Civil and Environmental Engineering at Duke

publications by Ana P. Barros.


Papers Published

  1. Kuligowski, R.J. and Barros, A.P., Experiments in short-term precipitation forecasting using artificial neural networks, Mon. Weather Rev. (USA), vol. 126 no. 2 (1998), pp. 470 - 82 [1520-0493(1998)126<0470:EISTPF>2.0.CO;2] .
    (last updated on 2007/04/08)

    Abstract:
    Accurate, timely, site-specific forecasts of precipitation are important for accurately predicting streamflow and flash floods in small drainage basins. However, presently available numerical weather prediction models do not generally provide forecasts with the accuracy and/or resolution appropriate for this task. A wide variety of approaches to small-scale, short-term precipitation forecasting have been investigated by numerous authors; this paper describes a simple precipitation forecasting model based on artificial neural networks. The model uses the radiosonde-based 700-hPa wind direction and antecedent precipitation data from a rain gauge network to generate short-term (0-6 h) precipitation forecasts for a target location. The performance of the model is illustrated for a gauge in eastern Pennsylvania

    Keywords:
    atmospheric precipitation;neural nets;rivers;weather forecasting;

 

Department of Civil and Environmental Engineering | Pratt School of Engineering | Duke University
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