Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

EDGE-ENABLED MACHINE LEARNING FRAMEWORK FOR REALTIME ANOMALY DETECTION IN IOT NETWORK

View through CrossRef
With the rapid expansion of IoT networks, global internet-connected devices are projected to exceed 29 billion by 2030, creating unprecedented volumes of real-time traffic. Nearly 70% of IoT devices are vulnerable to at least one security threat, and over 60% of reported anomalies go undetected due to inadequate early-warning mechanisms. The economic impact of network anomalies is significant, with businesses losing an estimated $120 billion annually due to undetected cyber threats, system downtime, and performance degradation. Traditional manual anomaly detection methods, such as signature-based identification, threshold monitoring, and log inspection, are increasingly ineffective in dynamic IoT environments. These techniques are time-intensive, prone to human error, and incapable of detecting zero-day anomalies or adapting to evolving traffic behaviors. To overcome these limitations, the proposed method presents a machine learning-driven anomaly detection framework tailored for IoT edge devices. The system begins with an end-to-end preprocessing pipeline that includes structured data exploration, class balance visualization, and feature standardization to optimize learning efficiency. Logistic Regression and an AdaBoost-enhanced Decision Tree Classifier are employed to classify four critical network anomaly types: Frequency Drift, Capacity Breach, Dual Signal Interference, and Request Overload. A performance evaluation module computes key metrics such as accuracy, precision, recall, and F1-score, and uses confusion matrices for interpretability. The architecture also supports real-time predictions on new data inputs, making the system practical for deployment in IoT-enabled infrastructures. By combining model reusability with scalable preprocessing and automated classification, this method enhances anomaly detection reliability and responsiveness in modern edge environments
Title: EDGE-ENABLED MACHINE LEARNING FRAMEWORK FOR REALTIME ANOMALY DETECTION IN IOT NETWORK
Description:
With the rapid expansion of IoT networks, global internet-connected devices are projected to exceed 29 billion by 2030, creating unprecedented volumes of real-time traffic.
Nearly 70% of IoT devices are vulnerable to at least one security threat, and over 60% of reported anomalies go undetected due to inadequate early-warning mechanisms.
The economic impact of network anomalies is significant, with businesses losing an estimated $120 billion annually due to undetected cyber threats, system downtime, and performance degradation.
Traditional manual anomaly detection methods, such as signature-based identification, threshold monitoring, and log inspection, are increasingly ineffective in dynamic IoT environments.
These techniques are time-intensive, prone to human error, and incapable of detecting zero-day anomalies or adapting to evolving traffic behaviors.
To overcome these limitations, the proposed method presents a machine learning-driven anomaly detection framework tailored for IoT edge devices.
The system begins with an end-to-end preprocessing pipeline that includes structured data exploration, class balance visualization, and feature standardization to optimize learning efficiency.
Logistic Regression and an AdaBoost-enhanced Decision Tree Classifier are employed to classify four critical network anomaly types: Frequency Drift, Capacity Breach, Dual Signal Interference, and Request Overload.
A performance evaluation module computes key metrics such as accuracy, precision, recall, and F1-score, and uses confusion matrices for interpretability.
The architecture also supports real-time predictions on new data inputs, making the system practical for deployment in IoT-enabled infrastructures.
By combining model reusability with scalable preprocessing and automated classification, this method enhances anomaly detection reliability and responsiveness in modern edge environments.

Related Results

Anomaly Detection in IoT: Recent Advances, AI and ML Perspectives and Applications
Anomaly Detection in IoT: Recent Advances, AI and ML Perspectives and Applications
IoT comprises sensors and other small devices interconnected locally and via the Internet. Typical IoT devices collect data from the environment through sensors, analyze it and act...
Detection of Various Botnet Attacks Using Machine Learning Techniques
Detection of Various Botnet Attacks Using Machine Learning Techniques
With the rapid growth in the quantity of Internet of Things (IoT) devices linked with the network, there exists a concurrent rise in network attacks, including overwhelming and ser...
A systematic survey: role of deep learning-based image anomaly detection in industrial inspection contexts
A systematic survey: role of deep learning-based image anomaly detection in industrial inspection contexts
Industrial automation is rapidly evolving, encompassing tasks from initial assembly to final product quality inspection. Accurate anomaly detection is crucial for ensuring the reli...
Enhancing IoT Security through Machine Learning-Driven Anomaly Detection
Enhancing IoT Security through Machine Learning-Driven Anomaly Detection
This is study emphasizes the growing cybersecurity situations arising from the increasing use of Internet of Things (IoT) devices. Paying the main attention to the development of I...
Deception-Based Security Framework for IoT: An Empirical Study
Deception-Based Security Framework for IoT: An Empirical Study
<p><b>A large number of Internet of Things (IoT) devices in use has provided a vast attack surface. The security in IoT devices is a significant challenge considering c...
Anomaly Detection for IOT Systems Using Active Learning
Anomaly Detection for IOT Systems Using Active Learning
The prevalence of Internet of Things (IoT) technologies is on the rise, making the identification of anomalies in IoT systems crucial for ensuring their security and reliability. H...
Advanced frameworks for fraud detection leveraging quantum machine learning and data science in fintech ecosystems
Advanced frameworks for fraud detection leveraging quantum machine learning and data science in fintech ecosystems
The rapid expansion of the fintech sector has brought with it an increasing demand for robust and sophisticated fraud detection systems capable of managing large volumes of financi...
Geo‐information mapping improves Canny edge detection method
Geo‐information mapping improves Canny edge detection method
AbstractAiming at the shortcomings of the current Canny edge detection method in terms of noise removal, threshold setting, and edge recognition, this paper proposes a method for i...

Back to Top