Abstract

The pulse carries important physiological and pathological information about the human body. The piezoresistive sensor used to capture vascular pulsation information has transitioned from a single-point to a sensor array. However, the interference signal between channels has become a key bottleneck restricting the development of the sensor array pulse diagnosis equipment. The sensor in contact with vascular pulsation obtains the pulse signal. When some sensors are displaced due to vascular pulsation, other sensors will be driven to move, which will produce interference signals. Signal interference is a common problem for sensor arrays, but few people have analyzed this problem from the perspective of the algorithm. In this paper, an interference signal recognition algorithm of the sensor array based on a convolutional neural network (CNN) is proposed. Firstly, a simple mechanical structure model was established to analyze the generation mechanism of interference signals in one MEMS sensor array acquisition system. Then, a CNN model with fewer parameters was designed for identifying interference signals. Finally, the CNN model was implemented on a field-programmable gate array (FPGA). The results show that the CNN algorithm could identify interference signals well, and the accuracy of the algorithm was 99.3%. The power consumption of the CNN accelerator was 0.673 W at a working frequency of 100 MHz. The interference signal identification algorithm is proposed to ensure the accurate analysis of array signals. FPGA implementation lays the foundation for the miniaturization and portability of the equipment.

Highlights

  • The combination of Chinese and Western medical treatments is a characteristic of Chinese fight against the new coronary pneumonia, and it has received good results

  • This paper proposes a sensor array interference signal recognition algorithm based on a convolutional neural network (CNN)

  • Interference Signal Recognition Based on CNN 3.1.1

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Summary

Introduction

The combination of Chinese and Western medical treatments is a characteristic of Chinese fight against the new coronary pneumonia, and it has received good results. A pulse wave is produced by the regular contraction and the relaxation of the heart and contains a wealth of physiological information about the body [1]. Doctors can detect pathological changes in various organs in the human body by touching the pulse. Pulse diagnosis is an important method in Chinese medicine and Ayurveda in India [2,3]. Doctors can detect the pulse strength, width, length, and frequency of the blood vessel through their fingers, and analyze a patient’s physical state. This method lacks one quantifiable standard [4,5]. Objective research on pulse diagnosis has emerged at home and abroad. A single-point sensor, such as a piezoelectric sensor [6], piezoresistive sensor [7], infrared sensor [8], or ultrasonic sensor [9,10], was used in early pulse wave acquisition equipment

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