Abstract In this paper, we present a novel approach for real-time detection of non-recurrent traffic patterns in urban roadway networks leveraging advanced machine learning techniques explained by traffic flow theory. The methodology comprises two key components. First, an LSTM-based Autoencoder is employed to extract typical expected traffic patterns from raw traffic data. Second, a clustering technique is utilized to identify non-recurrent congestion, applied on the deviation of the speed and
