Akhdan Aziz Ghozi, Ayu Aprianti, Ahmad Dzaki Putra Dimas, R. Fauzi
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引用次数: 0

摘要

本研究旨在检验递归神经网络(RNN)模型在预测楠榜省Covid-19病例中的架构性能。RNN方法是深度学习的一部分,深度学习将用于对2020年3月26日至2021年3月28日楠pung省Covid-19病例的数据进行建模。选择RNN模型是因为Covid-19数据是时间序列的形式,RNN的优点是它可以使用多个网络层捕获数据时间序列的信息,从而可以更好地建模并导致高预测精度。数据分为3类,即活跃病例、康复病例和死亡病例。数据准备完成后,368个数据分为294个初始纬度数据和74个测试数据。在对每个数据的数据进行latih后,对每个数据的数据进行测试,作为预测最新数据的参考。最优结果为累积活跃病例模型,RMSE=0.0022;对于累积恢复案例,RMSE = 0.0007;累积死亡病例RMSE = 0.0012。然后根据建模误差对三种病例进行预测,得出累积活跃病例的RMSE = 0.001;累积恢复案例的RMSE=0.0027;累积死亡病例的RMSE=0.001。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analisis Prediksi Data Kasus Covid-19 di Provinsi Lampung Menggunakan Recurrent Neural Network (RNN)
This study aims to examine the architectural performance of the Recurrent Neural Network (RNN) model in predicting Covid-19 cases in Lampung Province. The RNN method is part of Deep Learning which will be used to model data on Covid-19 cases in Lampung Province from March 26, 2020 to March 28, 2021. The RNN model was chosen because the Covid-19 data is in the form of a time series and the advantages of RNN are that it can capture information on the data time series using multiple network layers which allow better modeling and resulting in high prediction accuracy. The data is divided into 3, namely active cases, recovered cases, and dead cases. After preparing the data, the 368 data were divided into 294 initial latih data and 74 test data. After latih on the data for each data, then a test is carried out on the data for each data as a reference for predicting the latest data. The most optimal results show the cumulative active case model with RMSE=0.0022; for cumulative recovery cases obtained RMSE = 0.0007; while the cumulative death cases obtained RMSE = 0.0012. Based on the modeling error, then make predictions on the three cases which results in RMSE = 0.001 for cumulative active cases; RMSE=0.0027 for cumulative recovery cases; and RMSE=0.001 for cumulative death cases.
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