“…Among these methods, neural network models stand out mainly for their ability to describe the indeterministic and complex nonlinearity of traffic flow time series (Dharia and Adeli, 2003; Jiang and Adeli, 2005). Neural network applications to short‐term traffic flow forecasting extend from one single network structure using techniques such as backpropagation (Dochy et al, 1995; Dougherty and Cobbett, 1997) or radial basis function (Park et al, 1998; Chen and Grant‐Muller, 2001) to more complex structures that include diverse methodologies such as autoregressive models (Voor et al, 1996), fuzzy theory (Yin et al, 2002; Park, 2002), wavelet functions (Jiang and Adeli, 2005; Xie and Zang, 2006), online Kalman filter (Stathopoulos et al, 2008), k‐means algorithm (Vlahogianni et al, 2008), Hilbert‐Huang transform (Hamad et al, 2009), or a combination of various neural network models (Lee et al, 2004; Zheng et al, 2006). In most of the aforementioned models, input data come mainly from loop detectors placed at the same road link locations where predictions are made.…”