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Introducing the Ensemble-Based Dual Entropy and Multiobjective Optimization for Hydrometric Network Design Problems: EnDEMO

机译:介绍基于合奏的双熵和多目标优化对水文网络设计问题:Endemo

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摘要

Entropy applications in hydrometric network design problems have been extensively studied in the most recent decade. Although many studies have successfully found the optimal networks, there have been assumptions which could not be logically integrated into their methodology. One of the major assumptions is the uncertainty that can arise from data processing, such as time series simulation for the potential stations, and the necessary data quantization in entropy calculations. This paper introduces a methodology called ensemble-based dual entropy and multiobjective optimization (EnDEMO), which considers uncertainty from the ensemble generation of the input data. The suggested methodology was applied to design hydrometric networks in the Nelson-Churchill River Basin in central Canada. First, the current network was evaluated by transinformation analysis. Then, the optimal networks were explored using the traditional deterministic network design method and the newly proposed ensemble-based method. Result comparison showed that the most frequently selected stations by EnDEMO were fewer and appeared more reliable for practical use. The maps of station selection frequency from both DEMO and EnDEMO allowed us to identify preferential locations for additional stations; however, EnDEMO provided a more robust outcome than the traditional approach.
机译:在最近的十年中,熵在水学网络设计问题中的熵应用已经过度研究。虽然许多研究成功地发现了最佳网络,但是假设无法逻辑地集成到其方法中。其中一个主要假设是可以从数据处理中出现的不确定性,例如潜在站的时间序列模拟,以及熵计算中的必要数据量化。本文介绍了一种称为基于集合的双熵和多目标优化(EndeMo)的方法,该方法将不确定性从集合生成输入数据中考虑不确定性。建议的方法应用于在加拿大中部的尼尔森 - 丘吉尔河流域设计了水文网络。首先,通过转换分析评估当前网络。然后,使用传统的确定性网络设计方法和基于新的合并的方法探索最佳网络。结果比较表明,Endemo最常见的选定站更少,并且对于实际使用似乎更可靠。来自两个演示和endemo的站选择频率的地图允许我们识别其他站点的优先位置;但是,endemo提供比传统方法更强大的结果。

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