Implementation of the Internet of Things for early Floods in Agricultural Land using Dimensionality Reduction Technique and Ensemble ML

Murali Dhar M S, Kishore Kumar A, Rajkumar B, Poonguzhali P K, Hemakesavulu O, Mahaveerakannan R
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Abstract

Due to human activities like global warming, pollution, ozone depletion, deforestation, etc., the frequency and severity of natural disasters have increased in recent years. Unlike many other types of natural disasters, floods may be anticipated and warned about in advance. This work presents a flood monitoring and alarm system enabled by a smart device. A microcontroller (Arduino) is included, and its support for detection and indication makes it useful for keeping tabs on and managing the gadget. The device uses its own sensors to take readings of its immediate surroundings, then uploads that data to the cloud and notifies a central administrator of the impending flood. When admin discovers a crisis situation based on the data it has collected, it quickly sends out alerts to those in the local vicinity of any places that are likely to be flooded. Using an Android app, it alerts the user's screen. The project's end goal is to develop an application that swiftly disseminates flood warning information to rural agricultural communities. Scaled principal component analysis (SPCA) is used to filter out extraneous data, and an ensemble machine learning technique is used to make flood predictions. The tests are performed on a dataset that is being collected in real-time and analysed in terms of a number of different parameters. In this research, we propose a strategy for long-term agricultural output through the mitigation of flood risk.
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基于降维技术和集成ML的农用地早期洪水物联网实现
由于人类活动,如全球变暖、污染、臭氧消耗、森林砍伐等,近年来自然灾害的频率和严重程度都有所增加。与许多其他类型的自然灾害不同,洪水是可以预测和提前预警的。本文提出了一种基于智能设备的洪水监测报警系统。包含一个微控制器(Arduino),它对检测和指示的支持使得它对监视和管理小工具很有用。该设备使用自己的传感器读取周围环境的数据,然后将数据上传到云端,并通知中央管理员即将到来的洪水。当管理员根据收集的数据发现危机情况时,它会迅速向任何可能被淹没的地方附近的人们发出警报。使用Android应用程序,它会提醒用户的屏幕。该项目的最终目标是开发一种能够迅速向农村农业社区传播洪水预警信息的应用程序。采用比例主成分分析(SPCA)过滤掉无关数据,采用集成机器学习技术进行洪水预测。测试是在实时收集的数据集上执行的,并根据许多不同的参数进行分析。在本研究中,我们提出了一个通过减轻洪水风险来实现长期农业产出的策略。
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