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Hopfield Neural Network and Optical Fiber Sensor as Intelligent Heart Rate Monitor

机译:Hopfield神经网络和光纤传感器作为智能心率监测器

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This paper presents a design and fabrication of an intelligent fiber-optic sensor used for examining and monitoring heart rate activity. It is found in the literature that the use of fiber sensors as heart rate sensor is widely studied. However, the use of smart sensors based on Hopfield neural networks is very low. In this work, the sensor is a three fibers without cladding of about 1 cm, fed by laser light of 1550 nm of wavelength. The sensing portions are mounted with a micro sensitive diaphragm to transfer the pulse pressure on the left radial wrist. The influenced light intensity will be detected by a three photodetectors as inputs into the Hopfield neural network algorithm. The latter is a single-layer auto-associative memory structure with a same input and output layers. The prior training weights are stored in the net memory for the standard recorded normal heart rate signals. The sensors' heads work on the reflection intensity basis. The novelty here is that the sensor uses a pulse pressure and Hopfield neural network in an integrity approach. The results showed a significant output measurements of heart rate and counting with a plausible error rate.
机译:本文介绍了一种用于检查和监视心率活动的智能光纤传感器的设计和制造。在文献中发现,广泛地研究了将光纤传感器用作心率传感器。但是,基于Hopfield神经网络的智能传感器的使用率非常低。在这项工作中,传感器是三根光纤,无包层约1 cm,由波长为1550 nm的激光馈入。感测部分安装有微敏感膜片,以将脉冲压力传递到左radial骨腕上。被影响的光强度将由三个光电探测器检测,作为Hopfield神经网络算法的输入。后者是具有相同输入和输出层的单层自动关联存储结构。先前的训练权重存储在网络存储器中,用于标准记录的正常心率信号。传感器的头基于反射强度工作。这里的新颖之处在于,该传感器以完整性方式使用了脉冲压力和Hopfield神经网络。结果显示,心率输出显着,并以合理的错误率计数。

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