This work illustrates a model-based clustering method for analyzing PM10 measurements over time. In particular, we develop a Bayesian dynamic linear model coupled with a spatial product partition model for clustering monitoring stations that exhibit similar persistence and variability of the PM10 concentrations over time. The model integrates spatial information (the locations of the considered monitoring stations) into the clustering process in order to increase the probability that neighboring stations will be assigned to the same cluster. This methodology is applied to the time series of daily PM10 measurements recorded by 110 monitoring stations in Austria. Our analysis reveals three spatially cohesive clusters characterized by different levels of persistence and variability of the PM concentrations. These results may provide helpful insights for understanding air pollution dynamics and support policymakers in identifying intervention areas.

(2025). A Spatial Product Partition Model for PM10 Data . Retrieved from https://hdl.handle.net/10446/295405

A Spatial Product Partition Model for PM10 Data

Aiello, Luca;Legramanti, Sirio;
2025-01-01

Abstract

This work illustrates a model-based clustering method for analyzing PM10 measurements over time. In particular, we develop a Bayesian dynamic linear model coupled with a spatial product partition model for clustering monitoring stations that exhibit similar persistence and variability of the PM10 concentrations over time. The model integrates spatial information (the locations of the considered monitoring stations) into the clustering process in order to increase the probability that neighboring stations will be assigned to the same cluster. This methodology is applied to the time series of daily PM10 measurements recorded by 110 monitoring stations in Austria. Our analysis reveals three spatially cohesive clusters characterized by different levels of persistence and variability of the PM concentrations. These results may provide helpful insights for understanding air pollution dynamics and support policymakers in identifying intervention areas.
sirio.legramanti@unibg.it
2025
Inglese
Methodological and Applied Statistics and Demography III. SIS 2024, Short Papers, Contributed Sessions 1
Pollice, Alessio; Mariani, Paolo;
978-3-031-64430-6
https://link.springer.com/book/10.1007/978-3-031-64431-3
8
13
cartaceo
online
Switzerland
Cham
Springer
SIS 2024: Italian Statistical Society Series on Advances in Statistics, Bari, Italy, 17-20 June 2024
Bari, Italy
17-20 June 2024
Settore STAT-01/A - Statistica
Bayesian nonparametrics; clustering; environmental statistics; spatiotemporal modeling;
eISBN 978-3-031-64431-3
info:eu-repo/semantics/conferenceObject
3
Aiello, Luca; Legramanti, Sirio; Paci, Lucia
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.01 Contributi in atti di convegno - Conference presentations
reserved
Non definito
273
(2025). A Spatial Product Partition Model for PM10 Data . Retrieved from https://hdl.handle.net/10446/295405
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/295405
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