基于智能手机振动传感器和Lorawan的移动众感路面监测

Salahadin Seid, M. Zennaro, M. Libsie, E. Pietrosemoli
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引用次数: 3

摘要

路面监测是道路运输基础设施管理中的一项重要工作。在本文中,我们提出了一种基于智能手机传感器和LoRaWAN网络的移动人群传感路面监测。使用智能手机的加速度计和GPS传感器,可以测量振动及其发生的位置,从而生成路况和异常情况的报告。这些报告可以通过LoRaWAN网络基础设施提供的低成本、低功耗和安全的通信链路传输,从而节省了通过蜂窝网络传输它们的额外成本。我们专注于监测沥青路面,使用机器学习模型将车辆产生的振动分类为坑洼、减速带、损坏的道路或修补的道路。作为概念验证,我们开发了一个内置机器学习模型的移动应用程序来检测和分类路况。为了减少带宽消耗,应用程序只报告路况分类,而不是发送原始振动信号。主要目标是减少人工检查和测量的负担,同时最小化通信成本。我们的方法已经在现实世界的一段道路上进行了测试和评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mobile Crowdsensing Based Road Surface Monitoring Using Smartphone Vibration Sensor and Lorawan
Road surface monitoring is a critical activity in road transport infrastructure management. In this paper, we present a mobile crowd-sensing based road surface monitoring using Smartphone sensors and a LoRaWAN network. Using the accelerometer and GPS sensors of the Smartphone, it's possible to measure vibration and where it happens, enabling the generation of reports of road conditions and anomalies. These reports can be transmitted by low-cost, low-power and secure communication links provided by the LoRaWAN network infrastructure thus saving the added cost of transmitting them over the cellular network. We focus on monitoring the asphalt road surface using a machine learning model classifying the vibration generated by vehicles as pothole, speed bump, damaged road or patched road. As proof of concept, we developed a mobile application with a built-in machine learning model to detect and classify road condition. To reduce the bandwidth consumption, the application reports only road condition classification instead of sending the raw vibration signal. The main objective is to reduce the burden of manual inspection and measurement while minimizing communication cost. Our approach was tested and evaluated by real-world experiments in a road segment.
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