AWT - Clustering Meteorological Time Series Using an Aggregated Wavelet Tree

AWT - Clustering Meteorological Time Series Using an Aggregated Wavelet Tree

Abstract

Both clustering and outlier detection play an important role for meteorological measurements. We present the AWT algorithm, a clustering algorithm for time series data that also performs implicit outlier detection during the clustering. AWT integrates ideas of several well-known K-Means clustering algorithms. It chooses the number of clusters automatically based on a user-defined threshold parameter, and it can be used for heterogeneous meteorological input data as well as for data sets that exceed the available memory size. We apply AWT to crowd sourced 2-m temperature data with an hourly resolution from the city of Vienna to detect outliers and to investigate if the final clusters show general similarities and similarities with urban land-use characteristics. It is shown that both the outlier detection and the implicit mapping to land-use characteristic is possible with AWT which opens new possible fields of application, specifically in the rapidly evolving field of urban climate and urban weather.

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Authors
  • Pacher, Christina
  • Schicker, Irene
  • DeWit, Rosmarie
  • Hlavackova-Schindler, Katerina
  • Plant, Claudia
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Shortfacts
Category
Paper in Conference Proceedings or in Workshop Proceedings (Paper)
Event Title
The 9th IEEE International Conference on Data Science and Advanced Analytics 2022
Divisions
Data Mining and Machine Learning
Event Location
Shenzhen, China
Event Type
Conference
Event Dates
October 13-16, 2022
Date
13 October 2022
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