Learning-based and AI-enabled techniques are increasingly integrated into autonomous aerospace systems, bringing unprecedented performance capabilities together with new challenges in safety assurance, verification, and certification.
Organized by the IEEE Technical Committee on Aerospace Control (TCAC), this workshop provides a focused forum for examining how formal methods and control-theoretic tools can support the trustworthy deployment of learning-enabled autonomy
in safety-critical aerospace applications. Through invited contributions from leading researchers and industrial practitioners, the workshop highlights recent advances, open challenges, and emerging methodologies at the intersection of control,
learning, and formal verification.
By combining academic perspectives with insights from industrial deployment and certification-oriented practice, the workshop aims to stimulate discussion on principled design workflows, assurance strategies, and future research directions
for AI-in-the-loop aerospace control systems. The program is designed to foster interaction across communities and to encourage constructive dialogue on bridging theoretical developments and real-world implementation constraints.
The goal of this one-day workshop is to provide a comprehensive overview of current trends in the design of control architectures for autonomous aerospace systems, with a strong emphasis on formal methods, safety assurance, and industrial
deployment. The program addresses both model-based and learning-based control strategies, with particular focus on verification, validation, and certification challenges arising in safety-critical, real-world applications. A central objective
is to discuss representative industrial case studies and deployment scenarios, critically analyze the strengths and limitations of existing approaches, and highlight how formally grounded methods can support the reliable integration of
learning-based components.
Recent developments at the intersection of control theory, learning methods, formal methods, and artificial intelligence have brought renewed attention to issues such as correctness guarantees, robustness, and certifiability of autonomous systems.
These challenges are of paramount importance to the industry, where regulatory constraints and operational reliability play a key role in technology adoption. The strong participation of both academic and industrial speakers in this workshop
reflects this growing convergence. For these reasons, we believe that the IEEE Conference on Decision and Control provides an ideal forum for bringing this timely and impactful topic to the attention of the control community and fostering dialogue
among theory, tools, and industrial practice.
The full-day structure, extended discussion periods, and final round-table session are intentionally chosen to lower barriers to engagement, stimulate dialogue, and promote mentoring and knowledge exchange across career
stages. In particular, exposure to industrial perspectives on certification and deployment offers valuable insight for young researchers and students who may otherwise have limited access to these discussions. In line
with CSS’s commitment to broadening access and opportunity, the workshop fosters cross-disciplinary and cross‑sector interaction by bringing together communities spanning control theory, machine learning, formal
verification, and aerospace engineering. This convergence supports the dissemination of best practices across fields and promotes transferable methodologies that can be adopted in adjacent domains beyond aerospace,
including robotics, autonomous ground vehicles, and cyber‑physical systems. The organizers intend to make workshop materials (e.g., slides and summaries) broadly accessible after the event, facilitating wider dissemination of knowledge to
participants unable to attend in person.
Unlike existing workshops that focus primarily on learning algorithms or autonomous applications, this workshop emphasizes certifiable, safety‑critical learning-enabled control architectures, integrating robustness theory, formal safety guarantees,
industrial deployment constraints, and governance considerations within a unified framework. By addressing safety, certification, and governance of learning-enabled aerospace systems, the workshop contributes to the responsible adoption of autonomy
in civil aviation and space systems, supporting public trust, regulatory acceptance, and the CSS mission of inclusive excellence, societal benefit, and responsible innovation.
This workshop will be sponsored by the IEEE Technical Committee on Aerospace Controls (TCAC). The invited speakers are mostly leading TCAC members from academia, industry, and government, actively involved in cutting-edge research and
development in aerospace autonomy and control.
The tentative workshop schedule is reported in the Program page, together with the list of speakers and abstracts of the proposed contributions. Each talk will consist of 30' plus 5' for Q&A,
separated by coffee and lunch breaks designed to maximize the participants' opportunities to discuss technical problems and tighten or establish professional networks.
The workshop is intended for Ph.D. students, researchers, engineers, companies, and practitioners who are interested in learning-based methods in aerospace systems and applications. With this initiative, the organizers aspire to establish an inclusive
platform for engaging in open discussions with key stakeholders. Through its emphasis on safety, certification, and responsible AI deployment, the workshop aligns technical advances with societal needs, while its inclusive structure and diverse
participation actively support the CSS mission of cultivating a vibrant, accessible, and forward-looking control community.
Expected outcomes of the workshop include a clearer understanding of how robustness and safety guarantees can be integrated with learning-based control architectures, increased awareness of certification and
deployment constraints from an industrial perspective, and the identification of key open research challenges at the intersection of learning, control, and governance for safety-critical aerospace systems.
CNR-IEIIT
martina.mammarella@cnr.it
Martina Mammarella received her B.Sc. and M.Sc. degrees in Aerospace Engineering from Politecnico di Torino in 2012 and 2015, respectively, and her Ph.D. (cum laude) in Aerospace Engineering in 2019. Currently, she is a researcher at the Cnr-Istituto di Elettronica e di Ingegneria dell'Informazione e delle Telecomunicazioni (CNR-IEIIT), based at Politecnico di Torino, Italy. She has obtained the Italian National Scientific Qualification for Associate Professor in both Systems and Control Engineering and Aerospace Engineering. Dr. Mammarella’s research focuses on robust and stochastic model predictive control, system identification, and control of aerospace and autonomous systems, including spacecraft guidance, navigation, and control, and unmanned aerial vehicles. She has been involved in several Italian and European research projects and actively collaborates with international universities, research centers, and industry partners, contributing to projects on space systems, autonomous vehicles, and agricultural robotics. She is the author of numerous journal and conference publications in leading venues. Lately, Dr. Mammarella has been granted with a FIS2 Starting Grant (2025) to develop a morphing lunar communication network. She currently serves as Associate Editor for the IEEE Transactions on Control Systems Technology and the IEEE Transactions on Aerospace and Electronic Systems and is actively involved in several IEEE and IFAC technical committees.
Grado Department of Industrial and Systems Engineering
Virginia Tech
a.lafflitto@vt.edu
Andrea L’Afflitto received the B.S. degree in Aerospace Engineering and the M.S. degree in Aerospace Engineering and Astronautics from the University of Napoli “Federico II,” Italy, in 2004 and 2006, respectively. He later earned an M.S. degree in Mathematics from Virginia Tech in 2010 and a Ph.D. in Aerospace Engineering from Georgia Tech in 2015. From 2008 to 2009, he worked as a System Engineer at the German Aerospace Agency (DLR) in Cologne, Germany. He then served as an assistant professor at the University of Oklahoma from 2015 to 2019 before joining Virginia Tech in 2019, where he is currently an associate professor in the Grado Department of Industrial and Systems Engineering. Prof. L’Afflitto’s research focuses on robust and adaptive control, nonlinear control, optimal control theory, and the control of unmanned aerial systems, with applications in aerospace and automotive engineering. He is the author of three books and more than 60 journal and conference publications. His contributions have been recognized with several honors, including the DARPA Young Faculty Award (2018) and his appointment as an AIAA Associate Fellow. He currently serves as Senior Editor for the Autonomous Systems track of the IEEE Transactions on Aerospace and Electronic Systems and is a member of the IEEE Aerospace Controls Technical Committee.