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Flood water level prediction modeling using NNARX structure for Sg Pahang basin

机译:SG Pahang盆地使用Nnarx结构的洪水水平预测模型

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There were a total of 58 events of natural disaster in Malaysia for the period between years 1980 to 2010 that claiming a total of 1,239 lives of the 640,000 people affected. These data were based on statistics provided by United Nation Officer for Disaster Risk Reduction (UNISDR). From all different categories of natural disasters considered, flood accounted for over half the registered events. Floods contribute to 8 out of 10 disaster events with the highest human exposure and affect over 85 % of all the disaster-stricken people. Floods are thus the primary hazard which affecting Malaysia, in particular the west coast of Peninsular. Therefore, an accurate and reliable flood prediction model is very much needed to provide early warning for residents nearby flood locations for evacuation purposes. However, current trends in flood prediction only involve flood modeling because no prediction time was mentioned and discussed. Furthermore, in Malaysia there is none of flood model or flood prediction model developed yet. An existing system in the Department of Irrigation and Drainage Malaysia is only the alarming system which alarms the users only when the water level exceeds the danger limit. Based on these scenarios, the research objective is to obtain a flood water level prediction model for Pahang flood prone area using Neural Network Autoregressive Model with Exogenous Input (NNARX) structure. The samples used for model training, model validation and model testing were carefully selected. In order to obtain good flood water level prediction model, all samples must be the data when flood events happened. All samples were real-time data that were obtained from the Department of Irrigation and Drainage Malaysia upon special request. From carefully selected samples, several optimal flood prediction times were suggested for flood location in Pahang. Model validation and model testing were conducted to observe the prediction performances. The optimal prediction time was - elected based on the results of prediction performances. Results show NNARX model successfully predicted flood water level ahead of time.
机译:在1980年至2010年间,马来西亚共有58次自然灾害活动,宣称共有1,239名受影响的64万人的生命。这些数据基于联合国灾害减少(UNISDR)提供的统计数据。从所有不同类别的自然灾害中考虑,洪水占了一半的注册活动。洪水有8个灾难事件中的8个,人类暴露最高,影响所有灾难灾害的85%。因此,洪水是影响马来西亚的主要危害,特别是半岛西海岸。因此,非常需要准确可靠的洪水预测模型,以为附近的洪水位置的居民提供预警,以疏散目的。然而,洪水预测的当前趋势仅涉及洪水建模,因为没有提及并讨论预测时间。此外,在马来西亚,尚未产生洪水模型或洪水预测模型。灌溉和排水部马来西亚的现有系统只是仅当水位超过危险极限时才会报警系统。基于这些情景,研究目标是利用具有外源输入(NNARX)结构的神经网络自回归模型来获得Pahang洪水易发区域的洪水水位预测模型。精心选择用于模型培训,模型验证和模型测试的样本。为了获得良好的洪水水位预测模型,所有样本必须是洪水事件发生时的数据。所有样本都是在特殊要求时从灌溉和排水部获得的实时数据。从精心精选的样品中,洪昌的洪水位置建议了几次最佳洪水预测时间。进行模型验证和模型测试以观察预测性能。基于预测性能的结果选择最佳预测时间。结果显示Nnarx模型提前预测洪水水平。

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