Bridge type classification: supervised learning on a modified NBI dataset
Achyuthan Jootoo, David Lattanzi

TL;DR
This study explores supervised machine learning models to classify bridge types using a large dataset, incorporating additional data like seismic activity, to assist engineers in making more optimized and standardized design choices.
Contribution
It demonstrates the application of state-specific supervised learning models with feature selection and data resampling to improve bridge type classification accuracy.
Findings
Decision trees achieved 88.6% recall and precision.
Inclusion of seismic data improved model performance.
State-specific models outperform models trained on complete datasets.
Abstract
A key phase in the bridge design process is the selection of the structural system. Due to budget and time constraints, engineers typically rely on engineering judgment and prior experience when selecting a structural system, often considering a limited range of design alternatives. The objective of this study was to explore the suitability of supervised machine learning as a preliminary design aid that provides guidance to engineers with regards to the statistically optimal bridge type to choose, ultimately improving the likelihood of optimized design, design standardization, and reduced maintenance costs. In order to devise this supervised learning system, data for over 600,000 bridges from the National Bridge Inventory database were analyzed. Key attributes for determining the bridge structure type were identified through three feature selection techniques. Potentially useful…
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Taxonomy
MethodsSupport Vector Machine
