利用深度学习和时间序列方法建立伊朗及其邻国 COVID-19 病例分析模型

Q4 Earth and Planetary Sciences Iraqi Journal of Science Pub Date : 2024-03-29 DOI:10.24996/ijs.2024.65.3.36
Razieyeh Abedi, Kheirolah Rahsepar Frad
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引用次数: 0

摘要

自 2019 年冠状病毒(COVID-19)大流行以来,它已迅速成为全球关注的主要健康问题。病毒的各种变异和快速传播、缺乏特效治疗方法、医院设施有限等问题凸显了预测、风险分析和及时治疗的重要性。使用数学模型、人工智能和模拟方法是预测病毒传播并提供有效解决方案以防止病毒传播的有效工具。分析和预测需要一个综合模型来涵盖问题的不同方面,并使用不同的方法来获得适当的结果。 本研究提出了一个用于分析和预测伊朗及其邻国 COVID-19 病例的模型。利用约翰-霍普金斯大学 2020 年 1 月 29 日至 2021 年 4 月 30 日的数据,对拟议模型中数学模型和深度学习模型的性能进行了评估。使用 RMSE 标准对每日病例的预测结果进行了评估。然后,研究了伊朗邻国的病例趋势对该国新病例发生率的影响。这些模型可以帮助政府预测感染人数,从而提供必要的解决方案,防止新一轮的病毒传播。
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An Analytic Model for COVID-19 Cases in Iran and Its Neighbors Using Deep Learning and Time Series Methods
     Since the pandemic of the coronavirus (COVID-19) in 2019, it has rapidly become a major global health concern. Various mutations and rapid spread of the virus, a lack of specific treatment, and limited hospital facilities highlight the importance of anticipation, risk analysis, and timely treatment. The use of mathematical models, artificial intelligence, and simulation methods are effective tools in predicting the spread and providing effective solutions to prevent virus transmission. Analysis and forecasting require an integrated model to cover different aspects of the problem and use different methods to obtain appropriate results.    In this research, a proposed model for analysis and prediction of COVID-19 cases in Iran and neighboring countries is presented. The performance of mathematical and deep learning models in the proposed model has been evaluated using data from Johns Hopkins University from January 29, 2020, to April 30, 2021. Evaluation of the predictive outcomes of daily cases was performed using RMSE criteria. Then, the effect of the trend of cases in neighboring countries of Iran on the rate of new cases in this country has been studied. These models can help governments predict the number of infections to provide the necessary solutions and prevent a new wave of the virus.
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来源期刊
Iraqi Journal of Science
Iraqi Journal of Science Chemistry-Chemistry (all)
CiteScore
1.50
自引率
0.00%
发文量
241
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