SciELO - Scientific Electronic Library Online

 
vol.35 número4Comparación de métodos de detección del inicio y término de la estación lluviosa basado en datos de precipitaciónEvaluación del tratamiento térmico en rolas de madera de Stryphnodendron polystachyum (Yigüire), sobre las propiedades físico-mecánicas de tableros contrachapados de tres chapas índice de autoresíndice de materiabúsqueda de artículos
Home Pagelista alfabética de revistas  

Servicios Personalizados

Revista

Articulo

Indicadores

Links relacionados

  • No hay articulos similaresSimilares en SciELO

Compartir


Revista Tecnología en Marcha

versión On-line ISSN 0379-3982versión impresa ISSN 0379-3982

Resumen

RIVERA-PICADO, Cristal  y  MENESES-GUZMAN, Marcela. Vehicle traffic flow forecasting Costa Rica highway 27. Tecnología en Marcha [online]. 2022, vol.35, n.4, pp.138-148. ISSN 0379-3982.  http://dx.doi.org/10.18845/tm.v35i4.5892.

Forecasting vehicle traffic flow is considered an important input for traffic planning and management for the countries' intelligent transport systems (ITS). This article analyzes the hourly flow of light vehicle traffic that drives in highway 27 of Costa Rica in one direction (San JoseCaldera). The data collected by the ITS of the route is used to forecast the behavior of hourly vehicular traffic. For this, three forecasting methods are proposed, which are compared to select the model with best performance: Seasonal Arima (SARIMA), Seasonal Naïve (SNAIVE), and Autoregression with Neural Network (NNAR). All three models are evaluated and are considered useful for prediction, however the NNAR model results in better performance when forecasting the hourly time series with the lowest MAPE of 9.4 and is consider a candidate for use in ITS. By applying the cross-validation process in the models, the conclusion is supported that as the NNAR is tested for more days, the prediction results are more stable and accurate.

Palabras clave : Traffic flow forecasting; Seasonal ARIMA(SARIAM); Seasonal Naïve (SNAIVE); Autogression with Neural Networks (NNAR).

        · resumen en Español     · texto en Español     · Español ( pdf )