Situational-Aware Multi-Graph Convolutional Recurrent Network (SA-MGCRN) for Travel Demand Forecasting During Wildfires

04/13/2023
by   Xiaojian Zhang, et al.
0

Real-time forecasting of travel demand during wildfire evacuations is crucial for emergency managers and transportation planners to make timely and better-informed decisions. However, few studies focus on accurate travel demand forecasting in large-scale emergency evacuations. Therefore, this study develops and tests a new methodological framework for modeling trip generation in wildfire evacuations by using (a) large-scale GPS data generated by mobile devices and (b) state-of-the-art AI technologies. The proposed methodology aims at forecasting evacuation trips and other types of trips. Based on the travel demand inferred from the GPS data, we develop a new deep learning model, i.e., Situational-Aware Multi-Graph Convolutional Recurrent Network (SA-MGCRN), along with a model updating scheme to achieve real-time forecasting of travel demand during wildfire evacuations. The proposed methodological framework is tested in this study for a real-world case study: the 2019 Kincade Fire in Sonoma County, CA. The results show that SA-MGCRN significantly outperforms all the selected state-of-the-art benchmarks in terms of prediction performance. Our finding suggests that the most important model components of SA-MGCRN are evacuation order/warning information, proximity to fire, and population change, which are consistent with behavioral theories and empirical findings.

READ FULL TEXT

page 14

page 17

research
03/03/2023

Enhancing Fairness in AI-based Travel Demand Forecasting Models

Artificial Intelligence (AI) and machine learning have been increasingly...
research
06/24/2023

ICN: Interactive Convolutional Network for Forecasting Travel Demand of Shared Micromobility

Accurate shared micromobility demand predictions are essential for trans...
research
11/02/2021

Real-time Forecasting of Dockless Scooter-Sharing Demand: A Context-Aware Spatio-Temporal Multi-Graph Convolutional Network Approach

Real-time demand forecasting for shared micromobility can greatly enhanc...
research
06/14/2022

Probabilistic forecasting of bus travel time with a Bayesian Gaussian mixture model

Accurate forecasting of bus travel time and its uncertainty is critical ...
research
11/24/2018

Joint modeling of evacuation departure and travel times in hurricanes

Hurricanes are costly natural disasters periodically faced by households...
research
06/07/2023

GCT-TTE: Graph Convolutional Transformer for Travel Time Estimation

This paper introduces a new transformer-based model for the problem of t...
research
09/16/2021

Estimating Wildfire Evacuation Decision and Departure Timing Using Large-Scale GPS Data

With increased frequency and intensity due to climate change, wildfires ...

Please sign up or login with your details

Forgot password? Click here to reset