The set-up and evaluation of fine-scale data assimilation for the urban climate of Amsterdam

Journal Article (2022)
Author(s)

Sytse Koopmans (Wageningen University & Research)

Ronald van Haren (Netherlands eScience Center)

Natalie Theeuwes (Wageningen University & Research, Royal Netherlands Meteorological Institute (KNMI))

Reinder Ronda (Wageningen University & Research)

R. Uijlenhoet (TU Delft - Water Resources)

A. A M Holtslag (Wageningen University & Research)

G. J. Steeneveld (Wageningen University & Research)

Research Group
Water Resources
Copyright
© 2022 Sytse Koopmans, Ronald van Haren, Natalie Theeuwes, Reinder Ronda, R. Uijlenhoet, Albert A.M. Holtslag, Gert Jan Steeneveld
DOI related publication
https://doi.org/10.1002/qj.4401
More Info
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Publication Year
2022
Language
English
Copyright
© 2022 Sytse Koopmans, Ronald van Haren, Natalie Theeuwes, Reinder Ronda, R. Uijlenhoet, Albert A.M. Holtslag, Gert Jan Steeneveld
Research Group
Water Resources
Issue number
750
Volume number
149
Pages (from-to)
171-191
Reuse Rights

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Abstract

Ongoing urbanization highlights the need for a better understanding and high resolution modelling of the urban climate. In this study, we combine rural observations by WMO surface stations, weather radar data and urban crowd-sourced observations with very fine-scale modelling efforts for Amsterdam, The Netherlands. As a model, we use the Weather Research and Forecasting (WRF) mesoscale model with 3D variational data assimilation at a 100-m resolution in the innermost model domain. In order to enable the assimilation of observations within the urban canopy, we develop a scheme to reduce urban temperature biases by adjusting urban fabric temperatures. The scheme is tested against independent urban observations for the summer month of July 2014 and specifically for a hot period and an extreme precipitation event. We find data assimilation reduces biases in temperature and wind speed. Within the city, the most significant improvement is the reduction of negative temperature biases during clear nights, which implies a better prediction of the Urban Heat Island (UHI). Concerning precipitation, the fractional skill score improves incrementally when additional observations are assimilated, and the largest impact is seen from the assimilation of weather radar observations.