Forecasting adversities of COVID-19 waves in India using intelligent computing.

IF 1.1 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Arijit Chakraborty, Dipankar Das, Sajal Mitra, Debashis De, Anindya J Pal
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引用次数: 0

Abstract

The second wave of the COVID-19 pandemic outburst triggered enormously all over India. This ill-fated and fatal brawl affected millions of Indian citizens, with many active and infected Indians struggling to recover from this deadly disease to date, leading to a grief situation. The present situation warrants developing a robust and sound forecasting model to evaluate the adversities of the epidemic with reasonable accuracy to assist officials in curbing this hazard. Consequently, we employed Auto-ARIMA, Auto-ETS, Auto-MLP, Auto-ELM, AM, MLP and proposed ELM methods for assessing accumulative infected COVID-19 individuals by the end of July 2021. We made 90 days of advanced forecasting, i.e., up to 24 July 2021, for the number of cumulative infected COVID-19 cases of India using all seven methods in 15 days' intervals. We fine-tuned the hyper-parameters to enhance the prediction performance of these models and observed that the proposed ELM model offers satisfactory accuracy with MAPE of 5.01, and it rendered better accuracy than the other six models. To comprehend the dataset's nature, five features are extracted. The resulting feature values encouraged further investigation of the models for an updated dataset, where the proposed model provides encouraging results.

Abstract Image

Abstract Image

Abstract Image

利用智能计算预测印度 COVID-19 浪潮的不利影响。
COVID-19 大流行的第二波爆发在印度各地引发了巨大的影响。这场命运多舛的致命搏斗影响了数百万印度公民,许多活跃和受感染的印度人至今仍在挣扎着从这一致命疾病中恢复过来,导致了悲痛的局面。面对当前的形势,我们有必要开发一个稳健、可靠的预测模型,以合理的准确度评估疫情的不利影响,协助官员遏制这一危害。因此,我们采用了 Auto-ARIMA、Auto-ETS、Auto-MLP、Auto-ELM、AM、MLP 和建议的 ELM 方法来评估到 2021 年 7 月底 COVID-19 的累计感染人数。我们使用所有七种方法,以 15 天为间隔,对印度 COVID-19 累计感染病例数进行了 90 天的提前预测,即截至 2021 年 7 月 24 日。我们对超参数进行了微调,以提高这些模型的预测性能,并观察到所提出的 ELM 模型提供了令人满意的准确性,MAPE 为 5.01,其准确性优于其他六个模型。为了理解数据集的性质,提取了五个特征。由此得出的特征值鼓励对更新数据集的模型进行进一步研究,其中提出的模型提供了令人鼓舞的结果。
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来源期刊
Innovations in Systems and Software Engineering
Innovations in Systems and Software Engineering COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
3.80
自引率
8.30%
发文量
75
期刊介绍: Innovations in Systems and Software Engineering: A NASA Journal addresses issues and innovations in Systems Engineering, Systems Integration, Software Engineering, Software Development and other related areas that are specifically of interest to NASA. The journal includes peer-reviewed world-class technical papers on topics of research, development and practice related to NASA''s missions and projects, topics of interest to NASA for future use, and topics describing problem areas for NASA together with potential solutions. Papers that do not address issues related to NASA are of course very welcome, provided that they address topics that NASA might like to consider for the future. Papers are solicited from NASA and government employees, contractors, NASA-supported academic and industrial partners, and non-NASA-supported academics and industrialists both in the USA and worldwide. The journal includes updates on NASA innovations, articles on NASA initiatives, papers looking at educational activities, and a State-of-the-Art section that gives an overview of specific topic areas in a comprehensive format written by an expert in the field.
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