Open Access Journal

ISSN : 2394-2320 (Online)

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

Open Access Journal

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

ISSN : 2394-2320 (Online)

A Study on Mining Applications in Uncertain RFID Data

Author : N.Bala Vignesh 1 Dr. V. Joseph Peter 2

Date of Publication :27th April 2018

Abstract: RFID technology is an emerging technology uses radio frequency waves to transfer data between readers and tagged objects, and provides fast data collection with precise identification of objects with unique identifications without line-of-sight. RFID technology consists of data gathering, distribution, and management systems that have an ability to identify or scan information with increased speed and accuracy. RFID technology can be used for locating, tracking and monitoring physical objects. Sensors in RFID devices are intrinsically sensitive to environmental factors. The signal from sensors suffers from high uncertainties due to the nature of signal fluctuation in real-world conditions. The uncertainties that exist in RFID data complicate tasks of determining objects positions and containment relationships. This technology has significant advantages, RFID has been widely used for access control, objects tracking, smart box, highway tolls, logistics and supply chain, security and healthcare, etc. In particular, RFID has been adopted and deployed to collect various types of data in the manufacturing field. In this paper we focus on study of data mining applications of uncertain RFID data

Reference :

    1.  Akshay Athalye, Vladimir Savi´c, Miodrag Boli´c, and Petar M. Djuri´c, “Novel Semi-Passive RFID System for Indoor Localization,” IEEE Sensors Journal, vol. 13, no. 2, pp. 528-537, February 2013
    2. Tsan-Ming Choi, ” Coordination and Risk Analysis of VMI Supply Chains with RFID Technology,” IEEE Transactions On Industrial Informatics, vol. 7, no. 3, pp. 497-504, August 2011.
    3. Zheng Gao, Yongtao Ma, Kaihua Liu, Xinlong Miao, and Yang Zhao, “An Indoor Multi-Tag Cooperative Localization Algorithm Based on NMDS for RFID,” IEEE Sensors Journal, vol. 17, no. 7, pp. 2120-2128, April 2017.
    4. Tsan-Ming Choi, Wing-Kwan Yeung, T. C. Edwin Cheng, and Xiaohang Yue, “Optimal Scheduling, Coordination, and the Value of RFID Technology in Garment Manufacturing Supply Chains,” IEEE Transactions On Engineering Management, 2017.
    5. Jiawei Han, Hector Gonzalez, Xiaolei Li, and Diego Klabjan, “Warehousing and Mining Massive RFID Data Sets,” Springer-Verlag Berlin Heidelberg, pp. 1–18, 2006.
    6. Alp Ülkü, “The Next Generation in Personnel/People Tracking Active RFID technology has allowed for enhanced security and safety,” IEEE Consumer Electronics Magazine, October 2017.pp. 122-
    7. Henning Baars, Hans-Georg Kemper, Heiner Lasi, Marc Siegel, “Combining RFID Technology and Business Intelligence for Supply Chain Optimization – Scenarios for Retail Logistics,” IEEE International Conference on System Sciences, 2008.

Recent Article