A Proactive Data Service Model to Encapsulating Stream Sensor Data into Service

Abnormality Detection in power plant is a typical IoT application which aims to identify anomalies in these routinely collected monitoring sensor data; intend to help detect possible faults in the equipment. However, on the development of abnormality detection, we find that there are three challenges. The first one is the lack of cooperation between sensors. It means that the physical sensors cannot share and interact with each other. Secondly, the rapid increase in volume of sensor data and dynamic situation of production result in challenges to predefine all possible associations between sensors. Thirdly, it is difficult to build IoT application for developers who have little or no professional knowledge about production process. In this paper, we proposed a proactive data service model to encapsulate stream sensor data into services. We spread events among the proactive data services. By analysis of event correlations, we have realized service hyperlinks which help to offer the proactive real-time interaction with services. Real application and experiments verified that our proactive data service based method is more effective compare with traditional rule-based methods to detect abnormalities in power plant.

[1]  Vlad Trifa,et al.  Interacting with the SOA-Based Internet of Things: Discovery, Query, Selection, and On-Demand Provisioning of Web Services , 2010, IEEE Transactions on Services Computing.

[2]  Chi Harold Liu,et al.  Energy-Efficient Location and Activity-Aware On-Demand Mobile Distributed Sensing Platform for Sensing as a Service in IoT Clouds , 2015, IEEE Transactions on Computational Social Systems.

[3]  Alessandro Bassi,et al.  From today's INTRAnet of things to a future INTERnet of things: a wireless- and mobility-related view , 2010, IEEE Wireless Communications.

[4]  Jian Yu,et al.  A Service-Based Approach to Traffic Sensor Data Integration and Analysis to Support Community-Wide Green Commute in China , 2016, IEEE Transactions on Intelligent Transportation Systems.

[5]  Shen Su,et al.  A decentralized and service-based approach to proactively correlating stream data , 2016, IoT 2016.

[6]  Jenq-Shiou Leu,et al.  Improving Heterogeneous SOA-Based IoT Message Stability by Shortest Processing Time Scheduling , 2014, IEEE Transactions on Services Computing.

[7]  Le Yu,et al.  An Event-Driven Service Provisioning Mechanism for IoT (Internet of Things) System Interaction , 2016, IEEE Access.

[8]  Hongming Cai,et al.  Ubiquitous Data Accessing Method in IoT-Based Information System for Emergency Medical Services , 2014, IEEE Transactions on Industrial Informatics.

[9]  Matjaz B. Juric,et al.  Towards Complex Event Aware Services as Part of SOA , 2014, IEEE Transactions on Services Computing.

[10]  Antonio Bucchiarone,et al.  Design for Adaptation of Distributed Service-Based Systems , 2015, ICSOC.

[11]  Florian Michahelles,et al.  An Architectural Approach Towards the Future Internet of Things , 2011, Architecting the Internet of Things.

[12]  Bo Cheng,et al.  Situation-Aware IoT Service Coordination Using the Event-Driven SOA Paradigm , 2016, IEEE Transactions on Network and Service Management.

[13]  Chen Lin,et al.  COSS: Content-Based Subscription as an IoT Service , 2015, 2015 IEEE International Conference on Web Services.

[14]  Li Duan,et al.  Event-Driven SOA for IoT Services , 2014, 2014 IEEE International Conference on Services Computing.

[15]  Xin Li,et al.  Method of Web Services Composition Based on Events: Method of Web Services Composition Based on Events , 2009 .