Many time series exhibit dynamics over vastly different time scales. The standard way to capture this behavior is to assume that the slow dynamics are a “trend”, to de-trend the data, and then to model the fast dynamics. However, for nonlinear dynamical systems this is generally insufficient. In this paper we describe a new method, utilizing two distinct nonlinear modeling architectures to capture both fast and slow dynamics. Slow dynamics are modeled with the method of analogues, and fast dynamics with a deterministic radial basis function network. When combined the resulting model out-performs either individual system. 1 Fast and slow dynamics Scalar time series often exhibit deterministic dynamics on very different time scales (see Fig. 1). For example, sound waves exhibit fast intra-cycle variation and slow inter-cycle fluctuations. It is difficult for a single model to describe both behaviors simultaneously. A standard method for treating such data is to first apply some s...