A multi-scale unified model of human mobility in urban agglomerations

Patterns (N Y). 2023 Oct 17;4(11):100862. doi: 10.1016/j.patter.2023.100862. eCollection 2023 Nov 10.

Abstract

Understanding human mobility patterns is vital for the coordinated development of cities in urban agglomerations. Existing mobility models can capture single-scale travel behavior within or between cities, but the unified modeling of multi-scale human mobility in urban agglomerations is still analytically and computationally intractable. In this study, by simulating people's mental representations of physical space, we decompose and model the human travel choice process as a cascaded multi-class classification problem. Our multi-scale unified model, built upon cascaded deep neural networks, can predict human mobility in world-class urban agglomerations with thousands of regions. By incorporating individual memory features and population attractiveness features extracted by a graph generative adversarial network, our model can simultaneously predict multi-scale individual and population mobility patterns within urban agglomerations. Our model serves as an exemplar framework for reproducing universal-scale laws of human mobility across various spatial scales, providing vital decision support for urban settings of urban agglomerations.

Keywords: convolutional neural network; deep learning; generative adversarial network; hierarchical travel choice; human behavior; human mobility; multi-scale travel; urban agglomeration.