River Water Pollution Pattern Prediction using a Simple Neural Network

Kennedy, P. Kusuma, C. Setianingsih
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引用次数: 1

Abstract

Rivers are an important element of its environment; river water sustains and prospers living beings in its surrounding. When river water becomes polluted, though, it becomes useless or even harmful to its ecosystem. This Paper proposes an IoT (Internet of Things) based system as a solution to counteract river pollution. The system is composed of a hardware that measures pH, temperature, and turbidity of the water – then transmitting the data via LPWAN (Low Power Wide Area Network), more specifically LoRa (Long Range. Successfully transmitted data will be used to train an ANN (Artificial Neural Network) which is used to recognize and predict patterns of river water pollution. The monitoring and prediction results will be accessible via a web app. This Paper has successfully designed and built a system that implements an ANN for recognizing patterns in river conditions, to predict potential river pollution. Early detection of river pollution can serve as vital information to act in preventing or anticipating river pollution.
基于简单神经网络的河流水污染模式预测
河流是其环境的重要组成部分;河水维持和繁荣了周围的生物。然而,当河水受到污染时,它就变得无用,甚至对其生态系统有害。本文提出了一种基于物联网的系统来解决河流污染问题。该系统由测量水的pH值、温度和浊度的硬件组成,然后通过LPWAN(低功率广域网),更具体地说是LoRa(远程)传输数据。成功传输的数据将用于训练用于识别和预测河流水污染模式的人工神经网络。监测和预测结果将通过web应用程序访问。本文成功地设计并构建了一个系统,该系统实现了人工神经网络,用于识别河流条件的模式,以预测潜在的河流污染。河流污染的早期检测是预防或预测河流污染的重要信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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