Abstract

Automatic meter infrastructure (AMI) systems using remote metering are being widely used to utilize water resources efficiently and minimize non-revenue water. We propose a convolutional neural network-long short-term memory network (CNN-LSTM)-based solution that can predict faulty remote water meter reading (RWMR) devices by analyzing approximately 2,850,000 AMI data collected from 2762 customers over 360 days in a small-sized city in South Korea. The AMI data used in this study is a challenging, highly unbalanced real-world dataset with limited features. First, we perform extensive preprocessing steps and extract meaningful features for handling this challenging dataset with limited features. Next, we select important features that have a higher influence on the classifier using a recursive feature elimination method. Finally, we apply the CNN-LSTM model for predicting faulty RWMR devices. We also propose an efficient training method for ML models to learn the unbalanced real-world AMI dataset. A cost-effective threshold for evaluating the performance of ML models is proposed by considering the mispredictions of ML models as well as the cost. Our experimental results show that an F-measure of 0.82 and MCC of 0.83 are obtained when the CNN-LSTM model is used for prediction.

Highlights

  • Water is one of the most important resources for mankind

  • Among the compared ML models, the GMM shows the worst performance with an F-measure of

  • We propose a CNN-long short-term memory (LSTM)-based solution that can predict faulty remote water meter reading (RWMR) devices after collecting/storing actual water Automatic meter infrastructure (AMI) data in South Korea

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Summary

Introduction

Water is one of the most important resources for mankind. Global desertification and water pollution have led to a steep rise in water prices. A stable water supply has become a very important concern for the general population as well as water suppliers. Most water suppliers are governments or municipalities, and non-revenue water (NRW). Is an important concern for those water suppliers. NRW refers to water that has been supplied but not billed. Some of the main causes of NRW are faulty water meters, water leakage, and theft. Minimizing NRW is important, as it is directly related to the revenues earned by water suppliers. The NRW varies from region to region; it is less than 5% in countries such as Singapore and more than 70% in some parts of Africa [1]

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