TEMPERATURE SENSOR DATA QUALITY ASSESSMENT IN MANUFACTURING ENVIRONMENT USING HAMPEL FILTER AND QSD
Abstract
In the Industry 4.0 era, integrated temperature sensors in system production become source main data for taking decisions. However, the quality of the data produced often influenced by noise, missing values, and disturbing anomalies accuracy of analytical processes. Research This proposes a monitoring pipeline designed data quality For environment manufacturing based on the Internet of Things (IoT), with focus on usage Hampel Filter and Quality Score Delta (QSD) methods. Hampel Filter is used for detecting and handling outliers in temperature data in a way adaptive, while QSD is used for measure dynamics change data quality from time to time. Architecture system built with using Apache Kafka for data ingestion, InfluxDB For time-series storage, and Grafana for real-time visualization. Case study performed on temperature sensor data from the conveyor motor, and the results show that method. This capable detect degradation data quality in general proactive. Findings show potential big in increase reliability industrial monitoring system as well as support maintenance predictive data- based. Research This give contribution significant in developing modular and adaptive approach for management data quality in the manufacturing sector.
Full Text:
PDFReferences
Alabduljabbar, A. and Alshammari, A., 2024. The Effect of Data Quality on Decision-Making . A Quasi Experimental Study. , 3, pp.1552–1566.
Barroso, P., Miguel, B., Bernardo, V. and Henrique, S., 2024. Journal of Innovation. , 9.
Berendrecht, W., Vliet, M. Van and Griffioen, J., 2023. Combining statistical methods for detecting potential outliers in groundwater quality time series. Environmental Monitoring and Assessment. Available at: https://doi.org/10.1007/s10661-022-10661-0.
Bezerra, A., Júnior, B. and Sérgio, P., 2014. An Approach to Outlier Detection and Smoothing Applied to a Trajectography Radar Data. , 6, pp.237–248.
DOI: http://dx.doi.org/10.26798/jiss.v4i1.2003
Article Metrics
Abstract view : 4 timesPDF - 0 times
Refbacks
- There are currently no refbacks.
Copyright (c) 2025 Bambang P.D.P., Widyastuti Andriyani, Widyastuti Andriyani, Widyastuti Andriyani, Akhmad Dahlan, Akhmad Dahlan, Akhmad Dahlan
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
- https://jurnal.narotama.ac.id/
- https://www.spb.gba.gov.ar/campus/
- https://revistas.unsaac.edu.pe/
- https://proceeding.unmuhjember.ac.id/
- https://ejournal.uki.ac.id/
- https://random.polindra.ac.id/
- https://scholar.ummetro.ac.id/
- https://ejournal.uika-bogor.ac.id/
- https://www.iejee.com/
- https://e-journal.iainptk.ac.id/
- https://journal.stitpemalang.ac.id/
- https://revistas.unimagdalena.edu.co/
- https://catalogue.cc-trieves.fr/
- https://revistas.tec.ac.cr/
- https://jurnal.poltekapp.ac.id/
- https://ojs.ucp.edu.ar/
- https://ihcway.sakura.ne.jp/
- http://www.apps.buap.mx/
- http://media-ojs.vls.icm.edu.pl/
- https://saber.unioeste.br/
- https://cinnda.org/
- https://jurnal.untidar.ac.id/
- https://ojs.adzkia.ac.id/
- https://supp.journalrmc.com/
- https://journal.thamrin.ac.id/
- https://ejurnal.unima.ac.id/
- https://journal.umpalopo.ac.id/
- https://ejournal.upnvj.ac.id/
- https://journal.ittelkom-pwt.ac.id/
- https://ojs.unpatompo.ac.id/
- https://jurnal.staim-probolinggo.ac.id/
- https://jurnal.ppi.ac.id/
- https://revistas.urp.edu.pe/