SECURE MULTI-ROBOT COMPUTATION FOR HETEROGENEOUS TEAMS : FOUNDATIONS AND APPLICATIONS

dc.contributor.advisorBobadilla, Leonardo
dc.contributor.authorAlsayegh, Murtadha
dc.date.accessioned2025-04-17T05:41:31Z
dc.date.issued2024
dc.descriptionThis thesis explores innovative methods to ensure efficient and secure collaboration among multi-robot systems. It introduces lightweight communication protocols and secure algorithms—such as multiparty auction-based task allocation and secure multiparty computation integrated with Markov Decision Processes—to minimize unnecessary data sharing while maintaining operational effectiveness. Additionally, the work develops decentralized information gathering strategies, including asynchronous and distributed approaches, to enhance environmental monitoring and other applications. Overall, the research lays the groundwork for advancing robotics through improved privacy safeguards and optimized cooperative behavior in heterogeneous robotic systems.
dc.description.abstractIn the rapidly evolving field of robotics, significant progress has been made in the planning, control, and coordination of multi-robot systems, embedding robots into various sectors such as household, manufacturing, healthcare, and surveillance. Despite these advancements, challenges arise, particularly concerning privacy due to robots' potential to access and share more information than necessary, risking sensitive data exposure. Addressing this, our research introduces innovative strategies to ensure collaborative computation among robots while safeguarding privacy, thereby preventing unnecessary information sharing and achieving optimal objectives. We propose lightweight communication protocols for data synchronization, reducing the need for extensive data exchange, and a secure multiparty auction-based algorithm for private task allocation without revealing sensitive data. Additionally, we explore the use of secure multiparty computation with Markov Decision Processes (MDP) for planning, ensuring privacy in multi-agent cooperation. Building on this foundation, we delve into decentralized multi-robot information gathering (DMRIG), presenting the Asynchronous Information Gathering with Bayesian Optimization (AsyncIGBO) and Distributed and Decentralized Robotic Information Gathering (DDRIG) algorithms to improve environmental monitoring data collection efficiency, balancing communication complexity, and privacy. Through practical experimentation, these algorithms' real-world efficacy is demonstrated, emphasizing their role in enhancing environmental monitoring via sophisticated information sharing and task allocation among robots. This dissertation provides a comprehensive approach to addressing privacy and efficiency in heterogeneous robot systems, showcasing the potential of these technologies to advance robotics applications securely and effectively. Together, these components form a comprehensive approach to addressing privacy concerns in heterogeneous robot systems. By interlinking efficient data sharing protocols, secure task allocation, private planning strategies, and optimized multi-robot information gathering, the dissertation lays the groundwork for a new paradigm in robotic collaboration. This synergy ensures that robots can work together effectively, achieving optimal objectives without compromising sensitive information, marking a significant advancement in the field of robotics.
dc.format.extent168
dc.identifier.citationAlsayegh, Murtadha, "Secure Multi-Robot Computation for Heterogeneous Teams: Foundations and Applications" (2024). FIU Electronic Theses and Dissertations. 1. https://digitalcommons.fiu.edu/etd/1
dc.identifier.issnhttps://orcid.org/0009-0009-7834-0703
dc.identifier.urihttps://hdl.handle.net/20.500.14154/75220
dc.language.isoen_US
dc.publisherFlorida International University
dc.subjectMulti-Robot Systems
dc.subjectPrivacy and Data Security
dc.subjectSecure Multiparty Computation
dc.subjectHeterogeneous Robot Systems
dc.subjectSecure Robotics
dc.subjectPrivacy Robotics
dc.subjectRobot Collaboration
dc.subjectSecure Auction Algorithms
dc.subjectDecentralized Systems
dc.subjectMDP
dc.subjectSecure Multi-party Computation
dc.titleSECURE MULTI-ROBOT COMPUTATION FOR HETEROGENEOUS TEAMS : FOUNDATIONS AND APPLICATIONS
dc.typeThesis
sdl.degree.departmentKnight Foundation School of Computing and Information Sciences
sdl.degree.disciplineComputer Science
sdl.degree.grantorFlorida International University
sdl.degree.nameDoctor of Philosophy

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