基于物联网的基于TensorFlow的山洪检测与预警

Ameer Abd Rashid, Muhammad Azizi Mohd Ariffin, Z. Kasiran
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引用次数: 3

摘要

重要的是要有一个实时的山洪探测系统,通知公众采取适当的行动。当局目前使用报纸、广播、电视或公告等主流媒体的方法太慢,无法让当地居民提前开始为即将到来的山洪做准备。其他几个早期洪水预警系统也被提出,但该系统已经过时,不能实时提醒用户。因此,本文提出了一种基于物联网的基于TensorFlow的山洪检测与预警方法。使用机器学习技术检测山洪暴发,并使用Telegram向用户发送警报。这种探测方法没有依靠传统的水传感器来探测洪水,而是使用摄像机来监测水位。此外,该系统是在低功耗的树莓派上实现的,可以部署到许多洪水易发地区。根据测试结果,系统可以区分正常水位和暴洪水位,并通过电报频道提醒用户。测试结果还表明,在物联网环境下使用带有SSD-MobileNet-v2-Quantized模型的TensorFlow Lite具有最高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT-Based Flash Flood Detection and Alert Using TensorFlow
It is important to have a real-time flash flood detection system to inform the public for them to take appropriate action. The current method of authorities using mainstream media such as newspaper, radio, TV, or public announcement is too slow to provide the local population ahead starts to prepare for coming flash flood. Several other early flood warning systems have been proposed but the system is already outdated and did not alert the user in real-time. Therefore, this paper proposes an IoT-based flash flood detection and alert using TensorFlow. The flash flood is detected by using machine learning technique and an alert will be sent to the user using Telegram. The detection did not rely on a conventional water sensor to detect floods, instead, it uses a video camera to monitor the water level. Moreover, the system was implemented in low-powered raspberry pi which can be deployed to many floods prone areas. Based on the test result, the system can differentiate between normal and flash flood water levels and alert users via Telegram Channel. The test results also show that using TensorFlow Lite with SSD-MobileNet-v2-Quantized model in IoT environment has the highest performance.
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