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River ice breakup forecasting using artificial neural networks and fuzzy logic systems.

机译:利用人工神经网络和模糊逻辑系统进行河冰破裂预测。

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摘要

Due to the complexity of breakup ice jam processes deterministic modelling cannot yet forecast every aspect of the timing and severity of possible consequent flooding, especially when some lead-time is needed. In most northern regions, the sparse network and short record of data have impeded the successful development of empirical and statistical models. In this study, a multi-layer modeling approach was investigated for forecasting breakup ice jam flooding using the two soft computing techniques: artificial neural networks and fuzzy logic systems. The Town of Hay River in NWT, Canada was chosen as the case study site, where the breakup ice jam flooding is an annual threat.;This thesis first presents the development of index variables as potential predictors to breakup severity and timing. For the case study site, it was found that water level at the onset of freeze-up and accumulated degree-days of freezing during the winter could be potential predictors for breakup severity. The indicator variable of the timing of the onset of breakup was found to be completely nonlinear with respect to any of the index variables. Then the feed-forward artificial neural network (ANN) modeling technique was assessed for its applicability in forecasting of onset of breakup. Detailed results of the ANN model calibration and validation are presented and discussed. It was found from the calibration results, that the ANN model has greater potential for successfully forecasting the onset of river ice breakup (i.e. the first transverse cracking of the ice cover) compared to the conventional multiple linear regression technique. However, rigorous validation also indicated that the accuracy of such ANN models can be optimistically overestimated by looking only at the calibration results. Finally, the applicability of a Mamdani-type fuzzy logic system to forecast the peak snowmelt runoff during breakup for a long lead-time of ∼3 to 4 weeks prior to breakup was assessed, and was found to be a good predictor of breakup flood severity at the Town of Hay River. In particular, it was found that the fuzzy logic model could predict most of the high flow, the exception being those that were triggered by short intense rainfall events during the breakup period (a factor that cannot be included in a long lead-time forecast).;This study contributes new knowledge and techniques, advancing the breakup ice jam flood forecasting capabilities for the northern communities. The two most common soft computing techniques (e.g. ANN and fuzzy logic system) were studied comprehensively for their potential in river ice breakup forecasting and demonstrated step by step at the case study site. A hydrometeorological data base for the Town of Hay River was also established for the further research.
机译:由于解体冰堵过程的复杂性,确定性建模尚无法预测可能发生的洪水的时机和严重性的各个方面,尤其是在需要提前期的情况下。在大多数北部地区,稀疏的网络和短数据记录阻碍了经验和统计模型的成功开发。在这项研究中,研究了一种多层建模方法,它使用两种软计算技术(人工神经网络和模糊逻辑系统)来预测碎冰堵塞的洪水。选择了加拿大西北地区的海河镇作为案例研究地点,该地区的解冻积冰洪水每年威胁着该研究。本论文首先介绍了指标变量的发展,作为预测解体严重程度和时间的潜在指标。对于案例研究现场,发现冻结开始时的水位和冬季冻结的累计度数天可能是破裂严重程度的潜在预测因素。发现破裂开始时机的指标变量相对于任何指标变量是完全非线性的。然后评估了前馈人工神经网络(ANN)建模技术在预测破裂发生中的适用性。提出并讨论了ANN模型校准和验证的详细结果。从校准结果发现,与传统的多元线性回归技术相比,ANN模型具有更大的潜力来成功预测河冰破裂的发生(即,冰盖的第一次横向破裂)。但是,严格的验证也表明,仅查看校准结果,就可以乐观地高估此类ANN模型的准确性。最后,评估了Mamdani型模糊逻辑系统在破裂前很长的时间(约3-4周)内预测破裂过程中融雪高峰期的适用性,并被发现是破裂洪水严重程度的良好预测指标在海河镇。尤其是,发现模糊逻辑模型可以预测大部分的高流量,但例外情况是,在中断期间由短暂的强降雨事件触发的那些(这一因素不能包含在较长的提前期预测中) 。;这项研究提供了新的知识和技术,提高了北部社区的碎冰堵塞洪水预报能力。对两种最常用的软计算技术(例如ANN和模糊逻辑系统)在河冰破裂预报中的潜力进行了综合研究,并在案例研究现场逐步进行了演示。还为海河镇建立了水文气象数据库,以供进一步研究。

著录项

  • 作者

    Zhao, Liming.;

  • 作者单位

    University of Alberta (Canada).;

  • 授予单位 University of Alberta (Canada).;
  • 学科 Engineering Geological.;Engineering Environmental.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 297 p.
  • 总页数 297
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 老年病学;
  • 关键词

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