Improved Criteria for Estimating Calibration Factors for Highway Safety Manual (HSM) Applications

The Highway Safety Manual (HSM) estimates roadway safety performance based on predictive models that were calibrated using national data. Calibration factors are then used to adjust these predictive models to local conditions for local applications. The HSM recommends that local calibration factors...

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Main Author: Saha, Dibakar
Format: Others
Published: FIU Digital Commons 2014
Subjects:
Online Access:http://digitalcommons.fiu.edu/etd/1701
http://digitalcommons.fiu.edu/cgi/viewcontent.cgi?article=2806&context=etd
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spelling ndltd-fiu.edu-oai-digitalcommons.fiu.edu-etd-28062018-01-05T15:31:06Z Improved Criteria for Estimating Calibration Factors for Highway Safety Manual (HSM) Applications Saha, Dibakar The Highway Safety Manual (HSM) estimates roadway safety performance based on predictive models that were calibrated using national data. Calibration factors are then used to adjust these predictive models to local conditions for local applications. The HSM recommends that local calibration factors be estimated using 30 to 50 randomly selected sites that experienced at least a total of 100 crashes per year. It also recommends that the factors be updated every two to three years, preferably on an annual basis. However, these recommendations are primarily based on expert opinions rather than data-driven research findings. Furthermore, most agencies do not have data for many of the input variables recommended in the HSM. This dissertation is aimed at determining the best way to meet three major data needs affecting the estimation of calibration factors: (1) the required minimum sample sizes for different roadway facilities, (2) the required frequency for calibration factor updates, and (3) the influential variables affecting calibration factors. In this dissertation, statewide segment and intersection data were first collected for most of the HSM recommended calibration variables using a Google Maps application. In addition, eight years (2005-2012) of traffic and crash data were retrieved from existing databases from the Florida Department of Transportation. With these data, the effect of sample size criterion on calibration factor estimates was first studied using a sensitivity analysis. The results showed that the minimum sample sizes not only vary across different roadway facilities, but they are also significantly higher than those recommended in the HSM. In addition, results from paired sample t-tests showed that calibration factors in Florida need to be updated annually. To identify influential variables affecting the calibration factors for roadway segments, the variables were prioritized by combining the results from three different methods: negative binomial regression, random forests, and boosted regression trees. Only a few variables were found to explain most of the variation in the crash data. Traffic volume was consistently found to be the most influential. In addition, roadside object density, major and minor commercial driveway densities, and minor residential driveway density were also identified as influential variables. 2014-11-14T08:00:00Z text application/pdf http://digitalcommons.fiu.edu/etd/1701 http://digitalcommons.fiu.edu/cgi/viewcontent.cgi?article=2806&context=etd FIU Electronic Theses and Dissertations FIU Digital Commons Highway Safety Manual Calibration Factor Sample Size Crash Predictions Variable Prioritization Negative Binomial Random Forests Boosted Regression Trees Civil and Environmental Engineering
collection NDLTD
format Others
sources NDLTD
topic Highway Safety Manual
Calibration Factor
Sample Size
Crash Predictions
Variable Prioritization
Negative Binomial
Random Forests
Boosted Regression Trees
Civil and Environmental Engineering
spellingShingle Highway Safety Manual
Calibration Factor
Sample Size
Crash Predictions
Variable Prioritization
Negative Binomial
Random Forests
Boosted Regression Trees
Civil and Environmental Engineering
Saha, Dibakar
Improved Criteria for Estimating Calibration Factors for Highway Safety Manual (HSM) Applications
description The Highway Safety Manual (HSM) estimates roadway safety performance based on predictive models that were calibrated using national data. Calibration factors are then used to adjust these predictive models to local conditions for local applications. The HSM recommends that local calibration factors be estimated using 30 to 50 randomly selected sites that experienced at least a total of 100 crashes per year. It also recommends that the factors be updated every two to three years, preferably on an annual basis. However, these recommendations are primarily based on expert opinions rather than data-driven research findings. Furthermore, most agencies do not have data for many of the input variables recommended in the HSM. This dissertation is aimed at determining the best way to meet three major data needs affecting the estimation of calibration factors: (1) the required minimum sample sizes for different roadway facilities, (2) the required frequency for calibration factor updates, and (3) the influential variables affecting calibration factors. In this dissertation, statewide segment and intersection data were first collected for most of the HSM recommended calibration variables using a Google Maps application. In addition, eight years (2005-2012) of traffic and crash data were retrieved from existing databases from the Florida Department of Transportation. With these data, the effect of sample size criterion on calibration factor estimates was first studied using a sensitivity analysis. The results showed that the minimum sample sizes not only vary across different roadway facilities, but they are also significantly higher than those recommended in the HSM. In addition, results from paired sample t-tests showed that calibration factors in Florida need to be updated annually. To identify influential variables affecting the calibration factors for roadway segments, the variables were prioritized by combining the results from three different methods: negative binomial regression, random forests, and boosted regression trees. Only a few variables were found to explain most of the variation in the crash data. Traffic volume was consistently found to be the most influential. In addition, roadside object density, major and minor commercial driveway densities, and minor residential driveway density were also identified as influential variables.
author Saha, Dibakar
author_facet Saha, Dibakar
author_sort Saha, Dibakar
title Improved Criteria for Estimating Calibration Factors for Highway Safety Manual (HSM) Applications
title_short Improved Criteria for Estimating Calibration Factors for Highway Safety Manual (HSM) Applications
title_full Improved Criteria for Estimating Calibration Factors for Highway Safety Manual (HSM) Applications
title_fullStr Improved Criteria for Estimating Calibration Factors for Highway Safety Manual (HSM) Applications
title_full_unstemmed Improved Criteria for Estimating Calibration Factors for Highway Safety Manual (HSM) Applications
title_sort improved criteria for estimating calibration factors for highway safety manual (hsm) applications
publisher FIU Digital Commons
publishDate 2014
url http://digitalcommons.fiu.edu/etd/1701
http://digitalcommons.fiu.edu/cgi/viewcontent.cgi?article=2806&context=etd
work_keys_str_mv AT sahadibakar improvedcriteriaforestimatingcalibrationfactorsforhighwaysafetymanualhsmapplications
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