Department of Irrigation and Reclamation Engineering, Faculty of Agricultural Engineering and Technology, College of Agriculture and Natural Resources, University of Tehran, Karaj, Tehran, Iran.
Department of Civil and Environmental Engineering, North Dakota State University, Dept 2470, Fargo, ND, 58108-6050, USA.
Sci Rep. 2021 Oct 7;11(1):19908. doi: 10.1038/s41598-021-99371-0.
Simulation models are often affected by uncertainties that impress the modeling results. One of the important types of uncertainties is associated with the model input data. The main objective of this study is to investigate the uncertainties of inputs of the Heat-Flux (HFLUX) model. To do so, the Shuffled Complex Evolution Metropolis Uncertainty Algorithm (SCEM-UA), a Monte Carlo Markov Chain (MCMC) based method, is employed for the first time to assess the uncertainties of model inputs in riverine water temperature simulations. The performance of the SCEM-UA algorithm is further evaluated. In the application, the histograms of the selected inputs of the HFLUX model including the stream width, stream depth, percentage of shade, and streamflow were created and their uncertainties were analyzed. Comparison of the observed data and the simulations demonstrated the capability of the SCEM-UA algorithm in the assessment of the uncertainties associated with the model input data (the maximum relative error was 15%).
模拟模型通常受到影响建模结果的不确定性的影响。不确定性的一个重要类型与模型输入数据有关。本研究的主要目的是调查 Heat-Flux (HFLUX) 模型输入的不确定性。为此,首次采用基于蒙特卡罗马尔可夫链 (MCMC) 的 Shuffled Complex Evolution Metropolis Uncertainty Algorithm (SCEM-UA) 方法来评估河流水温模拟中模型输入的不确定性。进一步评估了 SCEM-UA 算法的性能。在应用中,创建了 HFLUX 模型的选定输入(包括河流宽度、河流深度、阴影百分比和水流)的直方图,并对其不确定性进行了分析。观测数据与模拟数据的比较表明,SCEM-UA 算法能够评估与模型输入数据相关的不确定性(最大相对误差为 15%)。