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基于物联网的区块链网络与机器学习算法集成的安全健身框架。

Towards Secure Fitness Framework Based on IoT-Enabled Blockchain Network Integrated with Machine Learning Algorithms.

机构信息

Department of Computer Engineering, Jeju National University, Jejusi 63243, Korea.

Department of Electrical and Information Engineering, Korea University, Sejong 30019, Korea.

出版信息

Sensors (Basel). 2021 Feb 26;21(5):1640. doi: 10.3390/s21051640.

Abstract

Blockchain technology has recently inspired remarkable attention due to its unique features, such as privacy, accountability, immutability, and anonymity, to name of the few. In contrast, core functionalities of most Internet of Things (IoT) resources make them vulnerable to security threats. The IoT devices, such as smartphones and tablets, have limited capacity in terms of network, computing, and storage, which make them easier for vulnerable threats. Furthermore, a massive amount of data produced by the IoT devices, which is still an open challenge for the existing platforms to process, analyze, and unearth underlying patterns to provide convenience environment. Therefore, a new solution is required to ensure data accountability, improve data privacy and accessibility, and extract hidden patterns and useful knowledge to provide adequate services. In this paper, we present a secure fitness framework that is based on an IoT-enabled blockchain network integrated with machine learning approaches. The proposed framework consists of two modules: a blockchain-based IoT network to provide security and integrity to sensing data as well as an enhanced smart contract enabled relationship and inference engine to discover hidden insights and useful knowledge from IoT and user device network data. The enhanced smart contract aims to support users with a practical application that provides real-time monitoring, control, easy access, and immutable logs of multiple devices that are deployed in several domains. The inference engine module aims to unearth underlying patterns and useful knowledge from IoT environment data, which helps in effective decision making to provide convenient services. For experimental analysis, we implement an intelligent fitness service that is based on an enhanced smart contract enabled relationship and inference engine as a case study where several IoT fitness devices are used to securely acquire user personalized fitness data. Furthermore, a real-time inference engine investigates user personalized data to discover useful knowledge and hidden insights. Based on inference engine knowledge, a recommendation model is developed to recommend a daily and monthly diet, as well as a workout plan for better and improved body shape. The recommendation model aims to facilitate a trainer formulating effective future decisions of trainee's health in terms of a diet and workout plan. Lastly, for performance analysis, we have used Hyperledger Caliper to access the system performance in terms of latency, throughput, resource utilization, and varying orderer and peers nodes. The analysis results imply that the design architecture is applicable for resource-constrained IoT blockchain platform and it is extensible for different IoT scenarios.

摘要

区块链技术因其独特的特性,如隐私、问责制、不变性和匿名性等,引起了广泛关注。相比之下,大多数物联网 (IoT) 资源的核心功能使其容易受到安全威胁。物联网设备,如智能手机和平板电脑,在网络、计算和存储方面的能力有限,这使它们更容易受到脆弱的威胁。此外,物联网设备产生的大量数据仍然是现有平台处理、分析和挖掘潜在模式以提供便利环境的一个开放挑战。因此,需要一种新的解决方案来确保数据问责制、提高数据隐私性和可访问性,并提取隐藏模式和有用知识,以提供充足的服务。在本文中,我们提出了一个基于物联网的区块链网络与机器学习方法相结合的安全健身框架。该框架由两个模块组成:基于区块链的物联网网络,为传感数据提供安全性和完整性;增强的智能合约,用于发现物联网和用户设备网络数据中的隐藏洞察和有用知识。增强的智能合约旨在为用户提供一个实际应用程序,该程序提供对多个部署在多个领域的设备的实时监控、控制、轻松访问和不可变日志。推理引擎模块旨在从物联网环境数据中挖掘潜在模式和有用知识,以帮助做出有效的决策,提供便利的服务。为了进行实验分析,我们实现了一个基于增强的智能合约的智能健身服务,该服务基于推理引擎作为案例研究,使用多个物联网健身设备安全地获取用户个性化健身数据。此外,实时推理引擎调查用户个性化数据,以发现有用知识和隐藏洞察。基于推理引擎的知识,开发了一个推荐模型,以推荐日常和每月的饮食以及锻炼计划,以改善和改善身体形态。该推荐模型旨在为教练制定有关饮食和锻炼计划的学员健康的有效未来决策提供便利。最后,为了进行性能分析,我们使用 Hyperledger Caliper 来评估系统在延迟、吞吐量、资源利用率以及不同的排序器和对等节点方面的性能。分析结果表明,该设计架构适用于资源受限的物联网区块链平台,并且可扩展到不同的物联网场景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c48a/7956740/ff90ecd28c16/sensors-21-01640-g001.jpg

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