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An artificial neural network-based smart capacitive pressure sensor

机译:基于人工神经网络的智能电容式压力传感器

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A smart capacitive pressure Sensor (CPS) using a multi-layer artificial neural network is proposed in this paper. A switched capacitor circuit (SCC) converts change in capacitance of the CPS due to applied pressure into a proportional voltage. The nonlinear characteristics of the CPS make the SCC Output nonlinear. Further, due to dependence of the CPS Characteristics on ambient temperature, the SCC output becomes quite complex for obtaining correct digital output of the applied pressure, especially when the ambient temperature varies with time and/or place. To circumvent this difficulty, an ANN is employed to model the sensor. By training the ANN model suitably, the digital readout of the applied pressure can be obtained which is independent of ambient temperature. A new idea for collecting temperature information from the sensor characteristics themselves, and automatic feeding of this information into the ANN-based CPS model is proposed. From the simulation results it is verified that the ANN model can give correct readout of the applied pressure within ± 1% error (FS) over a wide range of temperature variation starting from -20℃ to 70℃ This modeling technique of the CPS provides greater flexibility and accuracy m a changing environment.#1998 Elsevier Science Ltd.
机译:提出了一种采用多层人工神经网络的智能电容式压力传感器(CPS)。开关电容器电路(SCC)将由于施加压力而引起的CPS电容变化转换为比例电压。 CPS的非线性特性使SCC输出非线性。此外,由于CPS特性对环境温度的依赖性,SCC输出变得非常复杂,以获取正确的施加压力数字输出,尤其是当环境温度随时间和/或位置变化时。为了避免这一困难,采用了人工神经网络对传感器进行建模。通过适当地训练ANN模型,可以获得与环境温度无关的数字施加压力读数。提出了一种从传感器特性本身收集温度信息,并将该信息自动馈送到基于ANN的CPS模型中的新思路。从仿真结果可以证明,在从-20℃到70℃的宽范围温度变化范围内,ANN模型都能在±1%的误差(FS)内正确读出施加的压力。在不断变化的环境中具有灵活性和准确性。#1998 Elsevier Science Ltd.

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