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Privacy-Preserving Distributed Analytics in Fog-Enabled IoT Systems

Liang Zhao

2020Sensors15 citationsDOIOpen Access PDF

Abstract

The Internet of Things (IoT) has evolved significantly with advances in gathering data that can be extracted to provide knowledge and facilitate decision-making processes. Currently, IoT data analytics encountered challenges such as growing data volumes collected by IoT devices and fast response requirements for time-sensitive applications in which traditional Cloud-based solution is unable to meet due to bandwidth and high latency limitations. In this paper, we develop a distributed analytics framework for fog-enabled IoT systems aiming to avoid raw data movement and reduce latency. The distributed framework leverages the computational capacities of all the participants such as edge devices and fog nodes and allows them to obtain the global optimal solution locally. To further enhance the privacy of data holders in the system, a privacy-preserving protocol is proposed using cryptographic schemes. Security analysis was conducted and it verified that exact private information about any edge device's raw data would not be inferred by an honest-but-curious neighbor in the proposed secure protocol. In addition, the accuracy of solution is unaffected in the secure protocol comparing to the proposed distributed algorithm without encryption. We further conducted experiments on three case studies: seismic imaging, diabetes progression prediction, and Enron email classification. On seismic imaging problem, the proposed algorithm can be up to one order of magnitude faster than the benchmarks in reaching the optimal solution. The evaluation results validate the effectiveness of the proposed methodology and demonstrate its potential to be a promising solution for data analytics in fog-enabled IoT systems.

Topics & Concepts

Computer scienceCloud computingAnalyticsProtocol (science)EncryptionEdge computingEnhanced Data Rates for GSM EvolutionData analysisInformation privacyRaw dataDistributed computingCryptographic protocolDifferential privacyInternet of ThingsCryptographyData miningComputer securityArtificial intelligenceProgramming languageOperating systemAlternative medicinePathologyMedicineIoT and Edge/Fog ComputingPrivacy-Preserving Technologies in DataSecurity in Wireless Sensor Networks
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