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An Improved Granulated Convolutional Neural Network Data Analysis Model for COVID-19 Prediction

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摘要 As COVID-19 poses a major threat to people’s health and economy,there is an urgent need for forecasting methodologies that can anticipate its trajectory efficiently.In non-stationary time series forecasting jobs,there is frequently a hysteresis in the anticipated values relative to the real values.The multilayer deep-time convolutional network and a feature fusion network are combined in this paper’s proposal of an enhanced Multilayer Deep Time Convolutional Neural Network(MDTCNet)for COVID-19 prediction to address this problem.In particular,it is possible to record the deep features and temporal dependencies in uncertain time series,and the features may then be combined using a feature fusion network and a multilayer perceptron.Last but not least,the experimental verification is conducted on the prediction task of COVID-19 real daily confirmed cases in the world and the United States with uncertainty,realizing the short-term and long-term prediction of COVID-19 daily confirmed cases,and verifying the effectiveness and accuracy of the suggested prediction method,as well as reducing the hysteresis of the prediction results.
出处 《Intelligent Automation & Soft Computing》 SCIE 2023年第7期179-198,共20页 智能自动化与软计算(英文)
基金 supported by the major scientific and technological research project of Chongqing Education Commission(KJZD-M202000802) The first batch of Industrial and Informatization Key Special Fund Support Projects in Chongqing in 2022(2022000537).
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