Model Time Series untuk Prediksi Jumlah Kasus Infeksi Coronavirus (Covid-19) di Sulawesi Selatan

Asrirawan Asrirawan, Andi Seppewali, Nurul Fitriyani
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引用次数: 2

Abstract

Since it was declared a pandemic outbreak, the COVID 19 virus has become one of the main focuses of countries in the world in efforts to prevent the spread of the virus, including Indonesia. The areas of greatest severity in Indonesia include Jakarta, East Java, West Java and South Sulawesi. South Sulawesi Province is recorded as the largest area exposed to the COVID 19 pandemic outside Java Island. Predicting the number of COVID 19 cases is an alternative in preventing the spread through making government policies based on predictive data. This article presents a predictive model for the number of COVID 19 cases based on the ARIMA, Holt Winters and Nonlinear Autoregressive Neural Network (NAR-NN) Model. The results of the analysis show that the ARIMA Model (1,1,1) has a better level of prediction accuracy than the HW and NAR-NN models based on the MAPE criteria. Meanwhile, for the RMSE, MAE and MPE criteria, the NAR-NN model is better than others.
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时间系列预测苏拉威西南部Coronavirus (Covid-19)感染病例的数量
新冠肺炎疫情被宣布为大流行疫情后,印度尼西亚等世界各国为防止新冠病毒扩散而关注的焦点之一。印尼最严重的地区包括雅加达、东爪哇、西爪哇和南苏拉威西。南苏拉威西省是除爪哇岛外受COVID - 19大流行影响最大的地区。预测新冠肺炎病例数是根据预测数据制定政府政策,防止疫情扩散的另一种选择。本文提出了一种基于ARIMA、Holt Winters和非线性自回归神经网络(非线性自回归神经网络)模型的COVID - 19病例数预测模型。分析结果表明,ARIMA模型(1,1,1)比基于MAPE准则的HW和NAR-NN模型具有更高的预测精度。同时,对于RMSE、MAE和MPE标准,NAR-NN模型优于其他模型。
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Proyeksi Produksi Padi Kabupaten Pinrang Dengan Metode Singular Spectrum Analysis ANALISIS DAN SIMULASI PENYAKIT INFEKSI SALURAN PERNAPASAN AKUT DI KABUPATEN BULUKUMBA DENGAN MENGGUNAKAN MODEL SUSCEPTIBLE EXPOSED INFECTIOUS RECOVERED (SEIR) Pemodelan Jumlah Kematian Ibu dan Anak di Sulawesi Selatan Menggunakan Regresi Poisson Bivariat STUDI KASUS KEMISKINAN DI INDONESIA LEVEL PROVINSI DAN FAKTOR-FAKTOR YANG MEMPENGARUHINYA MENGGUNAKAN REGRESI LINEAR BERGANDA DIAGRAM KONTROL MULTIVARIAT BERDASARKAN JARAK CHI-KUADRAT (Studi Kasus: Produksi Surat Kabar Kaltim Post Tahun 2017)
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