English

Development and evaluation of an open-source, machine learning-based average annual daily traffic estimation software

Software Engineering 2019-10-24 v1

Abstract

Traditionally, Departments of Transportation (DOTs) use the factor-based model to estimate Annual Average Daily Traffic (AADT) from short-term traffic counts. The expansion factors, derived from the permanent traffic count stations, are applied to the short-term counts for AADT estimation. The inherent challenges of the factor-based method (i.e., grouping the count stations, applying proper expansion factors) make the estimated AADT values erroneous. Based on a survey conducted by the authors, 97% of the 39 public transportation agencies use the factor-based AADT estimation model, and these agencies face the aforementioned challenges while using factor-based models to estimate AADT. To derive a more accurate AADT, this paper presents the "estimAADTion" software, which is an open-source software developed based on a machine learning method called support vector regression (SVR) for estimating AADT using 24-hour short-term count data. DOTs conduct short-term counts at different locations periodically. This software has been designed to estimate AADT at a particular location from the short-term counts collected at those locations. In order to estimate AADT from short-term counts, the software uses data from permanent count stations to train the SVR model. The performance of the "estimAADTion" software is validated using the short-term count data from South Carolina. The Mean Absolute Percentage Error (MAPE) of the AADT estimated from the software is 3%, while the factor-based method produces a MAPE value of 6%.

Keywords

Cite

@article{arxiv.1910.10622,
  title  = {Development and evaluation of an open-source, machine learning-based average annual daily traffic estimation software},
  author = {Zadid Khan and Sakib Mahmud Khan and Ph. D. and Mashrur Chowdhury and Ph. D. and P. E. and F. ASCE},
  journal= {arXiv preprint arXiv:1910.10622},
  year   = {2019}
}

Comments

16 Pages, 6 Figures, 1 Table

R2 v1 2026-06-23T11:52:43.915Z