A Prescriptive Framework for Determining Optimal Days for Short-Term Traffic Counts
Arthur Mukwaya, Nancy Kasamala, Nana Kankam Gyimah, Judith Mwakalonge, Gurcan Comert, Saidi Siuhi, Denis Ruganuza, Mark Ngotonie

TL;DR
This paper introduces a machine learning framework to identify the most representative days for short-term traffic counts, significantly improving AADT prediction accuracy and reducing data collection costs for transportation agencies.
Contribution
It presents the first machine learning-based method to select optimal days for traffic counts, enhancing AADT estimation accuracy over current practices.
Findings
Optimal day selection reduces prediction errors.
Best day achieves R^2 of 0.9756, outperforming baseline.
Method supports cost-effective traffic data collection.
Abstract
The Federal Highway Administration (FHWA) mandates that state Departments of Transportation (DOTs) collect reliable Annual Average Daily Traffic (AADT) data. However, many U.S. DOTs struggle to obtain accurate AADT, especially for unmonitored roads. While continuous count (CC) stations offer accurate traffic volume data, their implementation is expensive and difficult to deploy widely, compelling agencies to rely on short-duration traffic counts. This study proposes a machine learning framework, the first to our knowledge, to identify optimal representative days for conducting short count (SC) data collection to improve AADT prediction accuracy. Using 2022 and 2023 traffic volume data from the state of Texas, we compare two scenarios: an 'optimal day' approach that iteratively selects the most informative days for AADT estimation and a 'no optimal day' baseline reflecting current…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Traffic control and management · Automated Road and Building Extraction
