Information system for flood monitoring based on IoT and AI

A. J. Wilson, A. Pon Bharathi, M. Anoop, J. Angelin Jeba Malar
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Abstract

One of the most significant areas where realistic solutions have been put into place to minimise harm is flood management. In this research project, we are creating an IoTenabled adaptive AI technique for effective fluid management. Floods in Kerala, India, have recently seriously damaged the environment, infrastructure, and population. Various IoT devices gathered information on temperature, precipitation rates, and other variables. This study uses a real-time flood visualisation technology to provide an information system for flood monitoring. A system is constructed by first creating two systems: a client system comprised of hardware for detecting floods and a server system comprised of software for monitoring floods and distributing the collected data. All of the information on the flood in Kerala is compiled and split in halves, with the first set serving as training data and the second as test data. The suggested hybrid model is trained using six different machine learning models, and it achieves a maximum accuracy of 99.64%. We were able to prevent losses because to the system’s seamless design. Research reveals that the client of the flood detection system may deliver real-time data on flood levels, weather conditions, and temperatures. Additionally, data from client systems can be collected by flood monitoring information systems and stored in MySQL.
基于物联网和人工智能的洪水监测信息系统
最重要的领域之一是洪水管理,它已经采取了切实可行的解决方案,以尽量减少危害。在这个研究项目中,我们正在创建一种iotenable自适应人工智能技术,用于有效的流体管理。最近,印度喀拉拉邦的洪水严重破坏了环境、基础设施和人口。各种物联网设备收集温度、降水率和其他变量的信息。本研究采用实时洪水可视化技术,为洪水监测提供信息系统。一个系统是通过首先创建两个系统来构建的:一个由检测洪水的硬件组成的客户端系统和一个由监测洪水和分发收集到的数据的软件组成的服务器系统。所有关于喀拉拉邦洪水的信息都被编译并分成两部分,第一组作为训练数据,第二组作为测试数据。所建议的混合模型使用六种不同的机器学习模型进行训练,其最高准确率达到99.64%。由于系统的无缝设计,我们能够避免损失。研究表明,洪水探测系统的客户端可以提供有关洪水水位、天气状况和温度的实时数据。此外,洪水监测信息系统可以收集来自客户端系统的数据并存储在MySQL中。
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