An IoT Time Series Data Security Model for Adversarial Attack Based on Thermometer Encoding

Nowadays, an Internet of Things (IoT) device consists of algorithms, datasets, and models. Due to good performance of deep learning methods, many devices integrated well-trained models in them. IoT empowers users to communicate and control physical devices to achieve vital information. However, thes...

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Main Authors: Zhongguo Yang, Irshad Ahmed Abbasi, Fahad Algarni, Sikandar Ali, Mingzhu Zhang
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Security and Communication Networks
Online Access:http://dx.doi.org/10.1155/2021/5537041
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spelling doaj-9e179047032447aa87779dbcb6d5551c2021-03-22T00:04:07ZengHindawi-WileySecurity and Communication Networks1939-01222021-01-01202110.1155/2021/5537041An IoT Time Series Data Security Model for Adversarial Attack Based on Thermometer EncodingZhongguo Yang0Irshad Ahmed Abbasi1Fahad Algarni2Sikandar Ali3Mingzhu Zhang4School of Information Science and TechnologyDepartment of Computer ScienceCollege of Computing and Information TechnologyDepartment of Computer Science & TechnologySchool of Information Science and TechnologyNowadays, an Internet of Things (IoT) device consists of algorithms, datasets, and models. Due to good performance of deep learning methods, many devices integrated well-trained models in them. IoT empowers users to communicate and control physical devices to achieve vital information. However, these models are vulnerable to adversarial attacks, which largely bring potential risks to the normal application of deep learning methods. For instance, very little changes even one point in the IoT time-series data could lead to unreliable or wrong decisions. Moreover, these changes could be deliberately generated by following an adversarial attack strategy. We propose a robust IoT data classification model based on an encode-decode joint training model. Furthermore, thermometer encoding is taken as a nonlinear transformation to the original training examples that are used to reconstruct original time series examples through the encode-decode model. The trained ResNet model based on reconstruction examples is more robust to the adversarial attack. Experiments show that the trained model can successfully resist to fast gradient sign method attack to some extent and improve the security of the time series data classification model.http://dx.doi.org/10.1155/2021/5537041
collection DOAJ
language English
format Article
sources DOAJ
author Zhongguo Yang
Irshad Ahmed Abbasi
Fahad Algarni
Sikandar Ali
Mingzhu Zhang
spellingShingle Zhongguo Yang
Irshad Ahmed Abbasi
Fahad Algarni
Sikandar Ali
Mingzhu Zhang
An IoT Time Series Data Security Model for Adversarial Attack Based on Thermometer Encoding
Security and Communication Networks
author_facet Zhongguo Yang
Irshad Ahmed Abbasi
Fahad Algarni
Sikandar Ali
Mingzhu Zhang
author_sort Zhongguo Yang
title An IoT Time Series Data Security Model for Adversarial Attack Based on Thermometer Encoding
title_short An IoT Time Series Data Security Model for Adversarial Attack Based on Thermometer Encoding
title_full An IoT Time Series Data Security Model for Adversarial Attack Based on Thermometer Encoding
title_fullStr An IoT Time Series Data Security Model for Adversarial Attack Based on Thermometer Encoding
title_full_unstemmed An IoT Time Series Data Security Model for Adversarial Attack Based on Thermometer Encoding
title_sort iot time series data security model for adversarial attack based on thermometer encoding
publisher Hindawi-Wiley
series Security and Communication Networks
issn 1939-0122
publishDate 2021-01-01
description Nowadays, an Internet of Things (IoT) device consists of algorithms, datasets, and models. Due to good performance of deep learning methods, many devices integrated well-trained models in them. IoT empowers users to communicate and control physical devices to achieve vital information. However, these models are vulnerable to adversarial attacks, which largely bring potential risks to the normal application of deep learning methods. For instance, very little changes even one point in the IoT time-series data could lead to unreliable or wrong decisions. Moreover, these changes could be deliberately generated by following an adversarial attack strategy. We propose a robust IoT data classification model based on an encode-decode joint training model. Furthermore, thermometer encoding is taken as a nonlinear transformation to the original training examples that are used to reconstruct original time series examples through the encode-decode model. The trained ResNet model based on reconstruction examples is more robust to the adversarial attack. Experiments show that the trained model can successfully resist to fast gradient sign method attack to some extent and improve the security of the time series data classification model.
url http://dx.doi.org/10.1155/2021/5537041
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