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首页> 外文期刊>ScientificWorldJournal >Accuracy Enhancement for Forecasting Water Levels of Reservoirs and River Streams Using a Multiple-Input-Pattern Fuzzification Approach
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Accuracy Enhancement for Forecasting Water Levels of Reservoirs and River Streams Using a Multiple-Input-Pattern Fuzzification Approach

机译:使用多输入模式模糊化方法预测水位和河流流水平的准确性增强

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摘要

Water level forecasting is an essential topic in water management affecting reservoir operations and decision making. Recently, modern methods utilizing artificial intelligence, fuzzy logic, and combinations of these techniques have been used in hydrological applications because of their considerable ability to map an input-output pattern without requiring prior knowledge of the criteria influencing the forecasting procedure. The artificial neurofuzzy interface system (ANFIS) is one of the most accurate models used in water resource management. Because the membership functions (MFs) possess the characteristics of smoothness and mathematical components, each set of input data is able to yield the best result using a certain type of MF in the ANFIS models. The objective of this study is to define the different ANFIS model by applying different types of MFs for each type of input to forecast the water level in two case studies, the Klang Gates Dam and Rantau Panjang station on the Johor river in Malaysia, to compare the traditional ANFIS model with the new introduced one in two different situations, reservoir and stream, showing the new approach outweigh rather than the traditional one in both case studies. This objective is accomplished by evaluating the model fitness and performance in daily forecasting.
机译:水平预测是影响水库运营和决策的水管理中的重要主题。最近,利用人工智能,模糊逻辑和这些技术的组合的现代方法已被用于水文应用,因为它们具有相当大的映射输入输出模式的能力,而无需先前了解影响预测程序的标准。人工神经纤维界面系统(ANFIS)是水资源管理中最准确的模型之一。由于成员函数(MFS)具有平滑度和数学组件的特征,因此每组输入数据都能够在ANFIS模型中使用某种类型的MF来产生最佳结果。本研究的目的是通过对每种类型的输入应用不同类型的MF来定义不同的ANFIS模型,以预测两种案例研究中的水位,Klang盖茨大坝和马来西亚柔佛河上的雷劳·磐安站比较传统的ANFIS模型与新的介绍了两个不同的情况,水库和流,展示了新的方法,而不是两种案例研究中的传统方法。该目标是通过在日常预测中评估模型健康和性能来实现的。

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