4.6 Article

Development of an IoT Architecture Based on a Deep Neural Network against Cyber Attacks for Automated Guided Vehicles

期刊

SENSORS
卷 21, 期 24, 页码 -

出版社

MDPI
DOI: 10.3390/s21248467

关键词

automated guided vehicle; deep learning; Industry 4; 0; IoT; online monitoring; cybersecurity

资金

  1. Ministry of Science and Technology (MOST) of Taiwan [MOST 110-2222-E-011-013, MOST 110-2222-E-011-002]
  2. Center for Cyber-Physical System Innovation
  3. Ministry of Education (MOE) in Taiwan

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This paper introduces an integrated IoT architecture based on a developed deep neural network (DNN) to handle cyber attacks and provide reliable and secure online monitoring for AGVs. The proposed architecture shows significantly higher accuracy in detecting AGV status compared to traditional schemes.
This paper introduces an integrated IoT architecture to handle the problem of cyber attacks based on a developed deep neural network (DNN) with a rectified linear unit in order to provide reliable and secure online monitoring for automated guided vehicles (AGVs). The developed IoT architecture based on a DNN introduces a new approach for the online monitoring of AGVs against cyber attacks with a cheap and easy implementation instead of the traditional cyber attack detection schemes in the literature. The proposed DNN is trained based on experimental AGV data that represent the real state of the AGV and different types of cyber attacks including a random attack, ramp attack, pulse attack, and sinusoidal attack that is injected by the attacker into the internet network. The proposed DNN is compared with different deep learning and machine learning algorithms such as a one dimension convolutional neural network (1D-CNN), a supported vector machine model (SVM), random forest, extreme gradient boosting (XGBoost), and a decision tree for greater validation. Furthermore, the proposed IoT architecture based on a DNN can provide an effective detection for the AGV status with an excellent accuracy of 96.77% that is significantly greater than the accuracy based on the traditional schemes. The AGV status based on the proposed IoT architecture with a DNN is visualized by an advanced IoT platform named CONTACT Elements for IoT. Different test scenarios with a practical setup of an AGV with IoT are carried out to emphasize the performance of the suggested IoT architecture based on a DNN. The results approve the usefulness of the proposed IoT to provide effective cybersecurity for data visualization and tracking of the AGV status that enhances decision-making and improves industrial productivity.

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