LGSOC-PHAug 31, 2023

Using machine learning to understand causal relationships between urban form and travel CO2 emissions across continents

arXiv:2308.16599v21 citationsh-index: 69
Originality Synthesis-oriented
AI Analysis

This work addresses the need for causality, generalizability, and context specificity in urban climate policy, offering evidence-based insights for scaling solutions, though it is incremental in applying existing methods to a new domain.

The researchers tackled the problem of establishing causal relationships between urban form and car travel CO2 emissions across diverse cities, finding that destination accessibility has the strongest overall effect, while low density and connectivity sharply increase emissions, with similar general trends but some city-specific variations.

Climate change mitigation in urban mobility requires policies reconfiguring urban form to increase accessibility and facilitate low-carbon modes of transport. However, current policy research has insufficiently assessed urban form effects on car travel at three levels: (1) Causality -- Can causality be established beyond theoretical and correlation-based analyses? (2) Generalizability -- Do relationships hold across different cities and world regions? (3) Context specificity -- How do relationships vary across neighborhoods of a city? Here, we address all three gaps via causal graph discovery and explainable machine learning to detect urban form effects on intra-city car travel, based on mobility data of six cities across three continents. We find significant causal effects of urban form on trip emissions and inter-feature effects, which had been neglected in previous work. Our results demonstrate that destination accessibility matters most overall, while low density and low connectivity also sharply increase CO$_2$ emissions. These general trends are similar across cities but we find idiosyncratic effects that can lead to substantially different recommendations. In more monocentric cities, we identify spatial corridors -- about 10--50 km from the city center -- where subcenter-oriented development is more relevant than increased access to the main center. Our work demonstrates a novel application of machine learning that enables new research addressing the needs of causality, generalizability, and contextual specificity for scaling evidence-based urban climate solutions.

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