Bayesian design for sampling anomalous spatio-temporal data

被引:0
|
作者
Katie Buchhorn [1 ]
Kerrie Mengersen [2 ]
Edgar Santos-Fernandez [1 ]
James McGree [2 ]
机构
[1] Queensland University of Technology,School of Mathematical Sciences
[2] Queensland University of Technology,Centre for Data Science
关键词
Anomaly detection; Optimal experimental design; Robust design; Sensor data; Spatio-temporal model; Spatial model;
D O I
10.1007/s11222-025-10594-x
中图分类号
学科分类号
摘要
Data collected from arrays of sensors are essential for informed decision-making in various systems. However, the presence of anomalies can compromise the accuracy and reliability of insights drawn from the collected data or information obtained via statistical analysis. This study aims to develop a robust Bayesian optimal experimental design framework with anomaly detection methods for high-quality data collection. We introduce a general framework that involves anomaly generation, detection and error scoring when searching for an optimal design. This method is demonstrated using two comprehensive simulated case studies: the first study uses a spatial dataset, and the second uses a spatio-temporal river network dataset. As a baseline approach, we employed a commonly used prediction-based utility function based on minimising errors. Results illustrate the trade-off between predictive accuracy and anomaly detection performance for our method under various design scenarios. An optimal design robust to anomalies ensures the collection and analysis of more trustworthy data, playing a crucial role in understanding the dynamics of complex systems such as the environment, therefore enabling informed decisions in monitoring, management, and response.
引用
收藏
相关论文
共 50 条
  • [1] Bayesian modeling of spatio-temporal data with R
    Shanmugam, Ramalingam
    JOURNAL OF STATISTICAL COMPUTATION AND SIMULATION, 2023, 93 (07) : 1224 - 1224
  • [2] Efficient Bayesian sampling inspection for industrial processes based on transformed spatio-temporal data
    Little, J
    Goldstein, M
    Jonathan, P
    STATISTICAL MODELLING, 2004, 4 (04) : 299 - 313
  • [3] A Bayesian Approach for the Multifractal Analysis of Spatio-Temporal Data
    Combrexelle, S.
    Wendt, H.
    Tourneret, J. -Y.
    Altmann, Y.
    McLaughlin, S.
    Abry, P.
    PROCEEDINGS OF THE 23RD INTERNATIONAL CONFERENCE ON SYSTEMS, SIGNALS AND IMAGE PROCESSING, (IWSSIP 2016), 2016, : 331 - 334
  • [4] Fully Bayesian spatio-temporal modeling of FMRI data
    Woolrich, MW
    Jenkinson, M
    Brady, JM
    Smith, SM
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2004, 23 (02) : 213 - 231
  • [5] Spatio-temporal Sampling for Video
    Shankar, Mohan
    Pitsiauis, Nikos P.
    Brady, David
    IMAGE RECONSTRUCTION FROM INCOMPLETE DATA V, 2008, 7076
  • [6] Pivotal discrepancy measures for Bayesian modelling of spatio-temporal data
    Lindsay R. Morris
    Nokuthaba Sibanda
    Environmental and Ecological Statistics, 2022, 29 : 33 - 53
  • [7] Bayesian Spatio-temporal Hierarchical Modeling in Wind Speed Data
    Lee, Chee Nian
    Ong, Hong Choon
    PROCEEDINGS OF THE 24TH NATIONAL SYMPOSIUM ON MATHEMATICAL SCIENCES (SKSM24): MATHEMATICAL SCIENCES EXPLORATION FOR THE UNIVERSAL PRESERVATION, 2017, 1870
  • [8] Pivotal discrepancy measures for Bayesian modelling of spatio-temporal data
    Morris, Lindsay R.
    Sibanda, Nokuthaba
    ENVIRONMENTAL AND ECOLOGICAL STATISTICS, 2022, 29 (01) : 33 - 53
  • [9] Heirarchical fully Bayesian spatio-temporal analysis of FMRI data
    Woolrich, M
    Brady, M
    Smith, SM
    NEUROIMAGE, 2001, 13 (06) : S287 - S287
  • [10] A scalable Bayesian nonparametric model for large spatio-temporal data
    Barzegar, Zahra
    Rivaz, Firoozeh
    COMPUTATIONAL STATISTICS, 2020, 35 (01) : 153 - 173