Institute of Environmental Engineering, ETH Zürich, 8093, Zürich, Switzerland; Eawag, Swiss Federal Institute of Aquatic Science and Technology, 8600, Dübendorf, Switzerland.
Eawag, Swiss Federal Institute of Aquatic Science and Technology, 8600, Dübendorf, Switzerland.
Water Res. 2017 Sep 15;121:290-301. doi: 10.1016/j.watres.2017.05.038. Epub 2017 May 20.
Observations of a hydrologic system response are needed to accurately model system behaviour. Nevertheless, often very few monitoring stations are operated because collecting such reference data adequately and accurately is laborious and costly. It has been recently suggested to use observations not only from dedicated flow meters but also from simpler sensors, such as level or event detectors, which are available more frequently but only provide censored information. Binary observations can be considered as extreme censoring. It is still unclear, however, how to use censored observations most effectively to learn about model parameters. To this end, we suggest a formal likelihood function that incorporates censored observations, while accounting for model structure deficits and uncertainty in input data. Using this likelihood function, the parameter inference is performed within the Bayesian framework. We demonstrate the implementation of our methodology on a case study of an urban catchment, where we estimate the parameters of a hydrodynamic rainfall-runoff model from binary observations of combined sewer overflows. Our results show, first, that censored observations make it possible to learn about model parameters, with an average decrease of 45% in parameter standard deviation from prior to posterior. Second, the inference substantially improves model predictions, providing higher Nash-Sutcliffe efficiency. Third, the gain in information largely depends on the experimental design, i.e. sensor placement. Given the advent of Internet of Things, we foresee that the plethora of censored data promised to be available can be used for parameter estimation within a formal Bayesian framework.
需要对水文系统的响应进行观测,以便准确地模拟系统行为。然而,通常只运行很少的监测站,因为充分准确地收集此类参考数据既费力又昂贵。最近有人建议,不仅要使用专用流量计的观测值,还要使用更频繁但仅提供删失信息的更简单传感器(如水位或事件探测器)的观测值。二进制观测值可被视为极端删失。然而,如何最有效地利用删失观测值来了解模型参数仍然不清楚。为此,我们提出了一种正式的似然函数,该函数包含了删失观测值,同时考虑了模型结构缺陷和输入数据的不确定性。使用这个似然函数,在贝叶斯框架内进行参数推断。我们在一个城市流域的案例研究中展示了我们方法的实施情况,在该案例中,我们从合流污水溢流的二进制观测值中估计了水动力降雨径流模型的参数。我们的结果表明,首先,删失观测值使得了解模型参数成为可能,与先验相比,参数标准差平均降低了 45%。其次,推断大大提高了模型预测的准确性,提供了更高的纳什-苏特克里夫效率。第三,信息的增益在很大程度上取决于实验设计,即传感器的位置。鉴于物联网的出现,我们预计,承诺提供的大量删失数据可以在正式的贝叶斯框架内用于参数估计。