False Positive RFID Detection Using Classification Models
Radio frequency identification (RFID) is an automated identification technology that can be utilized to monitor product movements within a supply chain in real-time. However, one problem that occurs during RFID data capturing is false positives (i.e., tags that are accidentally detected by the reade...
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doaj-4a6cb003de934608a4cabd582e2c74af2020-11-24T23:31:33ZengMDPI AGApplied Sciences2076-34172019-03-0196115410.3390/app9061154app9061154False Positive RFID Detection Using Classification ModelsGanjar Alfian0Muhammad Syafrudin1Bohan Yoon2Jongtae Rhee3u-SCM Research Center, Nano Information Technology Academy, Dongguk University, Seoul 04626, KoreaDepartment of Industrial and Systems Engineering, Dongguk University, Seoul 04620, KoreaDepartment of Industrial and Systems Engineering, Dongguk University, Seoul 04620, KoreaDepartment of Industrial and Systems Engineering, Dongguk University, Seoul 04620, KoreaRadio frequency identification (RFID) is an automated identification technology that can be utilized to monitor product movements within a supply chain in real-time. However, one problem that occurs during RFID data capturing is false positives (i.e., tags that are accidentally detected by the reader but not of interest to the business process). This paper investigates using machine learning algorithms to filter false positives. Raw RFID data were collected based on various tagged product movements, and statistical features were extracted from the received signal strength derived from the raw RFID data. Abnormal RFID data or outliers may arise in real cases. Therefore, we utilized outlier detection models to remove outlier data. The experiment results showed that machine learning-based models successfully classified RFID readings with high accuracy, and integrating outlier detection with machine learning models improved classification accuracy. We demonstrated the proposed classification model could be applied to real-time monitoring, ensuring false positives were filtered and hence not stored in the database. The proposed model is expected to improve warehouse management systems by monitoring delivered products to other supply chain partners.http://www.mdpi.com/2076-3417/9/6/1154RFIDRSSmachine learningclassificationfalse positiveoutlier detection |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ganjar Alfian Muhammad Syafrudin Bohan Yoon Jongtae Rhee |
spellingShingle |
Ganjar Alfian Muhammad Syafrudin Bohan Yoon Jongtae Rhee False Positive RFID Detection Using Classification Models Applied Sciences RFID RSS machine learning classification false positive outlier detection |
author_facet |
Ganjar Alfian Muhammad Syafrudin Bohan Yoon Jongtae Rhee |
author_sort |
Ganjar Alfian |
title |
False Positive RFID Detection Using Classification Models |
title_short |
False Positive RFID Detection Using Classification Models |
title_full |
False Positive RFID Detection Using Classification Models |
title_fullStr |
False Positive RFID Detection Using Classification Models |
title_full_unstemmed |
False Positive RFID Detection Using Classification Models |
title_sort |
false positive rfid detection using classification models |
publisher |
MDPI AG |
series |
Applied Sciences |
issn |
2076-3417 |
publishDate |
2019-03-01 |
description |
Radio frequency identification (RFID) is an automated identification technology that can be utilized to monitor product movements within a supply chain in real-time. However, one problem that occurs during RFID data capturing is false positives (i.e., tags that are accidentally detected by the reader but not of interest to the business process). This paper investigates using machine learning algorithms to filter false positives. Raw RFID data were collected based on various tagged product movements, and statistical features were extracted from the received signal strength derived from the raw RFID data. Abnormal RFID data or outliers may arise in real cases. Therefore, we utilized outlier detection models to remove outlier data. The experiment results showed that machine learning-based models successfully classified RFID readings with high accuracy, and integrating outlier detection with machine learning models improved classification accuracy. We demonstrated the proposed classification model could be applied to real-time monitoring, ensuring false positives were filtered and hence not stored in the database. The proposed model is expected to improve warehouse management systems by monitoring delivered products to other supply chain partners. |
topic |
RFID RSS machine learning classification false positive outlier detection |
url |
http://www.mdpi.com/2076-3417/9/6/1154 |
work_keys_str_mv |
AT ganjaralfian falsepositiverfiddetectionusingclassificationmodels AT muhammadsyafrudin falsepositiverfiddetectionusingclassificationmodels AT bohanyoon falsepositiverfiddetectionusingclassificationmodels AT jongtaerhee falsepositiverfiddetectionusingclassificationmodels |
_version_ |
1725537487388934144 |