Exploring Process Heterogeneity in Environmental Statistics: Examples and Methodological Advances

Environmental models typically rely on stationarity assumptions. However, environmental systems are complex, and processes change over states or seasons, leading to often overlooked heterogeneity. This paper explores methods to incorporate process heterogeneity into statistical models to improve th...

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Main Authors: Gregor Laaha, Johannes Laimighofer, Nur Banu Özcelik, Svenja Fischer
Format: Article
Language:English
Published: Austrian Statistical Society 2025-04-01
Series:Austrian Journal of Statistics
Online Access:https://ajs.or.at/index.php/ajs/article/view/2101
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author Gregor Laaha
Johannes Laimighofer
Nur Banu Özcelik
Svenja Fischer
author_facet Gregor Laaha
Johannes Laimighofer
Nur Banu Özcelik
Svenja Fischer
author_sort Gregor Laaha
collection DOAJ
description Environmental models typically rely on stationarity assumptions. However, environmental systems are complex, and processes change over states or seasons, leading to often overlooked heterogeneity. This paper explores methods to incorporate process heterogeneity into statistical models to improve their performance. It considers problems from natural hazards and earth system sciences, demonstrating the effects of process heterogeneity and proposing methodological advances through model extensions. The first problem addresses flood frequency analysis, where floods are generated by different processes in catchment and atmosphere. A mixture model combining peak-over-threshold distributions of flood types can handle this heterogeneity, especially regarding tail heaviness, making it relevant for flood design. The second problem involves minimum flow frequency analysis, with heterogeneity from different summer and winter processes. A mixture distribution model for minima and a copula-based estimator can incorporate seasonal distributions and event dependence, showing significant performance gains for extreme events. The third problem examines process heterogeneity in rainfall models. Clustering event characteristics (e.g., duration, intensity) using Gower's distance and a lightning index helps distinguish between convective and stratiform events, showing potential to enhance rainfall generators. The fourth problem deals with parameter variation in temporal models of environmental variables, using daily streamflow series. A tree-based machine learning model shows that prediction performance and model parameters vary with quantile loss optimization, suggesting the need for different or combined models for full time series in the presence of process heterogeneity. The study highlights the importance of considering process heterogeneity in modeling from the outset and encourages a better understanding of statistical assumptions and the enrichment of physical knowledge in environmental statistics.
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spelling doaj-art-61a370563ad148f6964a4f9b75e1df3e2025-08-20T02:25:02ZengAustrian Statistical SocietyAustrian Journal of Statistics1026-597X2025-04-0154310.17713/ajs.v54i3.2101Exploring Process Heterogeneity in Environmental Statistics: Examples and Methodological AdvancesGregor Laaha0Johannes LaimighoferNur Banu ÖzcelikSvenja FischerInstitute of Statistics, BOKU University, Vienna Environmental models typically rely on stationarity assumptions. However, environmental systems are complex, and processes change over states or seasons, leading to often overlooked heterogeneity. This paper explores methods to incorporate process heterogeneity into statistical models to improve their performance. It considers problems from natural hazards and earth system sciences, demonstrating the effects of process heterogeneity and proposing methodological advances through model extensions. The first problem addresses flood frequency analysis, where floods are generated by different processes in catchment and atmosphere. A mixture model combining peak-over-threshold distributions of flood types can handle this heterogeneity, especially regarding tail heaviness, making it relevant for flood design. The second problem involves minimum flow frequency analysis, with heterogeneity from different summer and winter processes. A mixture distribution model for minima and a copula-based estimator can incorporate seasonal distributions and event dependence, showing significant performance gains for extreme events. The third problem examines process heterogeneity in rainfall models. Clustering event characteristics (e.g., duration, intensity) using Gower's distance and a lightning index helps distinguish between convective and stratiform events, showing potential to enhance rainfall generators. The fourth problem deals with parameter variation in temporal models of environmental variables, using daily streamflow series. A tree-based machine learning model shows that prediction performance and model parameters vary with quantile loss optimization, suggesting the need for different or combined models for full time series in the presence of process heterogeneity. The study highlights the importance of considering process heterogeneity in modeling from the outset and encourages a better understanding of statistical assumptions and the enrichment of physical knowledge in environmental statistics. https://ajs.or.at/index.php/ajs/article/view/2101
spellingShingle Gregor Laaha
Johannes Laimighofer
Nur Banu Özcelik
Svenja Fischer
Exploring Process Heterogeneity in Environmental Statistics: Examples and Methodological Advances
Austrian Journal of Statistics
title Exploring Process Heterogeneity in Environmental Statistics: Examples and Methodological Advances
title_full Exploring Process Heterogeneity in Environmental Statistics: Examples and Methodological Advances
title_fullStr Exploring Process Heterogeneity in Environmental Statistics: Examples and Methodological Advances
title_full_unstemmed Exploring Process Heterogeneity in Environmental Statistics: Examples and Methodological Advances
title_short Exploring Process Heterogeneity in Environmental Statistics: Examples and Methodological Advances
title_sort exploring process heterogeneity in environmental statistics examples and methodological advances
url https://ajs.or.at/index.php/ajs/article/view/2101
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AT johanneslaimighofer exploringprocessheterogeneityinenvironmentalstatisticsexamplesandmethodologicaladvances
AT nurbanuozcelik exploringprocessheterogeneityinenvironmentalstatisticsexamplesandmethodologicaladvances
AT svenjafischer exploringprocessheterogeneityinenvironmentalstatisticsexamplesandmethodologicaladvances