Predicting Road Flooding Risk with Machine Learning Approaches Using Crowdsourced Reports and Fine-grained Traffic Data
Faxi Yuan, William Mobley, Hamed Farahmand, Yuanchang Xu, Russell, Blessing, Shangjia Dong, Ali Mostafavi, Samuel D. Brody

TL;DR
This study develops machine learning models using crowdsourced traffic and precipitation data to predict road flooding risks, enhancing flood resilience and emergency response planning at the road level.
Contribution
It introduces a novel approach combining crowdsourced and fine-grained traffic data with topographic and hydrologic features for road flood prediction.
Findings
Precipitation is the most important predictor of road flooding.
Topographic features are more influential than hydrologic features.
Random forest outperforms AdaBoost in predictive accuracy.
Abstract
The objective of this study is to predict road flooding risks based on topographic, hydrologic, and temporal precipitation features using machine learning models. Predictive flood monitoring of road network flooding status plays an essential role in community hazard mitigation, preparedness, and response activities. Existing studies related to the estimation of road inundations either lack observed road inundation data for model validations or focus mainly on road inundation exposure assessment based on flood maps. This study addresses this limitation by using crowdsourced and fine-grained traffic data as an indicator of road inundation, and topographic, hydrologic, and temporal precipitation features as predictor variables. Two tree-based machine learning models (random forest and AdaBoost) were then tested and trained for predicting road inundations in the contexts of 2017 Hurricane…
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Taxonomy
TopicsFlood Risk Assessment and Management · Landslides and related hazards · Tropical and Extratropical Cyclones Research
