There is much interest in closed-loop system identification recently. In this paper
based on historical input and output data
an initial model using fuzzy method is constructed to encounter the difficulty of sparse identification data. The initial model is then enhanced by a radial basis function neural network model trained using input-output data. The new identification method is used in real data from an ammonia process with satisfactory results.