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Closed-Loop, Neural Network Controlled Accelerometer Design

机译:闭环神经网络控制加速度计设计

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摘要

In this paper, a closed-loop, smart transducer design is proposed, based on artificial neural network (ANN) techniques. The design aims to improve the performance of open-loop, off-the-shelf capacitive acceleration sensors and increase their robustness to manufacturing tolerances. A "model reference" control strategy was adopted for the design of the smart transducer. Multilayer perceptron (MLP) type networks were chosen for implementing the control strategy. While a static MLP was used for the feedback arrangement, a tap delayed lines MLP was necessary for implementing the controller due to the dynamic nonlinear behaviour exhibited by the sensing device. A dynamic version of the back-error propagation algorithm was used for training the networks. The resulting closed-loop transducer had a dynamic range of +-10g and a stable behaviour for input stimuli up to +-100g.
机译:本文提出了一种基于人工神经网络(ANN)技术的闭环智能换能器设计。该设计旨在改善现成的开环电容式加速度传感器的性能,并提高其对制造公差的鲁棒性。智能传感器的设计采用了“模型参考”控制策略。选择了多层感知器(MLP)类型的网络来实施控制策略。尽管静态MLP用于反馈布置,但由于传感设备表现出动态的非线性行为,抽头延迟线MLP对于实施控制器是必需的。动态版本的反向误差传播算法用于训练网络。所得的闭环换能器具有+ -10g的动态范围,并且对于高达+ -100g的输入刺激具有稳定的行为。

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