Fog Data: Enhancing Telehealth Big Data Through Fog Computing
Harishchandra Dubey, Jing Yang, Nick Constant, Amir Mohammad Amiri,, Qing Yang, Kunal Makodiya

TL;DR
This paper introduces Fog Data, a fog computing architecture that performs data mining and analytics at edge devices for telehealth sensors, significantly reducing data transmission and improving system efficiency.
Contribution
It presents a novel service-oriented fog computing architecture with embedded data analytics for telehealth, validated through prototype case studies.
Findings
Substantial data reduction achieved
Significant transmission power savings
Improved system efficiency demonstrated
Abstract
The size of multi-modal, heterogeneous data collected through various sensors is growing exponentially. It demands intelligent data reduction, data mining and analytics at edge devices. Data compression can reduce the network bandwidth and transmission power consumed by edge devices. This paper proposes, validates and evaluates Fog Data, a service-oriented architecture for Fog computing. The center piece of the proposed architecture is a low power embedded computer that carries out data mining and data analytics on raw data collected from various wearable sensors used for telehealth applications. The embedded computer collects the sensed data as time series, analyzes it, and finds similar patterns present. Patterns are stored, and unique patterns are transmited. Also, the embedded computer extracts clinically relevant information that is sent to the cloud. A working prototype of the…
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