Prediction of flood events in the city of Bandar Lampung using the artificial neural network

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

The city of Bandar Lampung is currently experiencing seasonal flooding which occurs almost every year, resulting in significant losses. Floods recorded by BNPB in the last 10 years there were 16 incidents of flooding in the Bandar Lampung area. More than 14,000 people suffered, more than 500 people had to be evacuated, more than 900 houses were damaged, and 4 public facilities were damaged. To study the pattern of flood events in the past, the Artificial Neural Network Backpropagation learning method will be used which will utilize its non-linear variable learning abilities. The configuration settings for the Artificial Neural Network were carried out experimentally without any basis for assigning values, especially for the parameters of the number of hidden layers, number of neurons, and epochs used in training and variable testing. The results obtained from this study are the results of training and testing of datasets that have been carried out by ANN backpropagation are able to properly study patterns of flood events and also non-flood events in the dataset, this is evidenced by the results of high model configuration accuracy and also the results of predictive tables that able to describe actual conditions, setting the configuration model experimentally is able to produce an accuracy value of 90-100%, an average training correlation value of 0.96 and an average test correlation value of 0.89, and an average error value of 0.0089 out of 20 model configuration, and the flood prediction table are made based on the 1 best configuration with a training and testing accuracy rate of 100% with an error value of 0.00134, namely configuration model 20, the prediction table uses an average air temperature of 27˚C with 80% humidity. The prediction table is able to produce excellent flood potential results which are able to represent flood events as well as non-flood events based on the results of the dataset learning.
用人工神经网络预测班达尔-楠榜市洪水事件
班达尔楠榜市目前正经历季节性洪水,几乎每年都会发生,造成重大损失。BNPB记录的洪水在过去10年中,班达尔-楠榜地区发生了16起洪水事件。14000多人受灾,500多人不得不疏散,900多所房屋受损,4处公共设施受损。为了研究过去洪水事件的模式,将使用人工神经网络反向传播学习方法,该方法将利用其非线性变量学习能力。人工神经网络的配置设置是在没有任何赋值基础的情况下通过实验进行的,特别是对于训练和变量测试中使用的隐藏层数量、神经元数量和时期的参数。从这项研究中获得的结果是通过ANN反向传播对数据集进行训练和测试的结果,这些数据集能够正确地研究数据集中的洪水事件和非洪水事件的模式,这通过高模型配置精度的结果以及能够描述实际情况的预测表的结果来证明,通过实验设置配置模型能够在20个模型配置中产生90-100%的准确度值、0.96的平均训练相关值和0.89的平均测试相关值以及0.0089的平均误差值,和洪水预测表是基于1个最佳配置制作的,训练和测试准确率为100%,误差值为0.00134,即配置模型20,预测表使用的平均气温为27˚C,湿度为80%。预测表能够产生优秀的洪水潜在结果,该结果能够基于数据集学习的结果来表示洪水事件以及非洪水事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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