TurboAgent: An LLM-Driven Autonomous Multi-Agent Framework for Turbomachinery Aerodynamic Design

arXiv cs.AI / 4/10/2026

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Key Points

  • TurboAgent は、LLM を中核にした自律的なマルチエージェント枠組みにより、ターボ機械の空力設計(幾何生成、性能予測、最適化、物理検証)をエンドツーエンドで閉ループ化することを目指す研究です。
  • LLM がタスク計画とエージェント間の調整を担い、生成設計・高速予測・多目的最適化・物理ベース検証などの役割を専門エージェントが分担します。
  • トランソニック単段ロータリコンプレッサを検証対象として、目標性能と生成設計、CFD シミュレーションの間で高い一致(R²>0.91、nRMSE<8%)が報告されています。
  • 最適化エージェントにより isentropic efficiency を 1.61%、total pressure ratio を 3.02% 改善し、並列計算で約30分程度で完全ワークフローを実行できるとされています。
  • 自然言語の要求から最終設計生成までを自律実行し、高精度シミュレーションを最終検証に残す「効率的でスケーラブルな設計パラダイム」を示した点が主な成果です。

Abstract

The aerodynamic design of turbomachinery is a complex and tightly coupled multi-stage process involving geometry generation, performance prediction, optimization, and high-fidelity physical validation. Existing intelligent design approaches typically focus on individual stages or rely on loosely coupled pipelines, making fully autonomous end-to-end design challenging. To address this issue, this study proposes TurboAgent, a large language model (LLM)-driven autonomous multi-agent framework for turbomachinery aerodynamic design and optimization. The LLM serves as the core for task planning and coordination, while specialized agents handle generative design, rapid performance prediction, multi-objective optimization, and physics-based validation. The framework transforms traditional trial-and-error design into a data-driven collaborative workflow, with high-fidelity simulations retained for final verification. A transonic single-rotor compressor is used for validation. The results show strong agreement between target performance, generated designs, and CFD simulations. The coefficients of determination for mass flow rate, total pressure ratio, and isentropic efficiency all exceed 0.91, with normalized RMSE values below 8%. The optimization agent further improves isentropic efficiency by 1.61% and total pressure ratio by 3.02%. The complete workflow can be executed within approximately 30 minutes under parallel computing. These results demonstrate that TurboAgent enables an autonomous closed-loop design process from natural language requirements to final design generation, providing an efficient and scalable paradigm for turbomachinery aerodynamic design.