Attack detection model based on stacking ensemble learning for Internet of vehicles

Due to openness of wireless communication, Internet of vehicles (IoV) is vulnerable to many cyber-attacks such as denial of service, spoofing and fuzzy attacks. Therefore, random forest (RF) and gradient boosting decision tree-based stacking intrusion detection (RF-IDS) model was proposed. Firstly,...

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Main Authors: XU Huibin, FANG Long, ZHANG Sha
Format: Article
Language:zho
Published: Beijing Xintong Media Co., Ltd 2024-12-01
Series:Dianxin kexue
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Online Access:http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2024257/
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author XU Huibin
FANG Long
ZHANG Sha
author_facet XU Huibin
FANG Long
ZHANG Sha
author_sort XU Huibin
collection DOAJ
description Due to openness of wireless communication, Internet of vehicles (IoV) is vulnerable to many cyber-attacks such as denial of service, spoofing and fuzzy attacks. Therefore, random forest (RF) and gradient boosting decision tree-based stacking intrusion detection (RF-IDS) model was proposed. Firstly, the adaptive synthetic sampling (ADASYN) algorithm was adopted to generate more similar samples through the nearest neighbor sampling strategy in order to balance the training samples of different categories, and form a relatively symmetric dataset. Secondly, GBDT was used to evaluate the importance of features and select sample data with important features to build a lightweight classifier. Finally, the <italic>k</italic>-fold cross-validation stacking method was used to reduce the probability of overfitting. RF, GBDT and LightGBM classifiers serve were used as base-learner. The RG-IDS model was tested by CICIDS 2017 and NSL-KDD datasets. The experimental results demonstrate that RG-IDS model can achieve a higher F1-score.
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institution Kabale University
issn 1000-0801
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publisher Beijing Xintong Media Co., Ltd
record_format Article
series Dianxin kexue
spelling doaj-art-6f2956333374409ba355234f1d264a642025-01-15T03:34:24ZzhoBeijing Xintong Media Co., LtdDianxin kexue1000-08012024-12-0140385079426328Attack detection model based on stacking ensemble learning for Internet of vehiclesXU HuibinFANG LongZHANG ShaDue to openness of wireless communication, Internet of vehicles (IoV) is vulnerable to many cyber-attacks such as denial of service, spoofing and fuzzy attacks. Therefore, random forest (RF) and gradient boosting decision tree-based stacking intrusion detection (RF-IDS) model was proposed. Firstly, the adaptive synthetic sampling (ADASYN) algorithm was adopted to generate more similar samples through the nearest neighbor sampling strategy in order to balance the training samples of different categories, and form a relatively symmetric dataset. Secondly, GBDT was used to evaluate the importance of features and select sample data with important features to build a lightweight classifier. Finally, the <italic>k</italic>-fold cross-validation stacking method was used to reduce the probability of overfitting. RF, GBDT and LightGBM classifiers serve were used as base-learner. The RG-IDS model was tested by CICIDS 2017 and NSL-KDD datasets. The experimental results demonstrate that RG-IDS model can achieve a higher F1-score.http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2024257/Internet of vehiclesintrusion detectionADASYNGBDTstacking
spellingShingle XU Huibin
FANG Long
ZHANG Sha
Attack detection model based on stacking ensemble learning for Internet of vehicles
Dianxin kexue
Internet of vehicles
intrusion detection
ADASYN
GBDT
stacking
title Attack detection model based on stacking ensemble learning for Internet of vehicles
title_full Attack detection model based on stacking ensemble learning for Internet of vehicles
title_fullStr Attack detection model based on stacking ensemble learning for Internet of vehicles
title_full_unstemmed Attack detection model based on stacking ensemble learning for Internet of vehicles
title_short Attack detection model based on stacking ensemble learning for Internet of vehicles
title_sort attack detection model based on stacking ensemble learning for internet of vehicles
topic Internet of vehicles
intrusion detection
ADASYN
GBDT
stacking
url http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2024257/
work_keys_str_mv AT xuhuibin attackdetectionmodelbasedonstackingensemblelearningforinternetofvehicles
AT fanglong attackdetectionmodelbasedonstackingensemblelearningforinternetofvehicles
AT zhangsha attackdetectionmodelbasedonstackingensemblelearningforinternetofvehicles