AN INTELLIGENT METHOD TO ESTIMATE THE INERTIA MATRIX OF A ROBOT ARM FOR ACTIVE FORCE CONTROL USING ON-LINE NEURAL NETWORK TRAINING SCHEME
Keywords:
KeywordsAbstract
This paper presents a new intelligent controller algorithm comprising
an on-line multi-layer artificial neural network (ANN) training
scheme to estimate the inertia matrix ofthe robot arm to enhance the
performance of the active force control (AFC) scheme. The robot
under study is a planar two-link rigid robot which is subjected to a
non-linear disturbance torques acting at the robot joints. The
algorithm has two stages, namely the ANN training stage and -the
implementation stage. During the training stage, the proposed ANN
scheme trains the ANNparameters (weights and biases) for a period
oftime by utilising the back-propagation (BP) learning method. After
a sufficient training period, the training session is switched off, and
the ANN is ready to be used in the implementation stage of the
intelligent AFC-ANN controller scheme. The results of the training
and implementation stages are shown and discussed. It is shown that the proposed controller scheme is very effective and robust. The simulation is accomplished using MATLAB@ software.
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