this paper used the niche particle swarm optimization (NPSO) global search ability to optimize the spread parameter of GRNN, which improved the general regression neural network (GRNN) performance; then a urban domestic water demand predictive model was established by basing on NPSO-GRNN. The results showed that NPSO-GRNN fitting and prediction average relative absolute error of Beijing domestic water demand data between 1988 and 2012 were 0.72% and 0.36%, respectively, the fitting and predicted results were lower than the result of BP neural network algorithm. NPSO-GRNN algorithm can be better fitting to the trend of urban domestic water demand in Beijing City, it has higher prediction accuracy and generalization ability.