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首页> 外文期刊>International Journal of Physical Sciences >Daily water level forecasting using adaptive neuro-fuzzy interface system with different scenarios: Klang Gate, Malaysia
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Daily water level forecasting using adaptive neuro-fuzzy interface system with different scenarios: Klang Gate, Malaysia

机译:使用自适应神经网络接口系统在不同情况下进行每日水位预测:马来西亚巴生门

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Forecasting the level of reservoir has been a significant subject in the management of reservoirs and water resource. For many years, estimation of reservoir water level was primary based on operator’s experience, curves and mathematical models. Recently, Artificial Intelligence (AI) methods are developed in several hydrological aspects, such as classification and forecasting parameters. The major advantage of AI modeling is the considerable ability to map input-output pattern without requiring prior knowledge about the factors that affect the forecasting parameters. This study attempts to forecast the daily level of Klang Gate dam using adaptive neuro fuzzy interface system (ANFIS) in two different scenarios and various time delays in inputs. In the first scenario, daily rainfall is used solely as an input in different time delays from the time (t) to the time (t-4) that is illustrated in spite of the reasonable performance of error, less than 10% of solely rainfall data could not have reasonable response in fluctuations to forecast accurately. Increasing the level of reservoir beside precipitation as inputs in both sets of models could enhance the fitness of the estimated and observed data dramatically. Due to the fact that the distance of gauges of stations are unknown, using various models in different time delays of inputs could demonstrate the distance between gauges; moreover, it shows the reasonable duration in inputs and outputs to have accurate prediction.
机译:预测水库水位一直是水库和水资源管理中的重要课题。多年以来,根据操作员的经验,曲线和数学模型来估算储层水位是主要的。近年来,人工智能(AI)方法在水文方面得到了发展,例如分类和预测参数。 AI建模的主要优点是无需输入有关影响预测参数的因素的先验知识即可映射输入输出模式的强大功能。本研究试图在两种不同的情况下以及在输入中存在各种时延的情况下,使用自适应神经模糊接口系统(ANFIS)来预测巴生门大坝的日位。在第一种情况下,尽管有合理的误差表现,但每日降雨量仅用作从时间(t)到时间(t-4)的不同时间延迟的输入,尽管误差是合理的,但仅占降雨量的不到10%数据对波动没有合理的响应,无法准确预测。在这两组模型中,增加降水量以外的储层水平作为输入可以显着提高估算和观测数据的适用性。由于站距的距离是未知的,因此在输入的不同时延中使用各种模型可以证明距距之间的距离。此外,它显示了输入和输出中的合理持续时间以进行准确的预测。

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