IIC Journal of Innovation 5th Edition | Page 46

A Knowledge Graph Driven Approach for Edge Analytics applications 1 . As IoT deployments become more numerous, scalable and easily maintainable, architectural solutions are paramount for meeting and sustaining the demand of large, expanding, and elastic device networks. intimate domain knowledge and site information details, namely: device expert, application expert and the field engineer. Collectively these engineers hold the domain knowledge required to start and fluidly maintain the network of edge devices at any given location. Current IoT deployments are extensions of the edge-to-cloud paradigm where control and analysis of signal data from edge devices is centralized with elastic compute in mind. While this methodology is the simplest in terms of initial deployment and scalable from a compute perspective, cloud management does not imply scalable maintainability with respect to a heterogeneous device environment with device types where there is a lack of protocol or implementation rigor. While vertically integrated solutions exist 2 3 that aid in this type of deployment, they require a complete migration of existing applications into the new ecosystem (e.g., hardware, OS, language, cloud tools, etc.). Additionally, the edge-to-cloud paradigm assumes stable, low latency and high bandwidth backhaul (uplink and downlink) connectivity. However, IoT deployments in remote locations may suffer from limited backhaul connectivity and thus render the timely processing and reaction to data impractical. As infrastructure communication is orchestrated and edge devices are brought online there is subtle knowledge of devices that must be documented to onboard new and similar devices. IoT applications are moving beyond simple sensor data storage and towards analytics applications where novel architectures are required to enable the horizontal scalability of device additions, reduce instantiation time, boot strap domain knowledge, enable system reuse and migrate compute and intelligence toward the edge. When moving from domain to domain, isolation of knowledge kept with the domain experts becomes a limiting factor of rapid deployment when working with a mature portfolio of edge framework configurations (varying hardware, varying device driver versions, language attributes, communication protocols, etc.). To avoid refactoring, increased man-hours and to promote rapid onboarding and enable knowledge retention, we developed a solution that ensures that the instantiation Additionally, knowledge of the edge networks relies on key personnel with 1 L. Columbus, "Internet Of Things Market To Reach $267B By 2020," Forbes, January 2017. [Online]. Available: http://www.forbes.com/sites/louiscolumbus/2017/01/29/internet-of-things-market-to-reach-267b-by-2020/#2343106e609b. 2 “GE Predix IoT Platform," 2017. [Online]. Available: https://www.ge.com/digital/predix 3 "Thingworkx IoT Platform," 2017. [Online]. Available: https://www.thingworx.com/ - 44 - September 2017