首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Knowledge-based modularization and global optimization of artificial neural network models in hydrological forecasting.
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Knowledge-based modularization and global optimization of artificial neural network models in hydrological forecasting.

机译:水文预报中基于知识的人工神经网络模型模块化和全局优化。

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摘要

Natural phenomena are multistationary and are composed of a number of interacting processes, so one single model handling all processes often suffers from inaccuracies. A solution is to partition data in relation to such processes using the available domain knowledge or expert judgment, to train separate models for each of the processes, and to merge them in a modular model (committee). In this paper a problem of water flow forecast in watershed hydrology is considered where the flow process can be presented as consisting of two subprocesses -- base flow and excess flow, so that these two processes can be separated. Several approaches to data separation techniques are studied. Two case studies with different forecast horizons are considered. Parameters of the algorithms responsible for data partitioning are optimized using genetic algorithms and global pattern search. It was found that modularization of ANN models using domain knowledge makes models more accurate, if compared with a global model trained on the whole data set, especially when forecast horizon (and hence the complexity of the modelled processes) is increased.
机译:自然现象是多平稳的,并且由许多相互作用的过程组成,因此处理所有过程的单个模型经常会出现误差。一种解决方案是使用可用的领域知识或专家判断对与此类流程相关的数据进行分区,为每个流程训练单独的模型,并将它们合并为模块化模型(委员会)。在本文中,考虑了流域水文学中的水流量预测问题,其中流过程可以表示为由两个子过程组成-基础流和过剩流,因此这两个过程可以分开。研究了几种数据分离技术的方法。考虑了两个具有不同预测范围的案例研究。使用遗传算法和全局模式搜索来优化负责数据分区的算法参数。已经发现,与在整个数据集上训练的全局模型相比,使用领域知识对ANN模型进行模块化可以使模型更加准确,尤其是当预测范围(以及建模过程的复杂性)增加时。

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