Forecasting model of COVID-19 pandemic in Malaysia: An application of time series approach using neural network

IF 1.4 Q3 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Decision Science Letters Pub Date : 2022-01-01 DOI:10.5267/j.dsl.2021.10.001
T. Purwandari, S. Zahroh, Y. Hidayat, Sukonob Sukonob, M. Mamat, Jumadil Saputra
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引用次数: 3

Abstract

COVID-19 has spread to more than a hundred countries worldwide since the first case reported in late 2019 in Wuhan, China. As one of the countries affected by the spread of COVID-19 cases, the local government of Malaysia has issued several policies to reduce the spread of this outbreak. One of the measures taken by the Malaysian government, namely the Movement Control Order, has been carried out since March 18, 2020. In order to provide precise information to the government so that it can take the appropriate measures, many researchers have attempted to predict and create the model for these cases to identify the number of cases each day and the peak of this pandemic. Therefore, hospitals and health workers can anticipate a surge in COVID-19 patients. In this research, confirmed, recovered, and death cases prediction was performed using the neural network as one of the machine learning methods with high accuracy. The neural network model used is the Multi-Layer Perceptron, Neural Network Auto-Regressive, and Extreme Learning Machine. The three models calculated the average percentage error (APE) values for 7 days and obtained APE values for most cases less than 10%; only 1 case in the last day of one method had an APE value of approximately 11%. Furthermore, based on the best model, then the forecast is made for the next 7 days. In conclusion, this study identified that the MLP model is the best model for 7-step ahead forecasting for confirmed, recovered, and death cases in Malaysia. However, according to the result of testing data, the ELM performs better than the MLP model.
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马来西亚新冠肺炎大流行预测模型:基于神经网络的时间序列方法应用
自2019年底在中国武汉报告首例病例以来,COVID-19已蔓延到全球100多个国家。作为受新冠肺炎疫情影响的国家之一,马来西亚地方政府出台了多项政策,以减少疫情的传播。马来西亚政府采取的措施之一,即行动管制令,自2020年3月18日起实施。为了向政府提供准确的信息,以便政府采取适当的措施,许多研究人员试图预测和创建这些病例的模型,以确定每天的病例数和这次大流行的高峰。因此,医院和卫生工作者可以预测COVID-19患者的激增。在本研究中,将神经网络作为机器学习方法之一,进行了确诊、康复和死亡病例的预测,具有较高的准确性。使用的神经网络模型是多层感知器、神经网络自回归和极限学习机。3种模型计算了7天的平均百分比误差(APE)值,大多数情况下APE值小于10%;只有1例在一种方法的最后一天APE值约为11%。再以最佳模型为基础,对未来7天进行预报。总之,本研究确定MLP模型是马来西亚确诊病例、康复病例和死亡病例提前7步预测的最佳模型。然而,从测试数据的结果来看,ELM模型的性能优于MLP模型。
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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来源期刊
Decision Science Letters
Decision Science Letters Decision Sciences-Decision Sciences (all)
CiteScore
3.40
自引率
5.30%
发文量
49
审稿时长
20 weeks
期刊最新文献
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