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Journal ArticleDOI

Reliable Deep Learning and IoT-Based Monitoring System for Secure Computer Numerical Control Machines Against Cyber-Attacks With Experimental Verification

TLDR
A new intelligent integration between an IoT platform and deep learning neural network (DNN) algorithm for the online monitoring of computer numerical control (CNC) machines is introduced, indicating that deep learning can outperform other traditional machine learning methods for vibration control.
Abstract
This paper introduces a new intelligent integration between an IoT platform and deep learning neural network (DNN) algorithm for the online monitoring of computer numerical control (CNC) machines. The proposed infrastructure is utilized for monitoring the cutting process while maintaining the cutting stability of CNC machines in order to ensure effective cutting processes that can help to increase the quality of products. For this purpose, a force sensor is installed in the milling CNC machine center to measure the vibration conditions. Accordingly, an IoT architecture is designed to connect the sensor node and the cloud server to capture the real-time machine’s status via message queue telemetry transport (MQTT) protocol. To classify the different cutting conditions (i.e., stable cutting and unstable cuttings), an improved model of DNN is designed in order to maintain the healthy state of the CNC machine. As a result, the developed deep learning can accurately investigate if the transmitted data of the smart sensor via the internet is real cutting data or fake data caused by cyber-attacks or the inefficient reading of the sensor due to the environment temperature, humidity, and noise signals. The outstanding results are obtained from the proposed approach indicating that deep learning can outperform other traditional machine learning methods for vibration control. The Contact elements for IoT are utilized to display the cutting information on a graphical dashboard and monitor the cutting process in real-time. Experimental verifications are performed to conduct different cutting conditions of slot milling while implementing the proposed deep machine learning and IoT-based monitoring system. Diverse scenarios are presented to verify the effectiveness of the developed system, where it can disconnect immediately to secure the system automatically when detecting the cyber-attack and switch to the backup broker to continue the runtime operation.

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Citations
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Journal ArticleDOI

Pollution Severity Monitoring of High Voltage Transmission Line Insulators Using Wireless Device Based on Leakage Current Bursts

TL;DR: In this article , a smart wireless online device for the severity monitoring of the contaminated insulators of high voltage transmission networks is described, which works by continuously sensing the magnitudes of the leakage current bursts and calculating its average root-mean-square (RMS) value at every second or minute as the monitor software is calibrated.
Journal ArticleDOI

Review of Semantic Segmentation of Medical Images Using Modified Architectures of UNET

TL;DR: In this article , the modified and improved models of UNET suitable for increasing segmentation accuracy were introduced for MRI image segmentation, which is a well-known semantic segmentation technique in medical image analysis.
Journal ArticleDOI

A Parametric Approach to Compare the Wind Potential of Sanghar and Gwadar Wind Sites

TL;DR: In this article , the authors analyzed the wind potential availability in Sanghar and Gwadar cities through the wind characteristics' analysis, where a Weibull distribution parametric approach with five different technique was applied.
Journal ArticleDOI

A dynamic ensemble method for residential short-term load forecasting

TL;DR: In this article , a dynamic ensemble method is proposed to forecast the residential short-term load accurately, which utilizes the state-space approaches to dynamically adjust the weight coefficients used to combine the base models.
References
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Book

Manufacturing Automation: Metal Cutting Mechanics, Machine Tool Vibrations, and CNC Design

TL;DR: In this paper, the authors discuss the application of metal cutting to manufacturing problems, including the design of real-time trajectory generation and interpolation algorithms, and CNC-oriented error analysis.
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Intelligent Manufacturing in the Context of Industry 4.0: A Review

TL;DR: This paper provides a comprehensive review of associated topics such as intelligent manufacturing, Internet of Things (IoT)-enabled manufacturing, and cloud manufacturing and describes worldwide movements in intelligent manufacturing.
Journal ArticleDOI

Support vector clustering

TL;DR: In this paper, a Gaussian kernel based clustering method using support vector machines (SVM) is proposed to find the minimal enclosing sphere, which can separate into several components, each enclosing a separate cluster of points.
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Analytical Prediction of Chatter Stability in Milling-part I : General Formulation

TL;DR: In this paper, a general formulation for the dynamic milling system is developed by modeling the cutter and workpiece as multi-degree-of-freedom structures, considering the varying dynamics in the axial direction.
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Smart manufacturing, manufacturing intelligence and demand-dynamic performance

TL;DR: IT-enabled Smart factories and supply networks can better respond to national interests and strategic imperatives and can revitalize the industrial sector by facilitating global competitiveness and exports, providing sustainable jobs, radically improving performance, and facilitating manufacturing innovation.