基于物联网的管道变形实时监测方法

Mengyuan Ren, Xiaolong Chen, Haoyu Yu
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引用次数: 2

摘要

随着中国石油管道数量的增加和长度的延长,管道损坏事故也呈现出同样的趋势。传统的监控方式主要采用定期人工检测,虽然操作简单,但无法实现实时监控和部署。提出了一种基于物联网技术的管道变形实时监测方法。该方法首先通过基于倾角计的传感节点获取管道在某一位置的姿态角;测量结果通过短距离无线通信模块传送到汇聚节点。汇聚节点可以通过远程无线通信模块将测量数据上传到云服务器。同时,任何被允许访问服务器数据库的人都可以获得实时数据,然后以适当的方式处理这些数据。本文采用三次样条插值算法,得到了管道轮廓的挠度曲线。利用可视化图形技术实时显示管道的变形。最后,通过一系列的测试验证了所提方法的可行性。
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Real-time monitoring method of pipeline deformation based on Internet of things
With the increased number and extended length of oil pipelines in China, accidents caused by pipeline damages show the same trend. Traditional monitoring methods mainly adopt regular manual detection which, though easy to operate, yet cannot realize real-time monitoring and deployment. This paper puts forwards a real-time monitoring method based on the internet of things technology for monitoring pipeline deformation. In this method, the pipelines’ attitude angles at certain location are firstly obtained by the inclinometers-based sensing nodes. The measurement results are then delivered to the sink nodes by short-distance wireless communication modules. The sink nodes can upload the measured data to a cloud server by long-distance wireless communication modules. At the same time, anyone who are permitted to get access to the server’ database can obtain the real-time data and then process these data with proper way. In this paper, cubic spline interpolation algorithm is used so as to obtain a deflection curve of the pipeline’s profile. Visual graphics technique is utilized to display the real-time deformation of pipelines. At last, the feasibility of the proposed method is verified by a series of testing.
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