Auto correlation based elevator rope monitoring and fault detection approach with image processing

Orhan Yaman, M. Karakose
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引用次数: 23

Abstract

Elevators are the means that people often use in everyday life. From the past until nowadays many elevators have been used in many areas. Elevator systems with the formation of high-rise buildings in recent years has become more important. Early diagnosis of faults that may occur in the elevator system is very important. In this study, an approach has been proposed to monitor and detect faults on elevator ropes. The proposed method is based on image processing and auto correlation. Images are taken with the cameras fixed to the elevator system. The position of the elevator rope is determined by extracting the edges on the images. Thus, the elevator rope is monitored in real time. The detected rope is cut off from the gray format image. The elevator rope is observed by applying auto correlation to the obtained image. It is converted into image signals by using auto correlation method. The difference signal is generated by using the obtained auto correlation signal. High values in the difference signal are detected as rope fault. The proposed fault detection approach is quite fast because it has a signal processing base.
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基于图像处理的电梯钢丝绳自相关监测与故障检测方法
电梯是人们日常生活中经常使用的交通工具。从过去到现在,许多地区都使用电梯。电梯系统随着近年来高层建筑的形成变得越来越重要。早期诊断电梯系统可能出现的故障是非常重要的。本文提出了一种电梯钢丝绳故障监测与检测方法。该方法基于图像处理和自相关。图像是用固定在电梯系统上的摄像机拍摄的。通过提取图像上的边缘来确定电梯绳的位置。这样就可以实时监控电梯绳的运行情况。将检测到的绳索从灰度格式图像中切断。对得到的图像进行自相关,观察电梯绳的运动。利用自相关方法将其转换成图像信号。利用得到的自相关信号产生差分信号。差值信号高时,检测为绳索故障。由于该方法具有信号处理基础,因此具有较快的检测速度。
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