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Compensation of Nonlinearities Using Neural Networks Implemented on Inexpensive Microcontrollers

Nicholas J. Cotton, Bogdan M. Wilamowski

发表年份
2010
引用次数
58

摘要

This paper describes a method of linearizing the nonlinear characteristics of many sensors and devices using an embedded neural network. The neuron-by-neuron process was developed in assembly language to allow the fastest and shortest code on the embedded system. The embedded neural network also requires an accurate approximation for hyperbolic tangent to be used as the neuron activation function. The proposed method allows for complex neural networks with very powerful architectures to be embedded on an inexpensive 8-b microcontroller. This process was then demonstrated on several examples, including a robotic arm kinematics problem.

关键词

MicrocontrollerArtificial neural networkComputer scienceProcess (computing)Activation functionNonlinear systemCompensation (psychology)Hyperbolic functionControl engineeringEmbedded system

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