From Natural Language to Certified H-infinity Controllers: Integrating LLM Agents with LMI-Based Synthesis
Shihao Li, Jiachen Li, Jiamin Xu, Dongmei Chen

TL;DR
This paper introduces S2C, a multi-agent framework that translates natural language specifications into certified H-infinity controllers using LMI synthesis, achieving high success and robustness on benchmark problems.
Contribution
The paper presents a novel multi-agent system integrating LLMs with LMI-based synthesis for automated, certified control design from natural language requirements.
Findings
100% synthesis success on 14 benchmark problems
Achieves 100% convergence within six iterations
Improves robustness metrics over baseline methods
Abstract
We present \textsc{S2C} (Specification-to-Certified-Controller), a multi-agent framework that maps natural-language requirements to certified state-feedback controllers via LMI synthesis. \textsc{S2C} coordinates five roles -- \textit{SpecInt} (spec extraction), \textit{Solv} (bounded-real lemma (BRL) LMI), \textit{Tester} (Monte Carlo and frequency-domain checks), \textit{Adapt} (spec refinement), and \textit{CodeGen} (deployable code). The loop is stabilized by a severity- and iteration-aware -floor guardrail and a decay-rate region constraint enforcing with derived from settling-time targets. For state feedback, verification reports disturbance rejection alongside time-domain statistics; discrete benchmarks are converted to continuous time via a Tustin (bilinear)…
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Taxonomy
TopicsFormal Methods in Verification · Adversarial Robustness in Machine Learning · Model Reduction and Neural Networks
