Srivastava Saurabh Ranjan, Meena Yogesh Kumar, Singh Girdhari
Malviya National Institute of Technology, Jaipur, India.
Appl Soft Comput. 2022 Dec;131:109750. doi: 10.1016/j.asoc.2022.109750. Epub 2022 Nov 2.
The pandemic outbreak of severe acute respiratory syndrome caused by the Coronavirus 2 disease in 2019, also known as SARS-COV-2 and COVID-19, has claimed over 5.6 million lives till now. The highly infectious nature of the Covid-19 virus has resulted into multiple massive upsurges in counts of new infections termed as 'waves.' These waves consist of numerous rising and falling counts of Covid-19 infection cases with changing dates that confuse analysts and researchers. Due to this confusion, the detection of emergence or drop of Covid waves is currently a subject of intensive research. Hence, we propose an algorithmic framework to forecast the upcoming details of Covid-19 infection waves for a region. The framework consists of a displaced double moving average ( DMA) algorithm for forecasting the start, rise, fall, and end of a Covid-19 wave. The forecast is generated by detection of potential dates with specific counts called 'markers.' This detection of markers is guided by decision rules generated through rough set theory. We also propose a novel 'corrected moving average' ( SMA) technique to forecast the upcoming count of new infections in a region. We implement our proposed framework on a database of Covid-19 infection specifics fetched from 12 countries, namely: Argentina, Colombia, New Zealand, Australia, Cuba, Jamaica, Belgium, Croatia, Libya, Kenya, Iran, and Myanmar. The database consists of day-wise time series of new and total infection counts from the date of first case till 31st January 2022 in each of the countries mentioned above. The DMA algorithm outperforms other baseline techniques in forecasting the rise and fall of Covid-19 waves with a forecast precision of 94.08%. The SMA algorithm also surpasses its counterparts in predicting the counts of new Covid-19 infections for the next day with the least mean absolute percentage error (MAPE) of 36.65%. Our proposed framework can be deployed to forecast the upcoming trends and counts of new Covid-19 infection cases under a minimum observation window of 7 days with high accuracy. With no perceptible impact of countermeasures on the pandemic until now, these forecasts will prove supportive to the administration and medical bodies in scaling and allotment of medical infrastructure and healthcare facilities.
2019年由冠状病毒2引起的严重急性呼吸综合征大流行,也称为SARS-CoV-2和COVID-19,迄今为止已夺去了超过560万人的生命。COVID-19病毒的高传染性导致了新感染病例数的多次大规模激增,即所谓的“浪潮”。这些浪潮包含了无数COVID-19感染病例数的起伏,日期不断变化,这让分析师和研究人员感到困惑。由于这种困惑,目前检测COVID浪潮的出现或下降是一个深入研究的课题。因此,我们提出了一个算法框架来预测一个地区即将到来的COVID-19感染浪潮的详细情况。该框架由一个移位双移动平均(DMA)算法组成,用于预测COVID-19浪潮的开始、上升、下降和结束。预测是通过检测具有特定计数的潜在日期(称为“标记”)生成的。这种标记的检测由通过粗糙集理论生成的决策规则指导。我们还提出了一种新颖的“修正移动平均”(SMA)技术来预测一个地区即将到来的新感染病例数。我们在从12个国家获取的COVID-19感染详细信息数据库上实现了我们提出的框架,这12个国家分别是:阿根廷、哥伦比亚、新西兰、澳大利亚、古巴、牙买加、比利时、克罗地亚、利比亚、肯尼亚、伊朗和缅甸。该数据库包含了上述每个国家从首例病例日期到2022年1月31日的每日新感染病例数和总感染病例数的时间序列。DMA算法在预测COVID-19浪潮的上升和下降方面优于其他基线技术,预测精度为94.08%。SMA算法在预测次日新COVID-19感染病例数方面也超过了其他同类算法,平均绝对百分比误差(MAPE)最低,为36.65%。我们提出的框架可以在至少7天的最小观察窗口下高精度地部署,以预测即将到来的COVID-19新感染病例的趋势和数量。由于到目前为止对策对疫情没有明显影响,这些预测将有助于政府和医疗机构扩大和分配医疗基础设施及医疗保健设施。