Analysis of Time Series Water Level Data Prediction Using Deep Learning Method at the Water Gate of DKI Jakarta Water Resources Office

Supriyade Supriyade, Gerry Firmansyah, Habibullah Akbar, Budi Tjahjono
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Abstract

Indonesia has 2 seasons, namely the dry season and the rainy season. During the rainy season, many points in the DKI Jakarta area experience flooding or inundation. The reason why Jakarta often experiences flooding is caused by several factors, including local rain floods, shipment floods and tidal floods. The DKI Jakarta Water Resources Agency currently does not have a system that can predict future water levels by referring to past and present water level data. Through this background, the author tries to conduct research in one of the floodgates in the northern area of DKI Jakarta in predicting water levels using deep learning methods , namely Recurrent Neural Network (RNN) and Long Short Term Memory (LSTM). The purpose of this research is to analyze the best deep learning models and predict water level time series data. From the results of the analysis carried out, the best deep learning model is Long Short Term Memory (LSTM) using several tests such as n-input, split data with a composition of 90.33% train data and 9.67% test data , as well as testing of different parameters including epoch, batch size, learning rate, dropout , so the results obtained are the lowest error values with RMSE (17.65), MAPE (0.29), MAE (3.37) and the time needed in the process (runtime) is 39 minutes
基于深度学习方法的DKI雅加达水利局水闸时间序列水位预测分析
印度尼西亚有两个季节,即旱季和雨季。在雨季,DKI雅加达地区的许多地方都经历了洪水或淹没。雅加达经常发生洪水的原因有几个因素,包括当地的暴雨洪水、航运洪水和潮汐洪水。雅加达水资源局目前还没有一个系统,可以通过参考过去和现在的水位数据来预测未来的水位。在此背景下,作者试图在雅加达DKI北部地区的一个水闸进行研究,利用深度学习方法,即循环神经网络(RNN)和长短期记忆(LSTM)来预测水位。本研究的目的是分析最佳深度学习模型并预测水位时间序列数据。从分析的结果,最好的深度学习模式是长期短期记忆(LSTM)使用多个测试如n输入、分割数据的成分90.33%训练数据和测试数据,9.67%的测试不同参数包括时代、批量大小、学习速率,辍学,所以获得的结果是最低的错误和RMSE值(17.65),日军(0.29),梅(3.37),并在这一过程中所需的时间(运行时)39分钟
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