Wiesmeier, LorenzLorenzWiesmeierBusch, MatthiasMatthiasBuschTacke, MariusMariusTackeLinka, KevinKevinLinkaCyron, Christian J.Christian J.CyronAydin, RolandRolandAydin2026-06-012026-06-012026-05-13Frontiers in Artificial Intelligence and Applications 9: 1784484 (2026)https://hdl.handle.net/11420/63284Large language models (LLMs) are increasingly deployed in multi-agent systems (MAS), including for solving engineering problems. Unlike purely linguistic tasks, engineering workflows demand formal rigor and numerical accuracy, meaning that adversarial perturbations can cause not just degraded performance but systematically incorrect or unsafe results. In this work, we present one of the first systematic studies of adversarial robustness of LLM-based MAS in engineering contexts. Using representative problems—including pipe pressure loss (Darcy-Weisbach), beam deflection, mathematical modeling, and graph traversal—we investigate how misleading agents affect collaborative reasoning and quantify error propagation under controlled adversarial influence. Our results show that adversarial vulnerabilities in engineering differ from those observed in generic MAS evaluations in important aspects: system robustness is sensitive to task type, the subtlety of injected errors, and communication order among agents. In particular, engineering tasks with higher structural complexity or easily confusable numerical variations are especially prone to adversarial influence. We further identify design choices, such as prompt framing, agent role assignment, and discussion order, that significantly improve resilience. These findings highlight the need for domain-specific evaluation of adversarial robustness and provide actionable insights for designing MAS that are trustworthy and safe in engineering applications.en0922-6389Frontiers in artificial intelligence and applications2026Frontiers Media S.A.https://creativecommons.org/licenses/by/4.0/adversarial robustnessalignmentengineeringlarge language model (LLM)misalignmentmulti-agent system (MAS)Computer Science, Information and General Works::006: Special computer methods::006.3: Artificial IntelligenceComputer Science, Information and General Works::004: Computer SciencesNatural Sciences and Mathematics::519: Applied Mathematics, ProbabilitiesAdversarial robustness of LLM-based multi-agent systems for engineering problemsJournal Article2026-05-29https://doi.org/10.15480/882.1722310.3389/frai.2026.178448410.15480/882.17223