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Pervasive computing in the context of COVID-19 prediction with AI-based algorithms

机译:在Covid-19对基于AI的算法预测的背景下的普遍计算

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Purpose - The current and on-going coronavirus (COVID-19) has disrupted many human lives all over the world and seems very difficult to confront this global crisis as the infection is transmitted by physical contact. As no vaccine or medical treatment made available till date, the only solution is to detect the COVID-19 cases, block the transmission, isolate the infected and protect the susceptible population. In this scenario, the pervasive computing becomes essential, as it is environment-centric and data acquisition via smart devices provides better way for analysing diseases with various parameters. Design/methodology/approach - For data collection, Infrared Thermometer, Hikvision's Thermographic Camera and Acoustic device are deployed. Data-imputation is carried out by principal component analysis. A mathematical model susceptible, infected and recovered (SIR) is implemented for classifying COVID-19 cases. The recurrent neural network (RNN) with long-term short memory is enacted to predict the COVID-19 disease. Findings - Machine learning models are very efficient in predicting diseases. In the proposed research work, besides contribution of smart devices, Artificial Intelligence detector is deployed to reduce false alarms. A mathematical model SIR is integrated with machine learning techniques for better classification. Implementation of RNN with Long Short Term Memory (LSTM) model furnishes better prediction holding the previous history. Originality/value - The proposed research collected COVID -19 data using three types of sensors for temperature sensing and detecting the respiratory rate. After pre-processing, 300 instances are taken for experimental results considering the demographic features: Sex, Patient Age, Temperature, Finding and Clinical Trials. Classification is performed using SIR mode and finally predicted 188 confirmed cases using RNN with LSTM model.
机译:目的 - 目前和持续的冠状病毒(Covid-19)扰乱了世界各地的许多人类生活,似乎很难面临这种全球危机,因为感染通过物理接触传播。由于迄今为止没有可用的疫苗或医疗,唯一的解决方案是检测Covid-19案例,阻挡传输,分离感染和保护易感人群。在这种情况下,普遍计算变得必不可少,因为它是通过智能设备的环境中心和数据采集,为分析具有各种参数的疾病提供了更好的方法。设计/方法/方法 - 用于数据收集,展开红外温度计,HIKVISION的热选摄像机和声学设备。数据归档是通过主成分分析进行的。实施了易感,感染和恢复的数学模型(先生),用于分类Covid-19案例。颁布了具有长期短记忆的经常性神经网络(RNN)以预测Covid-19疾病。调查结果 - 机器学习模型在预测疾病方面非常有效。在拟议的研究工作中,除了智能设备的贡献之外,部署人工智能探测器以减少误报。 SIR与机器学习技术集成了数学模型,以获得更好的分类。具有长短期内存(LSTM)模型的RNN的实现提供了更好的预测,持有前一个历史。原创性/值 - 所提出的研究使用三种类型的传感器收集了Covid -19数据,用于温度传感和检测呼吸速率。预处理后,考虑人口统计特征:性,患者年龄,温度,发现和临床试验,采用300例实例进行实验结果。使用SIR模式执行分类,最后预测188使用RNN具有LSTM模型的确认案例。

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