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Water level modeling for Kelantan River at Jeti Kastam Station using nonlinear autoregressive with exogenous input structure

机译:带有外来输入结构的非线性自回归的杰蒂卡斯塔姆站吉兰丹河水位模型

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Generally, overflowing and unexpected amount of water level from normal conditions, especially in areas that are usually dry it is called flood. Kelantan River was synonym with flood especially during the months of November to February because of the northeast monsoon season. Nonlinear autoregressive with exogenous input (NARX) is well-known as one of the technique that has the ability to predict with efficient and good performance. River at Jeti Kastam Station was used in this study to predict water level using NARX model. The selection of Neural Network structure for water level and rainfalls modelling in Jeti Kastam Station was optimized and also the training and testing were analyzed. The performance of network was evaluated using Mean Square Error (MSE). It is shown that seven number of neurons in five number of delay afforded the lowest MSE validation, 1.43. The Regression, R for validation network is closed to 1 (0.9406), supports that the model is acceptable and able in predicting water level at Jeti Kastam station.
机译:通常,正常情况下(特别是在通常干燥的地区)溢流和出乎意料的水位称为洪水。吉兰丹河是洪水的代名词,尤其是在11月至2月的几个月中,由于东北季风季节。具有外来输入的非线性自回归(NARX)是众所周知的一种能够以高效和良好的性能进行预测的技术。这项研究使用Jeti Kastam站的河流通过NARX模型预测水位。优化了Jeti Kastam站水位和降雨模型的神经网络结构选择,并对训练和测试进行了分析。使用均方误差(MSE)评估网络的性能。结果表明,五个延迟中的七个神经元提供了最低的MSE验证,即1.43。验证网络的回归R接近于1(0.9406),支持该模型可以接受并且能够预测Jeti Kastam站的水位。

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