» Articles » PMID: 26633418

Abnormal Condition Monitoring of Workpieces Based on RFID for Wisdom Manufacturing Workshops

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2015 Dec 4
PMID 26633418
Citations 3
Authors
Affiliations
Soon will be listed here.
Abstract

Radio Frequency Identification (RFID) technology has been widely used in many fields. However, previous studies have mainly focused on product life cycle tracking, and there are few studies on real-time status monitoring of workpieces in manufacturing workshops. In this paper, a wisdom manufacturing model is introduced, a sensing-aware environment for a wisdom manufacturing workshop is constructed, and RFID event models are defined. A synthetic data cleaning method is applied to clean the raw RFID data. The Complex Event Processing (CEP) technology is adopted to monitor abnormal conditions of workpieces in real time. The RFID data cleaning method and data mining technology are examined by simulation and physical experiments. The results show that the synthetic data cleaning method preprocesses data well. The CEP based on the Rifidi(®) Edge Server technology completed abnormal condition monitoring of workpieces in real time. This paper reveals the importance of RFID spatial and temporal data analysis in real-time status monitoring of workpieces in wisdom manufacturing workshops.

Citing Articles

Fabrication and application of a wireless high-definition endoscopic system in urological surgeries.

Niu D, Xu Q, Xu H, Yin S, Hao Z, Shi H BJU Int. 2022; 131(2):183-189.

PMID: 35199469 PMC: 10078773. DOI: 10.1111/bju.15718.


Proactive Scheduling for Job-Shop Based on Abnormal Event Monitoring of Workpieces and Remaining Useful Life Prediction of Tools in Wisdom Manufacturing Workshop.

Zhang C, Yao X, Tan W, Zhang Y, Zhang F Sensors (Basel). 2019; 19(23).

PMID: 31795368 PMC: 6929205. DOI: 10.3390/s19235254.


Tool Condition Monitoring and Remaining Useful Life Prognostic Based on a Wireless Sensor in Dry Milling Operations.

Zhang C, Yao X, Zhang J, Jin H Sensors (Basel). 2016; 16(6).

PMID: 27258277 PMC: 4934221. DOI: 10.3390/s16060795.

References
1.
Kim J, Inoue K, Ishii J, Vanti W, Voronov S, Murchison E . A MicroRNA feedback circuit in midbrain dopamine neurons. Science. 2007; 317(5842):1220-4. PMC: 2782470. DOI: 10.1126/science.1140481. View

2.
Liu X, Shannon J, Voun H, Truijens M, Chi H, Wang X . Spatial and temporal analysis on the distribution of active radio-frequency identification (RFID) tracking accuracy with the Kriging method. Sensors (Basel). 2014; 14(11):20451-67. PMC: 4279493. DOI: 10.3390/s141120451. View

3.
Fan H, Wu Q, Lin Y . Behavior-based cleaning for unreliable RFID data sets. Sensors (Basel). 2012; 12(8):10196-207. PMC: 3472823. DOI: 10.3390/s120810196. View

4.
Badia-Melis R, Ruiz-Garcia L, Garcia-Hierro J, Villalba J . Refrigerated fruit storage monitoring combining two different wireless sensing technologies: RFID and WSN. Sensors (Basel). 2015; 15(3):4781-95. PMC: 4435195. DOI: 10.3390/s150304781. View

5.
Massawe L, Kinyua J, Vermaak H . Reducing false negative reads in RFID data streams using an adaptive sliding-window approach. Sensors (Basel). 2012; 12(4):4187-212. PMC: 3355407. DOI: 10.3390/s120404187. View