CMOS VLSI Hyperbolic Tangent Function & its Derivative Circuits for Neuron Implementation
نویسندگان
چکیده
The hyperbolic tangent function and its derivative are key essential element in analog signal processing and especially in analog VLSI implementation of neuron of artificial neural networks. The main conditions of these types of circuits are the small silicon area, and the low power consumption. The objective of this paper is to study and design CMOS VLSI hyperbolic tangent function and its derivative circuit for neural network implementation. A circuit is designed and the results are presented
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