arXiv Open Access 2025

Software Engineering for Self-Adaptive Robotics: A Research Agenda

Hassan Sartaj Shaukat Ali Ana Cavalcanti Lukas Esterle Cláudio Gomes +4 lainnya
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Abstrak

Self-adaptive robotic systems operate autonomously in dynamic and uncertain environments, requiring robust real-time monitoring and adaptive behaviour. Unlike traditional robotic software with predefined logic, self-adaptive robots exploit artificial intelligence (AI), machine learning, and model-driven engineering to adapt continuously to changing conditions, thereby ensuring reliability, safety, and optimal performance. This paper presents a research agenda for software engineering in self-adaptive robotics, structured along two dimensions. The first concerns the software engineering lifecycle, requirements, design, development, testing, and operations, tailored to the challenges of self-adaptive robotics. The second focuses on enabling technologies such as digital twins, AI-driven adaptation, and quantum computing, which support runtime monitoring, fault detection, and automated decision-making. We identify open challenges, including verifying adaptive behaviours under uncertainty, balancing trade-offs between adaptability, performance, and safety, and integrating self-adaptation frameworks like MAPE-K/MAPLE-K. By consolidating these challenges into a roadmap toward 2030, this work contributes to the foundations of trustworthy and efficient self-adaptive robotic systems capable of meeting the complexities of real-world deployment.

Topik & Kata Kunci

Penulis (9)

H

Hassan Sartaj

S

Shaukat Ali

A

Ana Cavalcanti

L

Lukas Esterle

C

Cláudio Gomes

P

Peter Gorm Larsen

A

Anastasios Tefas

J

Jim Woodcock

H

Houxiang Zhang

Format Sitasi

Sartaj, H., Ali, S., Cavalcanti, A., Esterle, L., Gomes, C., Larsen, P.G. et al. (2025). Software Engineering for Self-Adaptive Robotics: A Research Agenda. https://arxiv.org/abs/2505.19629

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Tahun Terbit
2025
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en
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arXiv
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