ANTLab RESEARCH TOPICS
The ANTLab research activities span over several topics:
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Mobile Radio Networks
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Wireless Networks and IoT
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Networks and Systems
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Network Security
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Network Economics
see below for more information on the different research areas.
Our research methodologies include:
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Prototype implementations of networks and systems (networking stacks in OS, IoT devices, sofware define radio, network functions, etc.)
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Machine-Learning and AI Tools
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Traffic theory, queuing theory, stochastic models
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Simulation tools (system level, discrete events)
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Optimisation models and algorithms, Game Theory
Mobile Radio Networks
The research area focuses on advanced Mobile Radio Networks and next-generation cellular systems, addressing both theoretical and experimental challenges in 5G and 6G scenarios. Core activities include radio network planning and optimization, the design of efficient radio resource management (RRM) algorithms, and the study of innovative network architectures. Particular attention is devoted to emerging paradigms such as smart radio environments, where reconfigurable intelligent surfaces and programmable propagation are integrated into the network design. The research also investigates interference management techniques, including complex spectrum sharing scenarios involving heterogeneous networks and dynamic spectrum access.
A significant research thrust concerns data-driven network management. This includes the statistical analysis of network counters and Key Performance Indicators (KPIs), as well as the development of machine learning-based methods for performance prediction, anomaly detection, traffic forecasting, and self-optimization. AI-based approaches to network automation are explored to enable self-organizing and self-healing networks, reducing operational costs while improving reliability and quality of service. In parallel, the group studies digital twin-based solutions for network control and management, where virtual replicas of physical networks are used to test optimization strategies, evaluate what-if scenarios, and support real-time decision-making.
Methodologically, the research combines analytical modeling with extensive simulation and prototyping. Optimization theory and game-theoretic models are employed to design distributed and scalable algorithms for resource allocation, interference coordination, and spectrum sharing. System-level simulations are conducted using platforms such as NS-3 and Sionna, enabling performance evaluation under realistic conditions. Furthermore, developed solutions are validated through prototypical implementations using open-source Software Defined Radio (SDR) platforms, including OpenAirInterface and similar frameworks, allowing experimental assessment in controlled and real-world environments.
People involved
Antonio Capone, Ilario Filippini, Andrea Pimpinella, Paolo Fiore, Antonio Boiano, Viola Bernazzoli, Alberto Ceresoli, Marcello Morini, Chiara Rubaltelli.
IoT systems and wireless internet technologies
The research area focuses on IoT systems and Wireless Internet technologies, with particular emphasis on Wi-Fi as a pervasive infrastructure for data collection, sensing, and protocol optimization.
With respect to IoT systems, the research spans all layers of the IoT protocol stack. At the application layer, activities concentrate on lightweight messaging protocols such as MQTT, MQTT-SN, and CoAP, addressing large-scale traffic analysis, protocol optimization, interoperability mechanisms, and distributed deployments. This includes the study of publish/subscribe architectures, advanced MQTT features, broker federation strategies, and systematic performance evaluation under realistic and large-scale workloads.
At the data link and connectivity layers, the research investigates short-range and long-range IoT technologies including Zigbee, Matter/Thread, BLE, LoRa/LoRaWAN, and NB-IoT. Activities include comparative performance evaluation, analytical modeling, scalability analysis, and optimization of communication strategies under dense and heterogeneous deployment scenarios.
In the Wi-Fi domain, the primary focus is the application of AI and machine learning techniques to extract high-level information from wireless traffic and physical-layer measurements. This includes localization, presence detection, and people counting through passive Wi-Fi monitoring, as well as learning-based mechanisms to enhance protocol performance, for example through reinforcement learning approaches for adaptive configuration and resource management.
A unifying theme across all activities is network data analysis at scale. The research addresses the design of optimized traffic analysis pipelines, including task-aware compression of network logs, scalable trace processing, and feature extraction mechanisms tailored to specific analytical or forensic objectives. Protocol enhancements are validated through both real-world experimentation and simulation campaigns, supported by embedded hardware programming, firmware development, and the deployment of large-scale experimental testbeds to ensure reproducibility and practical relevance.
The overall goal is to tightly integrate protocol engineering, wireless systems, and data-driven network intelligence, enabling scalable, interoperable, and analytically tractable IoT and Wireless Internet infrastructures.
People Involved:
Matteo Cesana, Alessandro E. C. Redondi, Marco Cominelli, Fabio Palmese, Antonio Boiano, Massimo Nobile.



















