Unsupervised Anomaly Detection in Spatio-Temporal Stream Network Sensor Data

被引:0
|
作者
Santos-Fernandez, Edgar [1 ]
Ver Hoef, Jay M. [2 ]
Peterson, Erin E. [1 ]
Mcgree, James [1 ]
Villa, Cesar A. [3 ]
Leigh, Catherine [4 ]
Turner, Ryan [5 ,6 ]
Roberts, Cameron [5 ]
Mengersen, Kerrie [1 ]
机构
[1] Queensland Univ Technol, Sch Math Sci, Brisbane, Qld, Australia
[2] NOAA, NMFS Alaska Fisheries Sci Ctr, Marine Mammal Lab, Juneau, AK USA
[3] Queensland Dept Environm & Sci, Sci Informat Serv, Brisbane, Qld, Australia
[4] Royal Melbourne Inst Technol RMIT, Sch Sci, Biosci & Food Technol Discipline, Melbourne, Vic, Australia
[5] Queensland Dept Environm & Sci, Water Qual & Invest, Brisbane, Qld, Australia
[6] Univ Queensland, Sch Earth & Environm Sci, Brisbane, Qld, Australia
基金
澳大利亚研究理事会;
关键词
anomalies; space-time; linear regression; Bayesian model; sensor data; branching network; SPATIAL STATISTICAL-MODELS; RIVER DISTANCES; PREDICTION; PACKAGE; FLOW;
D O I
10.1029/2023WR035707
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The use of in-situ digital sensors for water quality monitoring is becoming increasingly common worldwide. While these sensors provide near real-time data for science, the data are prone to technical anomalies that can undermine the trustworthiness of the data and the accuracy of statistical inferences, particularly in spatial and temporal analyses. Here we propose a framework for detecting anomalies in sensor data recorded in stream networks, which takes advantage of spatial and temporal autocorrelation to improve detection rates. The proposed framework involves the implementation of effective data imputation to handle missing data, alignment of time-series to address temporal disparities, and the identification of water quality events. We explore the effectiveness of a suite of state-of-the-art statistical methods including posterior predictive distributions, finite mixtures, and Hidden Markov Models (HMM). We showcase the practical implementation of automated anomaly detection in near-real time by employing a Bayesian recursive approach. This demonstration is conducted through a comprehensive simulation study and a practical application to a substantive case study situated in the Herbert River, located in Queensland, Australia, which flows into the Great Barrier Reef. We found that methods such as posterior predictive distributions and HMM produce the best performance in detecting multiple types of anomalies. Utilizing data from multiple sensors deployed relatively near one another enhances the ability to distinguish between water quality events and technical anomalies, thereby significantly improving the accuracy of anomaly detection. Thus, uncertainty and biases in water quality reporting, interpretation, and modeling are reduced, and the effectiveness of subsequent management actions improved.
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页数:24
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