Projects per year
Abstract
Traditional weather stations monitor the weather above short grass, which is a standardized environment. Such an environment is far from representative of where most people live. Moreover, despite advances in urban climate modelling, even state-of-the-art weather forecasts and climate scenarios do not account for the hyperlocal influence of land cover on meteorological variables.
To bridge this gap, we have constructed several machine learning models to translate 2-meter temperature measurements from standardized to different rural and urban environments. The input features of these models are the land cover fractions: impervious, green and water around a target station, and the interpolated open-field 2-meter temperature and wind values at the target location. The target feature for these models is the temperature data from the Flemish crowd-sourced VLINDER-network, which consists of calibrated stations positioned in unconventional locations. These models were trained on data from a limited set of VLINDER-stations and evaluated on unseen data of previously used and unused VLINDER-stations. We found that a random forest model yields the best results and had the highest interpretability of how the features interacted with the model. The results of the simple artificial neural networks are not robust, making these models less reliable.
We explore the addition of more features related to the urban environment such as building height, sky view factor and variables related to radiation. Finally, we investigate how to prevent possible overfitting due to insufficient variation in the land cover in the training data by including other data sources.
To bridge this gap, we have constructed several machine learning models to translate 2-meter temperature measurements from standardized to different rural and urban environments. The input features of these models are the land cover fractions: impervious, green and water around a target station, and the interpolated open-field 2-meter temperature and wind values at the target location. The target feature for these models is the temperature data from the Flemish crowd-sourced VLINDER-network, which consists of calibrated stations positioned in unconventional locations. These models were trained on data from a limited set of VLINDER-stations and evaluated on unseen data of previously used and unused VLINDER-stations. We found that a random forest model yields the best results and had the highest interpretability of how the features interacted with the model. The results of the simple artificial neural networks are not robust, making these models less reliable.
We explore the addition of more features related to the urban environment such as building height, sky view factor and variables related to radiation. Finally, we investigate how to prevent possible overfitting due to insufficient variation in the land cover in the training data by including other data sources.
Original language | English |
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DOIs | |
Publication status | Published - 30 Apr 2023 |
Event | EGU General Assembly 2023 - Austria Center Vienna (ACV), Vienna, Austria Duration: 23 Apr 2023 → 28 Apr 2023 Conference number: EGU23-9009 https://www.egu23.eu/ |
Conference
Conference | EGU General Assembly 2023 |
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Abbreviated title | EGU23 |
Country/Territory | Austria |
City | Vienna |
Period | 23/04/23 → 28/04/23 |
Internet address |
Keywords
- urban heat island
- machine learning
- citizen science
- land cover
Fingerprint
Dive into the research topics of 'Machine learning-based emulation of land cover effects at sub-hectometric scale using crowd-sourced weather observations'. Together they form a unique fingerprint.Projects
- 2 Active
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OZR3893: Deep learning for quality control of crowdsourced data and seamless weather forecasting.
1/02/22 → 31/01/26
Project: Fundamental
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FEDTWIN2: Deep learning combined with physical modelling for weather, climate and geophysics applications
1/10/21 → 30/09/36
Project: Fundamental
Research output
- 1 Web publication/site
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LEGO Urban planner: What is the LEGO urban climate game?
De Cruz, L., Covaci, A., Kooli, M. F. & El Bakkali, C., 8 Oct 2024Research output: Non-textual form › Web publication/site
Activities
- 1 Participating in or organizing a festival/exhibition
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Dag van de Wetenschap
Lesley De Cruz (Supervisor), Andrei Covaci (Organiser), Camelia El Bakkali (Participant) & Simon De Kock (Organiser)
26 Nov 2023Activity: Participating in or organising an event › Participating in or organizing a festival/exhibition