...
首页> 外文期刊>Hydrology and Earth System Sciences >Informal uncertainty analysis (GLUE) of continuous flow simulation in a hybrid sewer system with infiltration inflow - Consistency of containment ratios in calibration and validation?
【24h】

Informal uncertainty analysis (GLUE) of continuous flow simulation in a hybrid sewer system with infiltration inflow - Consistency of containment ratios in calibration and validation?

机译:带有渗入流量的混合污水系统中连续流动模拟的非正式不确定性分析(GLUE)-校准和验证中的安全壳比率是否一致?

获取原文
获取原文并翻译 | 示例
           

摘要

Monitoring of flows in sewer systems is increasingly applied to calibrate urban drainage models used for long-term simulation. However, most often models are calibrated without considering the uncertainties. The generalized likelihood uncertainty estimation (GLUE) methodology is here applied to assess parameter and flow simulation uncertainty using a simplified lumped sewer model that accounts for three separate flow contributions: wastewater, fast runoff from paved areas, and slow infiltrating water from permeable areas. Recently GLUE methodology has been critisised for generating prediction limits without statistical coherence and consistency and for the subjectivity in the choice of a threshold value to distinguish "behavioural" from "non-behavioural" parameter sets. In this paper we examine how well the GLUE methodology performs when the behavioural parameter sets deduced from a calibration period are applied to generate prediction bounds in validation periods. By retaining an increasing number of parameter sets we aim at obtaining consistency between the GLUE generated 90% prediction limits and the actual containment ratio (CR) in calibration. Due to the large uncertainties related to spatiooral rain variability during heavy convective rain events, flow measurement errors, possible model deficiencies as well as epistemic uncertainties, it was not possible to obtain an overall CR of more than 80%. However, the GLUE generated prediction limits still proved rather consistent, since the overall CRs obtained in calibration corresponded well with the overall CRs obtained in validation periods for all proportions of retained parameter sets evaluated. When focusing on wet and dry weather periods separately, some inconsistencies were however found between calibration and validation and we address here some of the reasons why we should not expect the coverage of the prediction limits to be identical in calibration and validation periods in real-world applications. The large uncertainties result in wide posterior parameter limits, that cannot be used for interpretation of, for example, the relative size of paved area vs. the size of infiltrating area. We should therefore try to learn from the significant discrepancies between model and observations from this study, possibly by using some form of non-stationary error correction procedure, but it seems crucial to obtain more representative rain inputs and more accurate flow observations to reduce parameter and model simulation uncertainty.
机译:下水道系统中流量的监控越来越多地用于校准用于长期模拟的城市排水模型。但是,大多数情况下,在不考虑不确定性的情况下对模型进行校准。广义似然不确定性估计(GLUE)方法在此应用于使用简化的集总下水道模型来评估参数和流量模拟不确定性,该模型考虑了三个独立的流量贡献:废水,铺装区域的快速径流和渗透区域的缓慢渗透水。最近,GLUE方法被批评为在没有统计一致性和一致性的情况下生成预测极限,并且在选择阈值以区分“行为”和“非行为”参数集时具有主观性。在本文中,我们研究了将校准周期中得出的行为参数集应用于验证周期中的预测界限时,GLUE方法的性能如何。通过保留越来越多的参数集,我们旨在获得GLUE生成的90%预测极限与校准中的实际包含率(CR)之间的一致性。由于与强对流降雨过程中时空降雨变化有关的不确定性很大,流量测量误差,可能的模型缺陷以及认知不确定性,因此不可能获得超过80%的总CR。但是,GLUE生成的预测极限仍然被证明是相当一致的,因为在校准中获得的总CR与在评估期内对于评估的所有保留参数集的所有比例在验证期内获得的总CR都很好地对应。当分别关注潮湿和干燥的天气时段时,在校准和验证之间发现了一些不一致之处,我们在这里解决了一些我们不应该期望真实世界的校准和验证期内预测限制的范围相同的原因应用程序。较大的不确定性导致较宽的后部参数限制,例如,无法用于解释铺装区域的相对大小与渗透区域的大小。因此,我们可能应尝试通过某种形式的非平稳误差校正程序来学习模型与观测值之间的显着差异,但获得更多有代表性的降雨输入和更准确的流量观测值以减少参数和误差显得至关重要。模型仿真不确定性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号