Forecasting COVID-19 Daily Infected Cases in Sri Lanka by Holt-Winters Exponential Smoothing Method

S. S. Wickramasinghe, K. Konarasinghe
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Abstract

The novel coronavirus disease (COVID-19) has spread from China since December 2019 and spread worldwide including Sri Lanka. The aim of this study was to forecast the daily infected cases of COVID-19 in Sri Lanka which in turn help administrators for effective management of the pandemic. The method used in this study was Holt-Winters three parameter with additive or multiplicative models. The daily infected cases in Sri Lanka during the period of 22nd January 2020 to 22nd December 2021 were obtained from the publicly available databases of Epidemiology Unit of Sri Lanka and World Health Organization. The pattern recognition of the daily infected cases was examined by time series plot and Auto Correlation Function (ACF). The model validation was performed by the Anderson Darling test which confirmed the normality of residuals (p > 0.05) and ACF that confirmed the independence of residuals of the model. The forecasting ability of the model was assessed by the three measurements of errors; Mean Absolute Percentage Error (MAPE), Mean Absolute Deviation (MAD) and Mean Square Error (MSE). Holt-Winters additive and multiplicative model with α (level) 0.61, β (trend) 0.4 and γ (seasonal) 0.3 at a length of repeating behaviour of 3 days, had the least relative and absolute measurement of errors during the model fitting and verification. İn the multiplicative model, MAPE, MAD and MSE were 0.2847, 0.0187 and 0.0005 respectively. Similarly in the additive model, corresponding values of MAPE, MAD and MSE were 0.0207, 0.0187 and 0.0005. The fits and the forecast of these models followed a similar pattern of the actual daily infected cases concluding that the Holt-Winters model can be used to forecast the COVID-19 outbreak in Sri Lanka.
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用霍尔特-温特斯指数平滑法预测斯里兰卡 COVID-19 每日感染病例数
新型冠状病毒疾病(COVID-19)自 2019 年 12 月起从中国蔓延至全球,包括斯里兰卡。本研究的目的是预测斯里兰卡每天的 COVID-19 感染病例,从而帮助管理者有效管理疫情。本研究采用的方法是霍尔特-温特斯三参数加法或乘法模型。2020 年 1 月 22 日至 2021 年 12 月 22 日期间斯里兰卡的每日感染病例来自斯里兰卡流行病学股和世界卫生组织的公开数据库。通过时间序列图和自相关函数(ACF)对每日感染病例进行模式识别。安德森-达林检验(Anderson Darling test)证实了残差的正态性(p > 0.05),而自相关函数(ACF)则证实了模型残差的独立性,从而对模型进行了验证。模型的预测能力通过三个误差测量值进行评估:平均绝对百分比误差 (MAPE)、平均绝对偏差 (MAD) 和平均平方误差 (MSE)。在模型拟合和验证过程中,α(水平)为 0.61、β(趋势)为 0.4、γ(季节)为 0.3、重复行为长度为 3 天的 Holt-Winters 加法和乘法模型的相对误差和绝对误差最小。在乘法模型中,MAPE、MAD 和 MSE 分别为 0.2847、0.0187 和 0.0005。同样,在加法模型中,相应的 MAPE、MAD 和 MSE 值分别为 0.0207、0.0187 和 0.0005。这些模型的拟合和预测结果与每日实际感染病例的模式相似,因此,Holt-Winters 模型可用于预测斯里兰卡 COVID-19 的爆发。
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