基于低成本3-DOF加速度计和CO传感器的消防员简易实时支援系统

Nhu Dinh Dang, V. Pham, Duc-Tan Tran, Van-An Tran, Huu An Nguyen, Anh Duc Nguyen
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引用次数: 0

摘要

在作业过程中,消防人员可能会因火灾区域的烟雾和热量散发,地板、墙壁等结构构件的破裂或沸腾液体的喷射和气体爆炸而受伤或死亡。因此,本文旨在通过集成三自由度加速度计和MQ7传感器来记录加速度和测量CO浓度,并结合嵌入式跌倒和高CO检测算法,开发一种高效便携的跌倒和高CO监测系统。嵌入式跌倒检测算法能够以超高的准确率检测跌倒事件,不会将行走、站立、慢跑、跳跃等正常活动误认为是跌倒事件。为了提高跌落检测系统的精度,本文提出了姿态识别和三秒后级联姿态识别。如果消防员摔倒无法站起来,警报信号信息将通过GSM/GPRS模块发送给外面的指挥官。嵌入式高一氧化碳检测算法用于警告危险的一氧化碳水平,以建议使用自给式呼吸器(SCBA)和保存可接受的一氧化碳水平的新鲜空气。在将提议的阈值和窗口大小嵌入微控制器之前,我们仔细研究了它们。在我们的记录数据中,灵敏度和准确度分别在96.5%和93%左右。此外,与支持向量机分类器(SVM)和最近邻规则(NN)相比,本文提出的跌倒检测算法在公共数据集上的几何均值也更高,分别达到99.44%、98.41%和95.76%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Simple and Real-Time Support System for Firefighters Using Low-Cost 3-DOF Accelerometer and CO Sensor
During the operations, firefighters can be injured or killed because of the smoke and heat emission from the fire area, broken structure elements such as floors, walls, or boiling liquid ejection and gas explosion. Therefore, this paper aims to develop an efficient and portable system to monitor falls and high CO level through integrating a three degrees of freedom accelerometer and an MQ7 sensor to recorded acceleration and measured CO concentration with the embedded fall and high CO detection algorithms. The embedded fall detection algorithm can detect fall events with ultra-high accuracy without mistakenly identifying normal activities such as walking, standing, jogging, and jumping as fall events. The posture recognition and cascade posture recognition after three seconds are proposed in this paper to gain the accuracy of our proposed fall detection system. If a firefighter falls and is unable to stand up, the alert signal message will be sent to their commander outside through the GSM/GPRS module. The embedded high CO detection algorithm used to alert the dangerous CO level to recommend using self-contained breathing apparatuses (SCBA) and saving fresh air with acceptable CO level. We carefully investigated the proposed thresholds and window size before embedding them into the microcontroller. The sensitivity and accuracy achieved were around 96.5% and 93% respectively in our recorded data. Furthermore, the proposed fall detection algorithm also achieved higher geometric mean in comparison with Support Vector Machine classifier (SVM) and a nearest neighbor rule (NN) in the public datasets with the achieved around 99.44%, 98.41% and 95.76% respectively.
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