Lu, C.-C., C.-C. Chen, T.-C.J. Yeh, C.-M. Wu, and I.-F. Yau,
Integration of transfer function model and back propagation neural
network for forecasting storm sewer flow in Taipei metropolis,
Stochastic Environmental Research and Risk Assessment (SERRA)
Abstract Typhoons and storms have often brought heavy rainfalls and
induced floods that have frequently caused severe damage and loss of
life in Taiwan. Our ability to predict sewer discharge and forecast
floods in advance during storm seasons plays an important role in
flood warning and flood hazard mitigation. In this paper, we develop
an integrated model (TFMBPN) for forecasting sewer discharge that
combines two traditional models: a transfer function model and a back
propagation neural network. We evaluated the integrated model and the
two traditional models by applying them to a sewer system of Taipei
metropolis during three past typhoon events (NARI, SINLAKU, and
NAKR). The performances of the models were evaluated by using
predictions of a total of 6 h of sewer flow stages, and six different
evaluation indices of the predictions. Finally, an overall performance
index was determined to assess the overall performance of each
model. Based on these evaluation indices, our analysis shows that
TFMBNP yields accurate results that surpass the two traditional
models. Thus, TFMBNP appears to be a promising tool for flood
forecasting for the Taipei metropolis sewer system.
Keywords Transfer function model - Back propagation neural network -
Storm sewer flow - Evaluation indexes - Overall performance index
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