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Development smart micromachined transducers using feed-forward neural networks: a system identification and control perspective

机译:开发智能微机械换能器,使用前锋神经网络:系统识别和控制视角

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The paper describes some possible applications of feed-forward neural networks in the sensorial field. The subject of the research was a micromachined acceleration sensor, with a capacitive type of pick-off. Static sensor identification (based on measurement results) and dynamic identification (based on the mechanical model of the sensor) was performed with a view to develop, neural, open- and closed-loop transducers with improved performance characteristics. Measurement results are presented for the open loop, neural transducer, which was implemented in hardware. Two closed-loop structures were proposed which used static and/or dynamic networks. The performance of these transducers was assessed based on simulation results. All neural network controlled transducers showed an extended measurement range compared to the “off-the-shelf” sensors and, in the closed loop designs, the latch-up condition was eliminated.
机译:本文介绍了传感器领域的前馈神经网络的一些可能的应用。该研究的主题是一种微机械加速度传感器,具有电容类型的拾取器。通过视图进行静态传感器识别(基于测量结果)和动态识别(基于传感器的机械模型),以开发,神经,开放和闭环换能器,具有改进的性能特性。为开环,神经换能器提供测量结果,其在硬件中实现。提出了两个闭环结构,其使用静态和/或动态网络。基于模拟结果评估这些换能器的性能。与“现成的”传感器相比,所有神经网络控制的传感器都显示出扩展的测量范围,并且在闭环设计中,消除了闩锁条件。

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