Experimental Analysis of Time Series Models for Traffic Flow Prediction

  • Nivedita Tiwari Sage University, Indore, India
  • Lalji Prasad Sage University, Indore, India
Keywords: Time Series Forecasting, LSTM, ARIMA, Seasonal ARIMA, RMSE.

Abstract

Traffic flow prediction is a research topic signified by several researchers in a league span of disciplines. In this context, one of the most in-demand techniques of Machine Learning, especially time series-based techniques, helps in predicting traffic flow forecasting and increases the accuracy of the prediction model. In order to deliver extremely precise traffic forecasts, it is crucial that we put the prediction system into practice in the actual world. We aim to perform computations related to traffic on the traffic datasets and determine the accuracy of each model. For this purpose, we are using three distinct time series models: Long Short Term Memory (LSTM), the Autoregressive Integrated Moving Average (ARIMA), and the Seasonal Autoregressive Integrated Moving Average (SARIMA). From the results obtained, it is concluded that the proposed model achieves the highest prediction accuracy with the lowest root mean squared error.

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Published
2023-09-30