Title :
Context in temporal sequence processing: a self-organizing approach and its application to robotics
Author :
Araújo, Aluizio F R ; Barreto, Gde.A.
Author_Institution :
Dept. of Electr. Eng., Univ. of Sao Paulo, Sao Carlos, Brazil
fDate :
1/1/2002 12:00:00 AM
Abstract :
A self-organizing neural net for learning and recall of complex temporal sequences is developed and applied to robot trajectory planning. We consider trajectories with both repeated and shared states. Both cases give rise to ambiguities during reproduction of stored trajectories which are resolved via temporal context information. Feedforward weights encode spatial features of the input trajectories, while the temporal order is learned by lateral weights through delayed Hebbian learning. After training, the net model operates in an anticipative fashion by always recalling the successor of the current input state. Redundancy in sequence representation improves noise and fault robustness. The net uses memory resources efficiently by reusing neurons that have previously stored repeated/shared states. Simulations have been carried out to evaluate the performance of the network in terms of trajectory reproduction, convergence time and memory usage, tolerance to fault and noise, and sensitivity to trajectory sampling rate. The results show that the model is fast, accurate, and robust. Its performance is discussed in comparison with other neural-networks models
Keywords :
Hebbian learning; convergence; fault tolerant computing; feedforward neural nets; path planning; robots; self-organising feature maps; sequences; anticipation; complex temporal sequences; convergence time; fault robustness; fault tolerance; feedforward weights; learning; memory usage; neuron reuse; noise robustness; noise tolerance; redundancy; repeated states; robot trajectory planning; robotics; self-organizing neural network; sequence representation; shared states; temporal context information; temporal sequence processing; time-delayed Hebbian learning rule; trajectory reproduction; trajectory sampling rate sensitivity; Convergence; Delay; Hebbian theory; Neural networks; Neurons; Noise robustness; Redundancy; Robots; Spatial resolution; Trajectory;
Journal_Title :
Neural Networks, IEEE Transactions on