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A new architecture of Internet of Things and big data ecosystem for secured smart healthcare monitoring and alerting system

机译:物联网和大数据生态系统的新架构,可确保安全的智能医疗监控和警报系统

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摘要

Wearable medical devices with sensor continuously generate enormous data which is often called as big data mixed with structured and unstructured data. Due to the complexity of the data, it is difficult to process and analyze the big data for finding valuable information that can be useful in decision-making. On the other hand, data security is a key requirement in healthcare big data system. In order to overcome this issue, this paper proposes a new architecture for the implementation of IoT to store and process scalable sensor data (big data) for health care applications. The Proposed architecture consists of two main sub architectures, namely, Meta Fog-Redirection (MF-R) and Grouping and Choosing (GC) architecture. MF-R architecture uses big data technologies such as Apache Pig and Apache HBase for collection and storage of the sensor data (big data) generated from different sensor devices. The proposed GC architecture is used for securing integration of fog computing with cloud computing. This architecture also uses key management service and data categorization function (Sensitive, Critical and Normal) for providing security services. The framework also uses MapReduce based prediction model to predict the heart diseases. Performance evaluation parameters such as throughput, sensitivity, accuracy, and f-measure are calculated to prove the efficiency of the proposed architecture as well as the prediction model.
机译:带有传感器的可穿戴医疗设备会连续生成大量数据,这些数据通常被称为大数据与结构化和非结构化数据的混合。由于数据的复杂性,难以处理和分析大数据以查找可用于决策的有价值的信息。另一方面,数据安全性是医疗大数据系统的关键要求。为了克服这个问题,本文提出了一种新的架构,用于实施IoT,以存储和处理用于医疗保健应用程序的可伸缩传感器数据(大数据)。提议的体系结构由两个主要的子体系结构组成,即,元雾重定向(MF-R)和分组和选择(GC)体系结构。 MF-R体系结构使用诸如Apache Pig和Apache HBase之类的大数据技术来收集和存储从不同传感器设备生成的传感器数据(大数据)。提出的GC体系结构用于确保雾计算与云计算的集成。该体系结构还使用密钥管理服务和数据分类功能(敏感,关键和正常)来提供安全服务。该框架还使用基于MapReduce的预测模型来预测心脏病。计算性能评估参数,例如吞吐量,灵敏度,准确性和f-measure,以证明所提出架构的效率以及预测模型。

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