DEEP PROCESS-DATA MINING FOR BUILDING OF ANALYTICAL MODELS: 1. MEDIUM-TERM FORECAST OF SPRING FLOOD EXTREMES FOR MOUNTAIN RIVERS

Yuri Kirsta, Irina Troshkova
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Abstract

A standard methodology of deep process-data mining for building high-performance process-driven (analytical) models of complex natural systems was proposed. The method- ology (called as system-analytical modeling) is based on a system-hierarchical approach and deep mining of large datasets providing both extraction of the information hidden in such datasets and quantitative characterization of real processes occurring in natural systems. With its help, deep process-data mining of data (1951–2020) on spring flood discharge peaks and troughs (with ice motion) on 34 mountain rivers of the Altai-Sayan mountain country was performed. An analytical hydrological model of high performance (Nash-Sutcliffe criterion NSE = 0.78) was developed for the annual medium-term forecasting of discharge peaks and troughs in April using the data on meteorological conditions of the recent autumn and current winter periods. Flood peaks depend on autumn-winter precipitation (which determines 29% of the peak variance), landscape structure of river basins (14%), and winter air temperatures (0.8%). Spring floods on mountain rivers often threaten the life of local population that makes the developed model topical.
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基于深度过程数据挖掘的分析模型构建;山区河流春季极端洪水中期预报
提出了一种用于构建复杂自然系统高性能过程驱动(分析)模型的深度过程数据挖掘标准方法。该方法(称为系统分析建模)基于系统分层方法和对大型数据集的深度挖掘,提供了隐藏在这些数据集中的信息的提取和自然系统中发生的真实过程的定量表征。在此基础上,对阿尔泰-萨彦山区34条山地河流1951-2020年伴有冰动的春洪泄峰槽数据进行了深度过程数据挖掘。利用最近秋季和当前冬季的气象条件数据,建立了一个高性能的分析水文模型(Nash-Sutcliffe标准NSE = 0.78),用于4月份的年度中期流量高峰和低谷预报。洪峰取决于秋冬降水(占峰值变化的29%)、流域景观结构(14%)和冬季气温(0.8%)。山区河流的春季洪水经常威胁到当地居民的生命,这使得发达的模式成为热门话题。
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