• Title of article

    Dynamic fuzzy c-means (dFCM) clustering and its application to calorimetric data reconstruction in high-energy physics

  • Author/Authors

    Sandhir، نويسنده , , Radha Pyari and Muhuri، نويسنده , , Sanjib and Nayak، نويسنده , , Tapan K.، نويسنده ,

  • Pages
    10
  • From page
    34
  • To page
    43
  • Abstract
    In high-energy physics experiments, calorimetric data reconstruction requires a suitable clustering technique in order to obtain accurate information about the shower characteristics such as the position of the shower and energy deposition. Fuzzy clustering techniques have high potential in this regard, as they assign data points to more than one cluster, thereby acting as a tool to distinguish between overlapping clusters. Fuzzy c-means (FCM) is one such clustering technique that can be applied to calorimetric data reconstruction. However, it has a drawback: it cannot easily identify and distinguish clusters that are not uniformly spread. A version of the FCM algorithm called dynamic fuzzy c-means (dFCM) allows clusters to be generated and eliminated as required, with the ability to resolve non-uniformly distributed clusters. Both the FCM and dFCM algorithms have been studied and successfully applied to simulated data of a sampling tungsten–silicon calorimeter. It is seen that the FCM technique works reasonably well, and at the same time, the use of the dFCM technique improves the performance.
  • Keywords
    Clustering , Fuzzy Logic , Soft Computing , FCM , Sampling calorimeter
  • Journal title
    Astroparticle Physics
  • Record number

    2019454