通过回顾性确认使用 ARIMA、MLP、ELM 和 LSTM 预测模型分析 Telangana 邦 COVID-19 病例的进展情况

M. Rajendar, D. M. Reddy, M. Nagesh, V. Nagaraju
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目的:本研究文章的重要性在于评估印度泰兰加纳邦诊断 COVID-19 阳性大流行病例的有效模式。方法应用神经网络模型(极限学习机和多层感知)、深度学习神经网络模型(长短期记忆-LSTM)和传统的自回归综合移动平均(ARIMA)模型,并将数据从非线性转换为线性(静态),以预测 COVID-19 阳性病例。研究数据的时间跨度为 2020 年 12 月 1 日至 2020 年 5 月 30 日。2020年12月1日至2021年5月30日。先用 80% 的训练数据拟合模型,再用 20% 的测试数据预测数值。原始测试数据与预测数据之间的偏差会导致误差。在这些误差值中,误差最小的模型被认为是四个模型中最好的。研究结果与 ARIMA(258.20)、ELM(553.67)和 MLP(641.86)相比,LSTM 模型的均方根误差(RMSE = 71.12)最小,因此被证明是最有效的模型。新颖性:这些预测方法有助于预测未来几天的 Covid-19 阳性病例。建议采取更好的预防措施来控制 Covid-19 阳性病例。关键词COVID19、ARIMA、LSTM、MLP、ELM 预测
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Progression of COVID-19 Cases in Telangana State by using ARIMA, MLP, ELM and LSTM Prediction Models by Retrospective Confirmation
Objective: The importance of this research article is to evaluate efficient model for diagnosing pandemic COVID-19 positive cases in Telangana State, India. Method: Neural Network models (Extreme Learning Machine and Multi-Layer Perception), Deep Learning Neural Network model (Long Short Term Memory-LSTM) and traditional Auto Regressive Integrated Moving Average (ARIMA) models were applied and the data was converted from non-linear to linear (stationarity) for forecasting Covid-19 positive cases. The study of the data covered from 1st. Dec 2020 to 30th May 2021. 80% of train data was taken to fit the models and then 20% of the test data was used to predict the values. The deviation between original test data and predicted data led to an error. Among these error values, the model which had minimum errors was considered as the best of the four models. Findings: LSTM model was proved to be the most efficient model, as a result of the least Root mean square error (RMSE = 71.12) compared to ARIMA (258.20), ELM (553.67) and MLP (641.86) values. Novelty: These forecasting methods succour to predict the Covid-19 positive cases in the forthcoming days. This has been suggested for taking the better preventive steps to control the Covid-19 positive cases. Keywords: COVID­19, ARIMA, LSTM, MLP, ELM Forecasting
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