In the paper a Sugeno architecture based hardware implemented neuro adaptive inference system’s training algorithm is presented. The block diagram of the neuro-adaptive inference system output computing implemented in hardware is discussed, and the implementation in reconfigurable circuit of real-time parameter tuning is presented. The proposed system functionality based on measurements achieved is demonstrated. The resulted architecture has a very high processing speed, and the parameter adaptation works in parallel with the output processing. The proposed architecture can also be used for different training algorithms’ development.
If the inline PDF is not rendering correctly, you can download the PDF file here.
 Echanobe J. del Campo I. Bosque G. "An adaptive neuro-fuzzy system for efficient implementations" Information Sciences vol. 178 pp. 2150-2162 208.
 Crocket L.H. Elliot R.A. Enderwitz M.A. Stewart R.W. “Embedded Processing with the Arm Cortex-A9 on the Xilinx Zynq-7000 All Programmable Soc” Strathclyde Academic Media 2014
 Shoorehdeli M. A. Teshnehlab M. Sedigh A. K. "Training ANFIS as an identifier with intelligent hybrid stable learning algorithm based on particle swarm optimization and extended Kalman filter" Fuzzy Sets and Systems vol. 160 no. 7 pp. 922-948 2009.
 Boldişor C. Comnac V. Ţopa I. Coman S. "Using the iterative learning algorithm as data source for ANFIS training" Automation Quality and Testing Robotics (AQTR) vol. 3 pp. 28-30 2010.
 Martins F. Figueiredo K. Vellasco M. "Methods for acceleration of learning process of Reinforcement Learning Neuro-Fuzzy Hierarchical Politree model" Autonomous and Intelligent Systems (AIS) 2010 International Conference pp. 21-23 2010
 Zangeneh A.Z. Mansouri M. Teshnehlab M. Sedigh A.K. "Training ANFIS system with DE algorithm" Advanced Computational Intelligence (IWACI) pp. 308-314 2011.
 Carrano E.G. Takahashi R.H.C. Caminhas W.M. Neto O.M. "A genetic algorithm for multiobjective training of ANFIS fuzzy networks" Evolutionary Computation CEC . IEEE Congress Vols. 3259-3265 2008.
 Banu U.S. Uma G. "ANFIS gain scheduled CSTR with genetic algorithm based PID minimizing integral square error" Information and Communication Technology in Electrical Sciences pp. 20-22 2007.
 Ciurea. S. “Determining the Parameters of a Sugeno Fuzzy Controller Using a Parallel Genetic Algorithm” Control Systems and Computer Science pp. 29-31 2013.