Sparse and hybrid modelling of relative humidity: the Krško basin case study

This study describes an application of hybrid modelling for an atmospheric variable in the Krško basin. The hybrid model is a combination of a physics-based and data-driven model and has some properties of both modelling approaches. In the authors’ case, it is used for the modelling of an atmospheri...

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Main Authors: Juš Kocijan, Matija Perne, Boštjan Grašic, Marija Zlata Božnar, Primož Mlakar
Format: Article
Language:English
Published: Wiley 2019-12-01
Series:CAAI Transactions on Intelligence Technology
Subjects:
Online Access:https://digital-library.theiet.org/content/journals/10.1049/trit.2019.0054
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spelling doaj-28e0ff71274945669404dba8c21424c22021-04-02T11:48:21ZengWileyCAAI Transactions on Intelligence Technology2468-23222019-12-0110.1049/trit.2019.0054TRIT.2019.0054Sparse and hybrid modelling of relative humidity: the Krško basin case studyJuš Kocijan0Matija Perne1Matija Perne2Boštjan Grašic3Marija Zlata Božnar4Primož Mlakar5Jozef Stefan InstituteJozef Stefan InstituteJozef Stefan InstituteMEIS d.o.o.MEIS d.o.o.MEIS d.o.o.This study describes an application of hybrid modelling for an atmospheric variable in the Krško basin. The hybrid model is a combination of a physics-based and data-driven model and has some properties of both modelling approaches. In the authors’ case, it is used for the modelling of an atmospheric variable, namely relative humidity in a particular location for the purpose of using the predictions of the model as an input to the air-pollution-dispersion model for radiation exposure. The presented hybrid model is a combination of a physics-based atmospherical model and a Gaussian-process (GP) regression model. The GP model is a probabilistic kernel method that also enables evaluation of prediction confidence. The problem of poor scalability of GP modelling was solved using sparse GP modelling; in particular, the fully independent training conditional method was used. Two different approaches to dataset selection for empirical model training were used and multiple-step-ahead predictions for different horizons were assessed. It is shown in this study that the accuracy of the predicted relative humidity in the Krško basin improved when using hybrid models over using the physics-based model alone and that predictions for a considerable length of horizon can be used.https://digital-library.theiet.org/content/journals/10.1049/trit.2019.0054environmental science computingair pollutionlearning (artificial intelligence)regression analysisgaussian processeshumiditygeophysics computingphysics-based atmospherical modelgaussian-process regression modelgp modelsparse gp modellingempirical model trainingphysics-based modelhybrid modellingrelative humiditykrško basin case studyatmospheric variabledata-driven modelair-pollution-dispersion model
collection DOAJ
language English
format Article
sources DOAJ
author Juš Kocijan
Matija Perne
Matija Perne
Boštjan Grašic
Marija Zlata Božnar
Primož Mlakar
spellingShingle Juš Kocijan
Matija Perne
Matija Perne
Boštjan Grašic
Marija Zlata Božnar
Primož Mlakar
Sparse and hybrid modelling of relative humidity: the Krško basin case study
CAAI Transactions on Intelligence Technology
environmental science computing
air pollution
learning (artificial intelligence)
regression analysis
gaussian processes
humidity
geophysics computing
physics-based atmospherical model
gaussian-process regression model
gp model
sparse gp modelling
empirical model training
physics-based model
hybrid modelling
relative humidity
krško basin case study
atmospheric variable
data-driven model
air-pollution-dispersion model
author_facet Juš Kocijan
Matija Perne
Matija Perne
Boštjan Grašic
Marija Zlata Božnar
Primož Mlakar
author_sort Juš Kocijan
title Sparse and hybrid modelling of relative humidity: the Krško basin case study
title_short Sparse and hybrid modelling of relative humidity: the Krško basin case study
title_full Sparse and hybrid modelling of relative humidity: the Krško basin case study
title_fullStr Sparse and hybrid modelling of relative humidity: the Krško basin case study
title_full_unstemmed Sparse and hybrid modelling of relative humidity: the Krško basin case study
title_sort sparse and hybrid modelling of relative humidity: the krško basin case study
publisher Wiley
series CAAI Transactions on Intelligence Technology
issn 2468-2322
publishDate 2019-12-01
description This study describes an application of hybrid modelling for an atmospheric variable in the Krško basin. The hybrid model is a combination of a physics-based and data-driven model and has some properties of both modelling approaches. In the authors’ case, it is used for the modelling of an atmospheric variable, namely relative humidity in a particular location for the purpose of using the predictions of the model as an input to the air-pollution-dispersion model for radiation exposure. The presented hybrid model is a combination of a physics-based atmospherical model and a Gaussian-process (GP) regression model. The GP model is a probabilistic kernel method that also enables evaluation of prediction confidence. The problem of poor scalability of GP modelling was solved using sparse GP modelling; in particular, the fully independent training conditional method was used. Two different approaches to dataset selection for empirical model training were used and multiple-step-ahead predictions for different horizons were assessed. It is shown in this study that the accuracy of the predicted relative humidity in the Krško basin improved when using hybrid models over using the physics-based model alone and that predictions for a considerable length of horizon can be used.
topic environmental science computing
air pollution
learning (artificial intelligence)
regression analysis
gaussian processes
humidity
geophysics computing
physics-based atmospherical model
gaussian-process regression model
gp model
sparse gp modelling
empirical model training
physics-based model
hybrid modelling
relative humidity
krško basin case study
atmospheric variable
data-driven model
air-pollution-dispersion model
url https://digital-library.theiet.org/content/journals/10.1049/trit.2019.0054
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