Abstract
Herein, we introduce a novel methodology to generate urban morphometric parameters that takes advantage of deep neural networks and inverse modeling. We take the example of Chicago, USA, where the Urban Canopy Parameters (UCPs) available from the National Urban Database and Access Portal Tool (NUDAPT) are used as input to the Weather Research and Forecasting (WRF) model. Next, the WRF simulations are carried out with Local Climate Zones (LCZs) as part of the World Urban Data Analysis and Portal Tools (WUDAPT) approach. Lastly, a third novel simulation, Digital Synthetic City (DSC), was undertaken where urban morphometry was generated using deep neural networks and inverse modeling, following which UCPs are re-calculated for the LCZs. The three experiments (NUDAPT, WUDAPT, and DSC) were compared against Mesowest observation stations. The results suggest that the introduction of LCZs improves the overall model simulation of urban air temperature. The DSC simulations yielded equal to or better results than the WUDAPT simulation. Furthermore, the change in the UCPs led to a notable difference in the simulated temperature gradients and wind speed within the urban region and the local convergence/divergence zones. These results provide the first successful implementation of the digital urban visualization dataset within an NWP system. This development now can lead the way for a more scalable and widespread ability to perform more accurate urban meteorological modeling and forecasting, especially in developing cities. Additionally, city planners will be able to generate synthetic cities and study their actual impact on the environment.
| Original language | English |
|---|---|
| Article number | pgad027 |
| Journal | PNAS Nexus |
| Volume | 2 |
| Issue number | 3 |
| DOIs | |
| State | Published - Mar 1 2023 |
| Externally published | Yes |
Funding
P.P. acknowledge the SERB Overseas Visiting Doctoral Fellowship for a 1-year research visit to D.A. and D.N. at Purdue University. We would like to acknowledge high-performance computing support from Cheyenne (doi:10.5065/D6RX99HX) provided by NCAR’s Computational and Information Systems Laboratory, sponsored by the National Science Foundation. This work is supported in part by funds from the US National Science Foundation (NSF) Grant #1835739, US NSF Grant #1816514, US NSF Grant #2106717, US NSF #2032770, NASA Interdisciplinary Sciences #80NSSC20K1262 and #80NSSC20K1268, DoE ASCR DE-SC 00221, DoE Urban Integrated Field Labs, and the University of Texas William Stamps Farish Chair Professorship.
Keywords
- WUDAPT
- deep neural network
- urban boundary layer
- urban canopy parameters
- urban climate
- weather research and forecasting model