Prediction model with artificial neural network for tidal flood events in the coastal area of bandar lampung City

Eka Suci Puspita Wulandari, Ramadhan Nurpambudi, RZ. Abdul Aziz
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Abstract

The fastest sea level rise began in 2013 and reached its highest level in 2021. This is part of the ongoing global warming impact, where polar ice continues to melt, glaciers also continue to melt, causing sea level rise. In the Bandar Lampung City area, there are several areas that are threatened with tidal flooding, namely Karang City Village and Kangkung Village, Bumi Waras Village, and Sukaraja Village. Bandar Lampung itself is the city center in the coastal area. Where the majority of the population is in the Coastal area so that the threat of tidal flooding is caused by rising sea levels. To study the occurrence of tidal floods in the past, this research uses an Artificial Neural Network which has the ability to study non-linear data which is then carried out by training and testing until the best configuration model is obtained. Based on the analysis and discussion that has been carried out, several important points can be drawn, including the results of training and dataset testing that has been carried out. , 80:20, and 90;10. This is evidenced by the results of the high accuracy of the model configuration and also the results of the prediction table which is able to describe the actual conditions, setting the model configuration experimentally is able to produce the best training accuracy value reaching 100% while for the best testing accuracy is 88%. The average correlation value of training with the 50:50 dataset is 0.975, the 60:40 dataset is 0.975, the 70:30 dataset is 0.951, the 80:20 dataset is 0.935, and the 90:10 dataset is 0.929. For the average value of the correlation test with the 50:50 dataset of 0.514, the 60:40 dataset is 0.362, the 70:30 dataset is 0.488, the 80:20 dataset is 0.284, and the 90:10 dataset is 0.402. Whereas the average error value for the 50:50 dataset is 0.006, the 60:40 dataset is 0.006, the 70:30 dataset is 0.010, the 80:20 dataset is 0.007, and the 90:10 dataset is 0.007, the flood prediction table is made based on 1 configuration the best with a training accuracy rate of 98% and a testing accuracy of 80% with an error value of 0.004, namely configuration model 14, this model is the best configuration model out of 3 dataset divisions out of a total of 5. The prediction table uses sea level tides of 1.5 meters. The prediction table is able to provide good tidal flood percentage values, especially when there are active astronomical phenomena. The results of this good flood prediction table illustrate that the backpropagation ANN is able to study datasets well and can be used by BMKG forecasters in making tidal flood early warnings.
班达南榜市沿海地区潮汐洪水事件的人工神经网络预测模型
海平面上升最快始于2013年,并在2021年达到最高水平。这是目前全球变暖影响的一部分,极地冰继续融化,冰川也继续融化,导致海平面上升。在班达楠榜市地区,有几个地区受到潮汐洪水的威胁,即Karang城村和Kangkung村、Bumi Waras村和Sukaraja村。南榜港本身是沿海地区的城市中心。其中大部分人口居住在沿海地区,因此海平面上升造成潮汐洪水的威胁。为了研究过去潮汐洪水的发生情况,本研究使用具有非线性数据学习能力的人工神经网络进行训练和测试,直到得到最佳配置模型。根据已经进行的分析和讨论,可以得出几个要点,包括已经进行的训练和数据集测试的结果。, 80:20,和90;模型配置精度高的结果证明了这一点,预测表的结果也能够描述实际情况,实验设置模型配置可以产生最佳训练精度值达到100%,而最佳测试精度为88%。训练与50:50数据集的平均相关值为0.975,60:40数据集为0.975,70:30数据集为0.951,80:20数据集为0.935,90:10数据集为0.929。对于与50:50数据集的相关性检验平均值0.514,60:40数据集为0.362,70:30数据集为0.488,80:20数据集为0.284,90:10数据集为0.402。而50:50数据集的平均误差值为0.006,则数据集是0.006,70:30数据集是0.010,80:20数据集是0.007,挺数据集是0.007,洪水预测表是基于1配置最好的训练准确率为98%和80%的测试精度误差值为0.004,即14配置模型,这个模型是最好的配置模型的数据集3部门共有5。预测表使用1.5米的海平面潮汐。预报表能提供较好的潮汐洪水百分比值,特别是在有活跃的天文现象时。结果表明,反向传播人工神经网络能够很好地研究数据集,可用于BMKG预报员的潮汐洪水预警。
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