利用机器学习和物联网预测用水量和泄漏检测实现配水系统自动化

Sachin Aggarwal, Smriti Sehgal
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引用次数: 0

摘要

水的分配是一项非常具有挑战性的任务,即使是消耗估算中的一个小错误也可能导致巨大的问题,包括一些地区的水短缺。此外,供水管道的泄漏是一个巨大的问题,因为这些供水管道在地下,如果这些管道发生泄漏,很难识别和修复。为了解决这些问题,不同的作者进行了大量的研究,其中包括使用基于回归的机器学习算法来预测用水量,包括随机森林,决策树和支持向量回归算法,以及泄漏检测,他们使用了深度自动编码器,水声谱图等分类算法。此外,在一些模型中,研究人员使用了压力传感器等传感器来使用这些数据来预测泄漏检测。之前的工作将在本文的第二部分进一步讨论。在本文中,我们将机器学习与物联网相结合,创建了一个自动化模型,该模型可以持续监控供水管道泄漏的日期并预测用水量,整个任务都是实时完成的。在本文中,我们使用人工神经网络算法的分类变量进行泄漏检测,使用回归变量进行用水量预测,对于该模型的性能评估,我们使用r平方和调整r平方进行用水量预测和混淆矩阵,用于泄漏检测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automation of Water Distribution System by Prediction of Water Consumption and Leakage Detection Using Machine Learning and IoT
The distribution of water can be a very challenging task and even a small mistake in consumption estimation can cause huge problem which includes shortage of water in some areas. Also, the leakage in water supply line is a huge problem as these supply lines are underground and it is very difficult to identify and repair if a leakage occurs in those pipelines. To solve these problems a lot of research have been done by different authors which includes the use of regression-based Machine learning algorithms for predicting the water consumption this includes Random Forest, Decision Tree and Support Vector Regression algorithms and for leakage detection they have used classification algorithms like deep autoencoder, hydroacoustic spectrograms and many more. Also, there are some models in which the researchers have used sensors like pressure sensor to use that data for prediction of leakage detection. This previous work will be further discussed in the second section of this paper. In this paper we have combined Machine Learning with IoT to create an automated model which can continuously monitor the date for leakage in water distribution line and predict the water consumption and this whole task is done in real-time. In this paper we have used classification variant of Artificial Neural Network algorithm for leakage detection and regression variant for water consumption prediction and for the performance evaluation of this model we have used R-squared and Adjusted R-Squared for water consumption prediction and confusion matrix, accuracy for leakage detection.
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