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A flood forecasting neural network model with genetic algorithm

机译:遗传算法的洪水预报神经网络模型

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摘要

It will be useful to attain a quick and accurate flood forecasting, particularly in a flood-prone region. The accomplishment of this objective can have far reaching significance by extending the lead time for issuing disaster warnings and furnishing ample time for citizens in vulnerable areas to take appropriate action, such as evacuation. In this paper, a novel hybrid model based on recent artificial intelligence technology, namely, a genetic algorithm (GA)-based artificial neural network (ANN), is employed for flood forecasting. As a case study, the model is applied to a prototype channel reach of the Yangtze River in China. Water levels at downstream station, Han-Kou, are forecasted on the basis of water levels with lead times at the upstream station, Luo-Shan. An empirical linear regression model, a conventional ANN model and a GA model are used as the benchmarks for comparison of performances. The results reveal that the hybrid GA-based ANN algorithm, under cautious treatment to avoid overfitting, is able to produce better accuracy performance, although in expense of additional modeling parameters and possibly slightly longer computation time.
机译:快速而准确的洪水预报将很有用,尤其是在洪水多发地区。通过延长发布灾害警告的准备时间并为脆弱地区的公民提供充足的时间采取适当行动(如撤离),可以实现这一目标具有深远的意义。本文采用了一种基于最新人工智能技术的新型混合模型,即基于遗传算法(GA)的人工神经网络(ANN)进行洪水预报。作为案例研究,该模型被应用于中国长江的原型航道。下游站汉口的水位是根据上游站罗山的水位和提前期预测的。经验线性回归模型,常规的ANN模型和GA模型被用作比较性能的基准。结果表明,在谨慎处理以避免过度拟合的情况下,基于混合GA的ANN算法能够产生更好的精度性能,尽管要付出额外的建模参数和可能稍长的计算时间的代价。

著录项

  • 作者

    Wu, CL; Chau, KW;

  • 作者单位
  • 年度 2006
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  • 原文格式 PDF
  • 正文语种 en
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