Abstract
This work considers a database of pre-storm morphological factors and documented impacts along a coastal roadway. Impacts from seven storms, including sand overwash and pavement damage, were documented via aerial photography. Pre-storm topography was examined to parameterize the pre-storm morphological factors likely to control whether stormwater levels and waves impact the road. Two machine learning techniques, K-nearest neighbors (KNN) and ensemble of decision trees (EDT), were employed to identify the most critical pre-storm morphological factors in determining the road vulnerability, expressed as a binary variable to impact storms. Pre-processing analysis was conducted with a correlation analysis of the predictors’ data set and feature selection subroutine for the KNN classifier. The EDTs were built directly from the data set, and feature importance estimates were reported for all storm events. Both classifiers report the distances from roadway edge-of-pavement to the dune toe and ocean as the most important predictors of most storms. For storms approaching from the bayside, the width of the barrier island was the second most important factor. Other factors of importance included elevation of the dune toe, distance from the edge of pavement to the ocean shoreline, shoreline orientation (relative to predominant wave angle), and beach slope. Compared to previously reported optimization techniques, both machine learning methods improved using pre-storm morphological data to classify highway vulnerability based on storm impacts.
Subject
Ocean Engineering,Water Science and Technology,Civil and Structural Engineering
Reference51 articles.
1. Impact of climate change on pavement performance: Preliminary lessons learned through the infrastructure and climate network (ICNet);Daniel,2014
2. Hurricane Costs;Office for Coastal Management, NOAA,2022
3. Maintenance Operations and Performance Analysis Report (MOPAR) (31 December 2020). Asset Management NCDOT. Connect NCDOT;NCDOT
4. Vulnerability Indicators for Coastal Roadways Based on Barrier Island Morphology and Shoreline ChangePredictions
5. Effectiveness of indicators for assessing the vulnerability of barrier island highways
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献