Huo, Zhiqiang, Mukherjee, Mithun, Shu, Lei et al, Chen, Yuanfang and Zhou, Zhangbing
(2016)
Cloud-based data-intensive framework towards fault diagnosis in large-scale petrochemical plants.
In: Wireless Communications and Mobile Computing Conference (IWCMC), 2016 International, 5 - 9 September 2016, Paphos, Cyprus.
Cloud-based Data-intensive Framework towards Fault Diagnosis in Large-scale Petrochemical Plants.pdf | | ![[img]](http://eprints.lincoln.ac.uk/26412/1.hassmallThumbnailVersion/Cloud-based%20Data-intensive%20Framework%20towards%20Fault%20Diagnosis%20in%20Large-scale%20Petrochemical%20Plants.pdf) [Download] |
|
![[img]](http://eprints.lincoln.ac.uk/26412/1.hassmallThumbnailVersion/Cloud-based%20Data-intensive%20Framework%20towards%20Fault%20Diagnosis%20in%20Large-scale%20Petrochemical%20Plants.pdf)  Preview |
|
PDF
Cloud-based Data-intensive Framework towards Fault Diagnosis in Large-scale Petrochemical Plants.pdf
- Whole Document
498kB |
Item Type: | Conference or Workshop contribution (Presentation) |
---|
Item Status: | Live Archive |
---|
Abstract
Industrial Wireless Sensor Networks (IWSNs) are expected to offer promising monitoring solutions to meet the demands of monitoring applications for fault diagnosis in large-scale petrochemical plants, however, involves heterogeneity and Big Data problems due to large amounts of sensor data with high volume and velocity. Cloud Computing is an outstanding approach which provides a flexible platform to support the addressing of such heterogeneous and data-intensive problems with massive computing, storage, and data-based services. In this paper, we propose a Cloud-based Data-intensive Framework (CDF) for on-line equipment fault diagnosis system that facilitates the integration and processing of mass sensor data generated from Industrial Sensing Ecosystem (ISE). ISE enables data collection of interest with topic-specific industrial monitoring systems. Moreover, this approach contributes the establishment of on-line fault diagnosis monitoring system with sensor streaming computing and storage paradigms based on Hadoop as a key to the complex problems. Finally, we present a practical illustration referred to this framework serving equipment fault diagnosis systems with the ISE.
Repository Staff Only: item control page