Improving the estimation of total and direction-based heavy-duty vehicle annual average daily traffic |
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Authors: | Ioannis Tsapakis Andrew P. Nichols |
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Affiliation: | 1. Department of Civil Engineering , The University of Akron, Auburn Science and Engineering Center , Akron, OH, 44325-3905, USA;2. Weisberg Division of Engineering and Computer Science , Marshall University , Huntington, WV, 25755, USA |
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Abstract: | Abstract The estimation of annual average daily traffic (AADT) is an important parameter collected and maintained by all US departments of transportation. There have been many past research studies that have focused on ways to improve the estimation of AADT. This paper builds upon previous research and compares eight methods, both traditional and cluster-based methodologies, for aggregating monthly adjustment factors for heavy-duty vehicles (US Department of Transportation Federal Highway Administration (FHWA) vehicle classes 4–13). In addition to the direct comparison between the methodologies, the results from the analysis of variance show at the 95% confidence level that the four cluster-based methods produce statistically lower variance and coefficient of variation over the more traditional approaches. In addition to these findings – which are consistent with previous total volume studies – further analysis is performed to compare total heavy-duty monthly adjustment factors, both directions of traffic, with direction-based monthly adjustment factors. The final results show that the variance as well as the coefficient of variation improve on average by 25% when directional aggregate monthly adjustment factors are used instead of total direction. |
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Keywords: | AADT heavy-duty truck cluster analysis function class groupings |
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