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Predicting Urban Water Quality With Ubiquitous Data - A Data-Driven Approach

Ye Liu, Yuxuan Liang, Kun Ouyang, Shuming Liu, David S. Rosenblum, Yu Zheng

2020IEEE Transactions on Big Data37 citationsDOI

Abstract

Urban water quality is of great importance to our daily lives. Prediction of urban water quality help control water pollution and protect human health. However, predicting the urban water quality is a challenging task since the water quality varies in urban spaces non-linearly and depends on multiple factors, such as meteorology, water usage patterns, and land uses. In this article, we forecast the water quality of a station over the next few hours from a data-driven perspective, using the water quality data, and water hydraulic data reported by existing monitor stations and a variety of data sources we observed in the city, such as meteorology, pipe networks, structure of road networks, and point of interests (POIs). First, we identify the influential factors that affect the urban water quality via extensive experiments. Second, we present a multi-task multi-view learning method to fuse those multiple datasets from different domains into an unified learning model. We evaluate our method with real-world datasets, and the extensive experiments verify the advantages of our method over other baselines and demonstrate the effectiveness of our approach.

Topics & Concepts

Computer scienceWater qualityQuality (philosophy)Task (project management)Variety (cybernetics)Perspective (graphical)Data qualityFuse (electrical)Data miningData scienceArtificial intelligenceMetric (unit)EconomicsOperations managementPhilosophyEpistemologyElectrical engineeringManagementEcologyEngineeringBiologyWater Quality Monitoring TechnologiesTraffic Prediction and Management TechniquesData Stream Mining Techniques
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