The recent global outbreak of covid-19 is affecting many countries around the world. Due to the growing number of newly infected individuals and the health-care system bottlenecks, it will be useful to predict the upcoming number of patients. This study aims to efficiently forecast the is used to estimate new cases, number of deaths, and number of recovered patients in Iran for 180 days, using the official dataset of the Iranian Ministry of Health and Medical Education and the impact of control measures on the spread of COVID-19. Four different types of forecasting techniques, time series, and machine learning algorithms, are developed and the best performing method for the given case study is determined. Under the time series, we consider the four algorithms including Prophet, Long short-term memory, Autoregressive, Autoregressive Integrated Moving Average models. On comparing the different techniques, we found that deep learning methods yield better results than time series forecasting algorithms. More specifically, the least value of the error measures is observed in seasonal ANN and LSTM models. Our findings showed that if precautionary measures are taken seriously, the number of new cases and deaths will decrease, and the number of deaths in September 2021 will reach zero.
翻译:最近全球爆发的covid-19正在影响着世界上许多国家。由于新感染者人数和保健系统瓶颈越来越多,预测即将出现的病人人数是有益的。本研究的目的是有效地预测伊朗180天内新病例、死亡人数和已康复病人人数,利用伊朗卫生和医学教育部的官方数据集和控制措施对COVID-19扩散的影响。四种不同类型的预报技术、时间序列和机器学习算法已经制定,并确定了进行特定案例研究的最佳方法。根据时间序列,我们考虑四种算法,包括先知、长期短期记忆、自动递减、自动递减综合平均移动模型。在比较不同的技术时,我们发现深层次学习方法比时间序列预测算法产生更好的结果。更具体地说,季节性ANN和LSTM模型中观察到的错误措施最小值。我们的调查结果显示,如果认真采取预防措施,新病例和死亡人数将会减少,2021年9月的死亡人数将达到零。