيره , كنترل فازي
تاريخ نمايه سازي :
20/5/89
دانشكده :
مهندسي برق و كامپيوتر
چكيده فارسي :
به فارسي و انگليسي: قابل رويت در نسخه ديجيتالي
چكيده انگليسي :
Modeling and Control of a TRMS using Fuzzy Logic and ANFIS Hasan Ferdowsi h ferdowsi@ec iut ac ir Date of Submission 2009 04 25 Department of Electrical and Computer Engineering Isfahan University of Technology Isfahan 84156 83111 Iran Degree M Sc Language Farsi Supervisor Prof Farid Sheikholeslam sheikh@cc iut ac ir Abstract Recent advances in aircraft technology have led to the development of many new concepts in aircraft design which are strikingly different from their predecessors The differences are in both aircraft configuration and control paradigms Considering the vital role of controllers in this area and difficulties of their implementation on the actual systems laboratory models like TRMS laboratory helicopter model has been manufactured on which the researchers can apply the designed controllers without doing any harm to the actual systems However one should first test the controllers using computer simulations before applying them on the laboratory model In this thesis modeling of a twin rotor MIMO system is done using ANFIS ANFIS Adaptive Network based Fuzzy Inference System is a particular type of neuro fuzzy architectures which combinates of neural networks and fuzzy inference systems By taking advantage of its fuzzy rules and hybrid learning algorithm ANFIS can be used for modeling and control of ill defined and uncertain systems without needing complete accurate information about them Because of these facts ANFIS has been the center of attention for many of control engineers within the last 15 years ANFIS model is based on the input output data pairs of the system under consideration To improve the performance of ANFIS model in this thesis subtractive clustering of training data is used to obtain the required initial fuzzy model and a backward selection method is used to eliminate the unimportant or redundant input variables of the model Having the initial fuzzy model be extracted with this method and using only important selected input variables the final ANFIS model is made simpler and also more accurate After completing the TRMS model control of the system is discussed In this direction a fuzzy controller which is able to reduce the coupling effects in the twin rotor system as well as to control each degree of freedom in a reasonable manner is presented Althogh this fuzzy controller has good performance one may encounter problems trying to apply it to the actual plant due to the high number of rules and high computational time required In the last section of this thesis a method for tuning and simplifying the proposed fuzzy controller using ANFIS is presented For this purpose first an ANFIS structure is designed second the required training data are extracted and last the offline training process is done using hybrid learning algorithm By far the tuned controller is simpler than the initial fuzzy controller furthermore offering better performance The final controller is tested via computer simulations in the presence of disturbance and it is ready to be applied to the actual TRMS plant Keywords Twin Rotor MIMO System Fuzzy logic ANFIS MIMO nonlinear modeling Fuzzy control
استاد راهنما :
فريد شيخ الاسلام