月流入时间序列合成的模糊推理系统

I. Luna, R. Ballini, S. Soares, Donato da Silva-Filho
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引用次数: 5

摘要

流入数据在水资源和能源规划和管理中发挥着重要作用。总的来说,由于历史入流数据的可得性有限,合成水流时间序列已被广泛用于水电中长期调度和水文过程识别等多种应用。本文探讨了使用模糊推理系统来识别两个水文过程,并将其用于生成合成的月流入序列。利用巴西月记录进行的实验表明,模糊系统为合成流时间序列生成提供了一种很有前途的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy inference systems for synthetic monthly inflow time series generation
Inflow data plays an important role in water and energy resources planning and management. In general, due to the limited availability of historical inflow data, synthetic streamflow time series have been widely used for several applications such as mid- and long-term hydropower scheduling and the identification of hydrological processes. This paper explores the use of fuzzy inference systems for the identification of two hydrological processes, and its use in the generation of synthetic monthly inflow sequences. Experiments using Brazilian monthly records show that fuzzy systems provide a promising approach for synthetic streamflow time series generation.
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