基于人工神经网络反向传播的大坝水位预测系统:以喀图兰巴大坝赤利翁流域为例

A. P. Anindita, Pujo Laksono, I. B. Nugraha
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引用次数: 10

摘要

洪水是雅加达每年都会发生的自然灾害,因为运河的容量不足,无法容纳泛滥的河水,特别是在雨季。水文学家和气象学家试图预测降雨,因为它被认为是洪水泛滥的根本原因。然而,目前尚无模型可用于附近降雨地区的实时水位预测,特别是考虑到印度尼西亚的环境特征。目前的洪水预报系统仅能预报6 ~ 24小时的洪水,预报的依据是外围大坝水位,利用从水闸到城市运河的预测时间。因此,当有一个预测的灾难发生时,随后的疏散必须在短时间内完成。人工神经网络反向传播是解决连续数据建模的常用方法之一,在一些国家已经支持了多个预警系统。基于溪旺流域的地貌特征,需要将径流和土地渗透变量作为训练属性之一。现有节点模型将附近地区降雨与卡图兰帕大坝联系起来,模型得到进一步发展,RMSE为9.2142,r(相关系数)为0.8799。该结果将以往节点模型的预测能力提高了1%,可用于未来的实际预警系统。该模型使用批量学习作为训练方法,但可以升级为在线学习,通过连续学习自动调整模型的权重。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dam water level prediction system utilizing Artificial Neural Network Back Propagation: Case study: Ciliwung watershed, Katulampa Dam
Flooding is a natural disaster that happens annually in Jakarta because the capacity insufficiency of the canals in accommodating the overflowing river water especially under the rainy season. Hydrologists and meteorologists have tried to predict the rainfall, as it was the expected root cause of the overflow. However, there were no models available for real time water level prediction from rainfall area nearby, especially with respect to Indonesian environment characteristics. Current flood prediction system only last for 6-24 hour based on outskirts dam water level using projected time from the sluicegate to the city canals. Therefore, when there is a predicted disaster to happen, the subsequent evacuation has to be done in a short time period. Artificial Neural Network Back Propagation is one of the common methods in solving continuous data modeling and has supported multiple early warning systems in some countries. Based on the geomorphology of Ciliwung watershed, runoff drainage and land seeping variable needs to be included as one of the training attributes. Available node model has linked rainfall from nearby area to Katulampa Dam, and the model has been further developed with RMSE of 9.2142 and r (correlation coefficient) accounted for 0.8799. The result has improved the prediction capacity of the previous node model by 1%, and can be used for actual early warning system in the future. This model used batch learning for its training method but it can be upgraded to online learning where weights from the model could be readjusted automatically through continuous learning.
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