TY - JOUR ID - 501 TI - Designing stable neural identifier based on Lyapunov method JO - Journal of AI and Data Mining JA - JADM LA - en SN - 2322-5211 AU - Alibakhshi, F. AU - Teshnehlab, M. AU - Alibakhshi, M. AU - Mansouri, M. AD - Control Department, Islamic Azad University South Tehran Branch, Tehran, Iran. AD - Center of Excellence in Industrial Control, K.N. Toosi University, Tehran, Iran. AD - Young Researchers & Elite Club, Borujerd Branch, Islamic Azad University, Borujerd, Iran. AD - Intelligent System Laboratory (ISLAB), Electrical & Computer engineering department, K.N. Toosi University, Tehran, Iran. Y1 - 2015 PY - 2015 VL - 3 IS - 2 SP - 141 EP - 147 KW - Gradient Descent Algorithm KW - Identifier KW - Learning Rate KW - Lyapunov Stability Theory DO - 10.5829/idosi.JAIDM.2015.03.02.03 N2 - The stability of learning rate in neural network identifiers and controllers is one of the challenging issues which attracts great interest from researchers of neural networks. This paper suggests adaptive gradient descent algorithm with stable learning laws for modified dynamic neural network (MDNN) and studies the stability of this algorithm. Also, stable learning algorithm for parameters of MDNN is proposed. By proposed method, some constraints are obtained for learning rate. Lyapunov stability theory is applied to study the stability of the proposed algorithm. The Lyapunov stability theory is guaranteed the stability of the learning algorithm. In the proposed method, the learning rate can be calculated online and will provide an adaptive learning rare for the MDNN structure. Simulation results are given to validate the results. UR - https://jad.shahroodut.ac.ir/article_501.html L1 - https://jad.shahroodut.ac.ir/article_501_442d971d7572eb418c7352f17117482a.pdf ER -