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Detecting Technical Anomalies in High-Frequency Water-Quality Data Using Artificial Neural Networks.

Javier Rodriguez-PerezCatherine LeighBenoit LiquetClaire KermorvantErin PetersonDamien SousKerrie Mengersen
Published in: Environmental science & technology (2020)
Anomaly detection (AD) in high-volume environmental data requires one to tackle a series of challenges associated with the typical low frequency of anomalous events, the broad-range of possible anomaly types, and local nonstationary environmental conditions, suggesting the need for flexible statistical methods that are able to cope with unbalanced high-volume data problems. Here, we aimed to detect anomalies caused by technical errors in water-quality (turbidity and conductivity) data collected by automated in situ sensors deployed in contrasting riverine and estuarine environments. We first applied a range of artificial neural networks that differed in both learning method and hyperparameter values, then calibrated models using a Bayesian multiobjective optimization procedure, and selected and evaluated the "best" model for each water-quality variable, environment, and anomaly type. We found that semi-supervised classification was better able to detect sudden spikes, sudden shifts, and small sudden spikes, whereas supervised classification had higher accuracy for predicting long-term anomalies associated with drifts and periods of otherwise unexplained high variability.
Keyphrases
  • water quality
  • neural network
  • machine learning
  • high frequency
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  • deep learning
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  • artificial intelligence
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  • single cell