Monitoring the performance of conveyor system using radio frequency identification in manufacturing environment: a recurrent neural network and genetic algorithm-based approach

Singh, Vaibhav ; Sarwar, Faizan ; Chan, F.T.S. ; Tiwari, M.K. (2012) Monitoring the performance of conveyor system using radio frequency identification in manufacturing environment: a recurrent neural network and genetic algorithm-based approach International Journal of Computer Integrated Manufacturing, 25 (7). pp. 551-564. ISSN 0951-192X

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Official URL: https://doi.org/10.1080/0951192X.2011.646309

Related URL: http://dx.doi.org/10.1080/0951192X.2011.646309

Abstract

A number of new approaches to address the identification issues have been proposed recently, but due to the highly integrated nature of passive radio frequency identification (RFID) tags, it is difficult to evaluate them in real-world scenarios. A recurrent neural network-based hybrid approach with training through genetic algorithm has been proposed to model the performance of the RFID system with received power at the reader in the radio propagation channel as the implementable performance index. Target system is a conveyor system delivering multiple products. A method to deploy RFID technology has been developed and illustrated for smoothening flow on a conveyor. Although various analytical models have been proposed earlier, they fail to accurately predict the performance of RFID system. Proposed method incorporates various factors presented in the industrial environment, while only a few are considered in the analytical model. Such an integrated approach is a genuine extension of a previous model where only neural network model was tested to embrace the system's performance. A comparative study has been carried out to establish the better performance of proposed approach. The model proposed may be helpful to aid in the research area of simulation of RFIDs on computer for reflecting numerous factors in modelling for RFID system performance without sacrificing predictability.

Item Type:Article
Source:Copyright of this article belongs to Informa UK Limited.
Keywords:RFId; Genetic Algorithm; Conveyor Systems; Supply Chain Management; Simulation; Neural Network
ID Code:139928
Deposited On:11 Sep 2025 12:32
Last Modified:11 Sep 2025 12:32

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