Combination of Techniques Could Improve Security for Internet of Things Devices
October 15, 2019 | Pennsylvania State UniversityEstimated reading time: 3 minutes

A multi-pronged data analysis approach that can strengthen the security of Internet of Things (IoT) devices — such as smart TVs, home video cameras and baby monitors — against current risks and threats has been created by a team of Penn State World Campus students pursuing master of professional studies degrees in information sciences.
Image Caption: A team of Penn State World Campus students have created an approach to strengthen the security of Internet of Things (IoT) devices — such as smart TVs, home video cameras and baby monitors — against current risks and threats. Credit: Bence Boros, Unsplash
“By 2020, more than 20 billion IoT devices will be in operation, and these devices can leave people vulnerable to security breaches that can put their personal data at risk, or worse, affect their safety,” said Beulah Samuel, who is majoring in information sciences. “Yet no strategy exists to identify when and where a network security attack on these devices is taking place and what such an attack even looks like.”
The team applied a combination of approaches often used in traditional network security management to an IoT network simulated by the University of New South Wales Canberra, Australia. Specifically, the team showed how statistical data, machine learning and other data analysis methods could be applied to assure the security of IoT systems across their lifecycle. The researchers then used intrusion detection and a visualization tool, to determine whether or not an attack had already occurred or was in progress within that network.
The researchers describe their approach and findings in a paper to be presented today (Oct. 10) at the 2019 IEEE Ubiquitous Computing, Electronics and Mobile Communication Conference. The researchers received the “Best Paper” award for their work.
One of the data analysis techniques the team applied was the open-source, freely available, R statistical suite, which they used to characterize the IoT systems in use on the Canberra network. In addition, they used machine learning solutions to search for patterns in the data that were not apparent using R.
“One of the challenges in maintaining security for IoT networks is simply identifying all the devices that are operating on the network,” said John Haller, an information sciences major. “Statistical programs, like R, can characterize and identify the user agents.”
The researchers used the widely available Splunk intrusion detection tool, which comprises software for searching, monitoring and analyzing network traffic, via a web-style interface.
“Splunk is an analytical tool that is often used in traditional network-traffic monitoring, but had only seen limited application to IoT traffic, until now,” said information sciences major Melanie Seekins.
Using these tools, and others, the team identified three IP addresses that were actively trying to break into the Canberra network’s devices.
“We observed three IP addresses attempting to attach to the IoT devices multiple times over a period of time using different protocols,” said Andrew Brandon, who is majoring in information sciences. “This clearly indicates a Distributed Denial of Service attack, which aims to disrupt and/or render devices unavailable to the owners.”
As the basis for their approach, the researchers compared it to a common framework used to help manage risk, the National Institute of Standards and Technology (NIST) Risk Management Framework (RMF).
“The NIST RMF was not created for IoT systems, but it provides a framework that organizations can use to tailor, test and monitor implemented security controls. This lends credibility to our approach,” said Brandon.
Ultimately, Seekins said, the ability to analyze IoT data using the team’s approach may enable security professionals to identify and manage controls to mitigate risk and analyze incidents as they occur.
“Knowing what has taken place in an actual attack helps us write scripts and monitors to look for those patterns,” she said. “These predictive patterns and the use of machine learning and artificial intelligence can help us anticipate and prepare for major attacks using IoT devices.”
The team hopes their approach will contribute to the creation of a standard protocol for IoT network security.
“There is no standardization for IoT security,” said Seekins. “Each manufacturer or vendor creates their own idea of what security looks like, and this can become proprietary and may or may not work with other devices. Our strategy is a good first step toward alleviating this problem.”
Suggested Items
RTX's Collins Aerospace Enhances Capabilities to Speed Marine Corps Decision-making in Battle
04/22/2025 | RTXCollins Aerospace, an RTX (NYSE: RTX) business, successfully demonstrated new technology that helps the military gather and use information from a wider range of sources at Project Convergence Capstone 5, a large-scale military exercise.
UHDI Fundamentals: UHDI Drives Unique IoT Innovation in Farming
04/22/2025 | Anaya Vardya, American Standard CircuitsThe combination of UHDI's high-bandwidth capabilities and IoT's real-time data processing can lead to more efficient, immersive, and smarter IoT systems. This convergence of two revolutionary technologies is enabling quantum advancements in some very “unconventional” applications. The typical discussions around UHDI focus on our standard electronics industry market segments like milaero, medical, consumer electronics, etc. IoT is all about machines talking to other machines, machine learning, and artificial intelligence, but again, typically applied in our PCB and assembly operations.
In-Memory Computing: Revolutionizing Data Processing for the Modern Era
04/21/2025 | Persistence Market ResearchIn a world where milliseconds matter, traditional computing architectures often struggle to keep up with the massive influx of real-time data.
China Smartphone Market Grew 3.3% in 1Q25, Outperforming Global Growth Ahead of US-China Trade Tensions
04/17/2025 | IDCAccording to preliminary data from the International Data Corporation (IDC) Worldwide Quarterly Mobile Phone Tracker, China's smartphone market shipped 71.6 million units in 1Q25, a 3.3% year-on-year (YoY) increase.
IPC APEX EXPO 2025 Learning Lounge: Education on the Show Floor
04/16/2025 | Andy Shaughnessy, Design007The conference portion of IPC APEX EXPO has been providing educational opportunities for attendees since the first show. But recently, show managers decided to expand education onto the show floor.