In this paper a reconfigurable analog VLSI neural network architecture is presented. The analog architecture implements a Multi-Layer Perceptron whose topology can be programmed without any modification of the off-chip connections. The architecture is scaleable and modular since it is based on a single-chip configurable basic module. To obtain a robust behaviour with respect to noise and errors introduced in the computation by analog circuits, we use non-linear synapses and linear neurons as neural primitives. (C) 1998 John Wiley Sons, Ltd. References: 20
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