Design and deployment of industrial sensor networks: experiences from a semiconductor plant and the north sea

  • Authors:
  • Lakshman Krishnamurthy;Robert Adler;Phil Buonadonna;Jasmeet Chhabra;Mick Flanigan;Nandakishore Kushalnagar;Lama Nachman;Mark Yarvis

  • Affiliations:
  • Intel Corporation, Santa Clara, CA;Intel Corporation, Santa Clara, CA;Arched Rock, Berkeley, CA;Intel Corporation, Santa Clara, CA;Intel Corporation, Santa Clara, CA;Intel Corporation, Santa Clara, CA;Intel Corporation, Santa Clara, CA;Intel Corporation, Santa Clara, CA

  • Venue:
  • Proceedings of the 3rd international conference on Embedded networked sensor systems
  • Year:
  • 2005

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Abstract

Sensing technology is a cornerstone for many industrial applications. Manufacturing plants and engineering facilities, such as shipboard engine rooms, require sensors to ensure product quality and efficient and safe operation. We focus on one representative application, preventative equipment maintenance, in which vibration signatures are gathered to predict equipment failure. Based on application requirements and site surveys, we develop a general architecture for this class of industrial applications. This architecture meets the application's data fidelity needs through careful state preservation and over-sampling. We describe the impact of implementing the architecture on two sensing platforms with differing processor and communication capabilities. We present a systematic performance comparison between these platforms in the context of the application. We also describe our experience and lessons learned in two settings: in a semiconductor fabrication plant and onboard an oil tanker in the North Sea. Finally, we establish design guidelines for an ideal platform and architecture for industrial applications. This paper includes several unique contributions: a study of the impact of platform on architecture, a comparison of two deployments in the same application class, and a demonstration of application return on investment.