The Coronavirus Disease 2019 or the COVID-19 pandemic has swept almost all parts of the world since the first case was found in Wuhan, China, in December 2019. With the increasing number of COVID-19 cases in the world, SARS-CoV-2 has mutated into various variants. Given the increasingly dangerous conditions of the pandemic, it is crucial to know when the pandemic will stop by predicting confirmed cases of COVID-19. Therefore, many studies have raised COVID-19 as a case study to overcome the ongoing pandemic using the Deep Learning method, namely LSTM, with reasonably accurate results and small error values. LSTM training is used to predict confirmed cases of COVID-19 based on variants that have been identified using ECDC's COVID-19 dataset containing confirmed cases of COVID-19 that have been identified from 30 countries in Europe. Tests were conducted using the LSTM and BiLSTM models with the addition of RNN as comparisons on hidden size and layer size. The obtained result showed that in testing hidden sizes 25, 50, 75 to 100, the RNN model provided better results, with the minimum MSE value of 0.01 and the RMSE value of 0.012 for B.1.427/B.1.429 variant with hidden size 100. In further testing of layer sizes 2, 3, 4, and 5, the result shows that the BiLSTM model provided better results, with minimum MSE value of 0.01 and the RMSE of 0.01 for the B.1.427/B.1.429 variant with hidden size 100 and layer size 2.
翻译:自2019年12月在中国武汉发现第一个病例以来,2019年科罗纳病毒疾病或COVID-19大流行已席卷世界各地,2019年科罗纳病毒疾病或COVID-19大流行自2019年12月在中国武汉发现第一个病例以来几乎遍及世界所有地区。随着世界上COVID-19病例数量不断增加,SARS-COV-2已变异为各种变体。鉴于该流行病的危险性日益加剧,必须了解该流行病何时停止,预测COVID-19的确诊病例。因此,许多研究利用深层学习方法,即LSTM,将COVID-19作为克服这一大流行病的案例研究。 LSTM有相当准确的结果和小的差错值。LSTM培训用于预测已确诊的COVID-19大案,以EC的COVID-19数据集为基础,其中包括来自欧洲30个国家的已确认的COVID-19大病例。测试用LSTM和BLSTM模型作为隐型规模和层规模的比较,在测试25号、50、75至100个和100个LSLSA中,B的模型提供了更好的最低值。