基于门控循环单元神经网络的COVID患者预测

Q4 Social Sciences
G. Patra, M. Mohanty
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引用次数: 0

摘要

自2020年1月以来,世界见证了一场新的大流行,使人类面临严重风险。源自中华人民共和国的新冠肺炎疫情已影响到215个国家,使人们的生活和经济陷入停滞。在这种情况下,预测受COVID影响的患者非常重要,以便政府和卫生专业人员能够在实施封锁、建立隔离和医疗设施以及其他任务方面做出适当的决定。在本文中,深度学习被用作五个国家患者预测的方法。每天的预测执行一周的评估,可以延长更多的时间。它是一种利用深度学习方法的时间序列预测方法。使用三种不同的方法进行预测,并发现门控循环单元(gru)的预测效果很好。gru得到的结果非常准确,确立了其在其他网络中的优势地位。因此,它可以作为行政人员和卫生官员预测COVID-19患者数量的工具。©2021卡拉德尼兹技术大学。版权所有。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of COVID Patients using Gated Recurrent Unit Neural Networks
Since January 2020 the world has witnessed a new pandemic that has put the humanity at a grave risk. The COVID-19 disease originated from People's Republic of China has affected 215 nations and has put the life and economy to a standstill. In this scenario, it is very important to predict the patients affected by COVID, so that the administration and the health professionals can take suitable decisions regarding enforcing lockdown, creating isolation and medical facilities and other tasks. In this paper deep learning is utilized as a method of prediction of patients in five countries. Day wise prediction is performed for a week for evaluation that can be extended for more time. It is a type of time series prediction method using deep learning approach. Three different methods are used for prediction and have been found excellent result using the Gated Recurrent Units (GRUs). The results obtained by GRUs are very accurate and establish its supremacy over other networks. Thus, it can be used as a tool for prediction of number of COVID-19 patients by the administrators and health officials. © 2021 Karadeniz Technical University. All rights reserved.
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