COVID-19 was announced by the World Health Organisation (WHO) as a global pandemic. The severity of the disease spread is determined by various factors such as the countries' health care capacity and the enforced lockdown. However, it is not clear if a country's climate acts as a contributing factor towards the number of infected cases. This paper aims to examine the relationship between COVID-19 and the weather of 89 cities in Saudi Arabia using machine learning techniques. We compiled and preprocessed data using the official daily report of the Ministry of Health of Saudi Arabia for COVID-19 cases and obtained historical weather data aligned with the reported case daily reports. We preprocessed and prepared the data to be used in models' training and evaluation. Our results show that temperature and wind have the strongest association with the spread of the pandemic. Our main contribution is data collection, preprocessing, and prediction of daily cases. For all tested models, we used cross-validation of K-fold of K=5. Our best model is the random forest that has a Mean Square Error(MSE), Root Mean Square (RMSE), Mean Absolute Error (MAE), and R{2} of 97.30, 9.86, 1.85, and 82.3\%, respectively.
翻译:世界卫生组织(卫生组织)宣布,COVID-19是全球流行病,疾病传播的严重程度取决于各种因素,例如各国的保健能力和强制封锁等,但不清楚一个国家的气候是否是感染病例数量的促成因素。本文件的目的是利用机器学习技术审查COVID-19-19与沙特阿拉伯89个城市天气之间的关系。我们利用沙特阿拉伯卫生部关于COVID-19病例的正式每日报告汇编和预处理数据,并获得与报告的案件每日报告相一致的历史天气数据。我们预先处理并编制了数据,用于模型培训和评估。我们的结果显示,温度和风与流行病的蔓延有最密切的联系。我们的主要贡献是数据收集、预处理和预测日常病例。我们对所有测试模型都使用了K=5.我们使用的K的交叉校验。我们的最佳模型是随机森林,其中含有中度的广场错误(MSE)、根平原广场(RMSE)、严重错误(MAE)、983.30、9.86和R2}分别是97.30、9.86、和R.2}。