Towards Generative Modeling of Urban Flow through Knowledge-enhanced
Denoising Diffusion
- URL: http://arxiv.org/abs/2309.10547v1
- Date: Tue, 19 Sep 2023 11:52:57 GMT
- Title: Towards Generative Modeling of Urban Flow through Knowledge-enhanced
Denoising Diffusion
- Authors: Zhilun Zhou, Jingtao Ding, Yu Liu, Depeng Jin, Yong Li
- Abstract summary: Existing studies mostly focus on predictive modeling of urban flow that predicts the future flow based on historical flow data.
Some other studies aim to predict OD flow among regions but they fail to model dynamic changes of urban flow over time.
In this work, we study a new problem of urban flow generation that generates dynamic urban flow for regions without historical flow data.
- Score: 27.045479361702373
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Although generative AI has been successful in many areas, its ability to
model geospatial data is still underexplored. Urban flow, a typical kind of
geospatial data, is critical for a wide range of urban applications. Existing
studies mostly focus on predictive modeling of urban flow that predicts the
future flow based on historical flow data, which may be unavailable in
data-sparse areas or newly planned regions. Some other studies aim to predict
OD flow among regions but they fail to model dynamic changes of urban flow over
time. In this work, we study a new problem of urban flow generation that
generates dynamic urban flow for regions without historical flow data. To
capture the effect of multiple factors on urban flow, such as region features
and urban environment, we employ diffusion model to generate urban flow for
regions under different conditions. We first construct an urban knowledge graph
(UKG) to model the urban environment and relationships between regions, based
on which we design a knowledge-enhanced spatio-temporal diffusion model
(KSTDiff) to generate urban flow for each region. Specifically, to accurately
generate urban flow for regions with different flow volumes, we design a novel
diffusion process guided by a volume estimator, which is learnable and
customized for each region. Moreover, we propose a knowledge-enhanced denoising
network to capture the spatio-temporal dependencies of urban flow as well as
the impact of urban environment in the denoising process. Extensive experiments
on four real-world datasets validate the superiority of our model over
state-of-the-art baselines in urban flow generation. Further in-depth studies
demonstrate the utility of generated urban flow data and the ability of our
model for long-term flow generation and urban flow prediction. Our code is
released at: https://github.com/tsinghua-fib-lab/KSTDiff-Urban-flow-generation.
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