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Impact of temporal data resolution on parameter inference and model identification in conceptual hydrological modeling: insights from an experimental catchment

机译:时间数据分辨率对概念水文建模中参数推断和模型识别的影响:来自实验流域的见解

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摘要

This study presents quantitative and qualitative insights into the time scale dependencies of hydrological parameters, predictions and their uncertainties, and examines the impact of the time resolution of the calibration data on the identifiable system complexity. Data from an experimental basin (Weierbach, Luxembourg) is used to analyze four conceptual models of varying complexity, over time scales of 30 min to 3 days, using several combinations of numerical implementations and inference equations. Large spurious time scale trends arise in the parameter estimates when unreliable time-stepping approximations are employed and/or when the heteroscedasticity of the model residual errors is ignored. Conversely, the use of robust numerics and more adequate (albeit still clearly imperfect) likelihood functions markedly stabilizes and, in many cases, reduces the time scale dependencies and improves the identifiability of increasingly complex model structures. Parameters describing slow flow remained essentially constant over the range of subhourly to daily scales considered here, while parameters describing quick flow converged toward increasingly precise and stable estimates as the data resolution approached the characteristic time scale of these faster processes. These results are consistent with theoretical expectations based on numerical error analysis and data-averaging considerations. Additional diagnostics confirmed the improved ability of the more complex models to reproduce distinct signatures in the observed data. More broadly, this study provides insights into the information content of hydrological data and, by advocating careful attention to robust numericostatistical analysis and stringent process-oriented diagnostics, furthers the utilization of dense-resolution data and experimental insights to advance hypothesis-based hydrological modeling at the catchment scale.
机译:这项研究提供了对水文参数的时间尺度依赖性,预测及其不确定性的定量和定性见解,并检验了校准数据的时间分辨率对可识别的系统复杂性的影响。来自实验盆地(Weierbach,卢森堡)的数据被用来分析四个概念模型,这些模型在30分钟到3天的时间范围内,使用数值实现和推理方程式的几种组合。当采用不可靠的时间步长近似值和/或忽略模型残余误差的异方差性时,参数估计中会出现较大的杂散时间尺度趋势。相反,使用健壮的数值和更充分的(尽管仍然明显不完美)似然函数可以显着稳定并在许多情况下减少时标依赖性并改善日益复杂的模型结构的可识别性。在此处考虑的亚小时至日标范围内,描述慢流量的参数基本上保持恒定,而随着数据分辨率接近这些较快过程的特征时间标度,描述快速流量的参数逐渐趋向于越来越精确和稳定的估计。这些结果与基于数值误差分析和数据平均考虑的理论预期一致。附加的诊断方法证实了更复杂的模型在观察到的数据中重现独特特征的能力得到了提高。更广泛地说,这项研究提供了对水文数据信息内容的见识,并且通过提倡对稳健的数值统计分析和严格的面向过程的诊断的关注,进一步促进了对高分辨率数据和实验见解的利用,从而促进了基于假设的水文建模。集水规模。

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