Artificial network for temporal sequence processing

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395 21, 395 23, G06F 1518

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054468299

ABSTRACT:
A computer-based artificial network is presented that is capable of learning, recognizing, and generating temporal-spatial sequences. The network system includes time-delays and artificial neural subnetworks. The system generally includes three parts: (1) comparator units, (2) a parallel array of subnetworks and (3) delayed feedback lines from the output of the system to the neural subnetwork layer.

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