Learning to Learn the Macroscopic Fundamental Diagram using Physics-Informed and meta Machine Learning techniques
Amalie Roark, Serio Agriesti, Francisco Camara Pereira, Guido Cantelmo

TL;DR
This paper introduces a Meta-Learning framework combined with Physics-Informed Neural Networks to estimate the Macroscopic Fundamental Diagram in cities with limited traffic data, achieving significant accuracy improvements.
Contribution
It develops a novel Meta-Learning approach that leverages data from multiple cities to improve MFD estimation in data-scarce urban environments.
Findings
Average MAE improvement of around 50% in flow prediction across cities.
Meta-Learning generalizes well to unseen cities with limited data.
Framework outperforms traditional Transfer Learning and existing models.
Abstract
The Macroscopic Fundamental Diagram is a popular tool used to describe traffic dynamics in an aggregated way, with applications ranging from traffic control to incident analysis. However, estimating the MFD for a given network requires large numbers of loop detectors, which is not always available in practise. This article proposes a framework to alleviate the data scarcity challenge harnessing Meta-Learning, a subcategory of Machine Learning that trains models to understand and adapt to new tasks on their own. We use Meta-Learning to identify and exploit transferable patterns from data-rich cities to cities where not enough data is available to estimate the MFD. The developed model is trained and tested by leveraging data from multiple cities and exploiting it to model the MFD of other cities with different shares of detectors and topological structures. The proposed Meta-Learning…
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