Smart Spectrometer for Distributed Fuzzy Control

Conference object, Preprint English OPEN
Benoit, Eric ; Foulloy, Laurent (2009)
  • Publisher: HAL CCSD
  • Subject: fuzzy control | Physics - Instrumentation and Detectors | colour measurement | intelligent sensor | spectrometer | [ PHYS.PHYS.PHYS-INS-DET ] Physics [physics]/Physics [physics]/Instrumentation and Detectors [physics.ins-det] | [ INFO.INFO-ES ] Computer Science [cs]/Embedded Systems

Document rédigé sous FrameMaker (pas sous Latex); International audience; If the main use of colour measurement is the metrology, it is now possible to find industrial control applications which uses this information. Using colour in process control leads to specific problems where human perception has to be replaced by colour sensors. This paper relies on the fuzzy representation of colours that can be taken into account by fuzzy controllers. If smart sensors already include intelligent functionalities like signal processing, or configuration, only few of them include functionalities to elaborate the fuzzy representation of measurements. In this paper, we develop a solution where the numeric processing is performed locally by the sensor, and where fuzzy processing is exported towards another computing resource by means of the CAN network. This paper presents the concept and the application to a smart fuzzy spectrometer.
  • References (7)

    [1] Benoit, E., Mauris, G. and Foulloy, L., “A fuzzy colour sensor”, Proc. of the XIII IMEKO world congress, Torino, Italy, sep. 1994, pp. 1015--1020.

    [2] Benoit, E. and Foulloy, L. “Symbolic sensors”, Proc. Int. Symp. on Artificial Intelligence Based Measurement and Control (AIMaC'91), Kyoto, Japan, Sep. 1991,pp. 131--136.

    [3] Benoit, L., Chotin, E. and Foulloy, L., “Processorless Smart Sensors with Distributed Intelligence”, Proc. of the 14th IMEKO World Congress, vol. V, Tampere, Finland, June 1997, pp. 60--65.

    [4] International Commission on Illumination, “Colorimetry”, 2th Edition, Publication CIE No 15.2, 1986.

    [5] Zadeh L.A., Quantitative fuzzy semantics; Information Sciences, Vol. 3, 1971, pp. 159-176

    [6] Bloch G., Eugene C., Robert M., Humbert C., “Measurement Evolution: from Sensors to Information Producer”, Proc. of IMEKO TC1 TC7, pp 335-341, London, UK, September 8-10, 1993.

    [7] Josserand J.F., Mauris G., Benoit E. and Foulloy L., “Fuzzy components network for distributed systems”, Proc. of Int. Symp. on Intelligent Robotic, Grenoble, France, July 11-15 1994, pp. 94--101.

  • Metrics
    No metrics available
Share - Bookmark