TY - JOUR N2 - One of the basic parameters which describes road traffic is Annual Average Daily Traffic (AADT). Its accurate determination is possible only on the basis of data from the continuous measurement of traffic. However, such data for most road sections is unavailable, so AADT must be determined on the basis of short periods of random measurements. This article presents different methods of estimating AADT on the basis of daily traffic (VOL), and includes the traditional Factor Approach, developed Regression Models and Artificial Neural Network models. As explanatory variables, quantitative variables (VOL and the share of heavy vehicles) as well as qualitative variables (day of the week, month, level of AADT, the cross-section, road class, nature of the area, spatial linking, region of Poland and the nature of traffic patterns) were used. Based on comparisons of the presented methods, the Factor Approach was identified as the most useful. L1 - http://journals.pan.pl/Content/84020/mainfile.pdf L2 - http://journals.pan.pl/Content/84020 PY - 2015 IS - No 2 EP - 160 KW - roads KW - traffic flow variability KW - Annual Average Daily Traffic (AADT) KW - multiple regression KW - artificial neural networks A1 - Spławińska, M. PB - WARSAW UNIVERSITY OF TECHNOLOGY FACULTY OF CIVIL ENGINEERING and COMMITTEE FOR CIVIL ENGINEERING POLISH ACADEMY OF SCIENCES DA - 30.06.2015 T1 - Models for determining Annual Average Daily Traffic on the national roads SP - 141 UR - http://journals.pan.pl/dlibra/publication/edition/84020 T2 - Archives of Civil Engineering ER -