智流:面向工程场景的AI-CFD多智能体加速仿真平台

ZHILIU: AI-CFD multi-agent accelerated simulation platform for engineering applications

  • 摘要: 针对工程CFD仿真存在门槛高、流程配置复杂、经验依赖强以及收敛与调参成本高等关键难题,本文构建了“智流”——一个可追踪、可复用且可本地化的AI-CFD多智能体加速仿真平台。该平台采用以大语言模型为中枢的多阶段编排,融合检索增强生成与工程知识图谱,将自然语言需求转化为结构化任务;在多智能体协同框架下实现异常诊断与自愈调参,统一封装几何、网格、求解器以及后处理接口,并提供本地部署、权限控制与日志审计的合规保障,从而实现从需求解析、建模、求解、到可视化报告的端到端自动化。平台具备自动识别网格或收敛异常并可通过参数优化恢复计算的能力,支持全阶段人工介入与人机协同,在保障求解稳定性的同时满足多样性的仿真需求;此外,该平台支持并发计算与GPU加速,有效提升任务吞吐与仿真效率。通过对标准算例开展“智流”平台与常规仿真方法的计算效率对比研究,结果表明:“智流”平台能显著减少人工介入时间和操作步数,其中人工介入时间减少了65.26%,总操作步数仅为常规仿真的1/8;并在求解稳定性方面表现一定的优势。本研究主要基于国产开源CFD平台——风雷软件(NNW-PHengLEI),并调用其核心求解器模块,为CFD从工具驱动向智能协同转型提供可落地路径,可适配科研与工业场景中的规范化、合规化仿真生产,在保证仿真精度的同时显著提升仿真效率。

     

    Abstract: To address the longstanding challenges in engineering CFD—namely the high entry barrier, complex workflow configuration, heavy dependence on expert experience, and the high cost of convergence tuning—this work develops ZHILIU, a traceable, reusable, and fully localizable AI-CFD multi-agent platform for accelerated simulation. The platform adopts a multi-stage orchestration centered on a large language model and integrates retrieval-augmented generation (RAG) with an engineering knowledge graph to transform natural-language requirements into structured tasks. Within a coordinated multi-agent framework, it performs automated anomaly diagnosis and self-healing parameter tuning, while providing unified interfaces for geometry preparation, meshing, solvers, and post-processing. Local deployment, permission management, and audit logging further ensure security and compliance. The system enables end-to-end automation from requirement parsing and model setup to solving and visualization reporting. Mesh or convergence anomalies can be automatically detected and corrected through parameter optimization, while human intervention can be incorporated at any stage to support flexible human-AI collaboration and diverse simulation needs. The platform also supports concurrent execution and GPU acceleration to increase throughput and substantially enhance overall computational efficiency. Standard benchmark comparisons between the ZJILIU platform and conventional CFD workflows were conducted. The results show that ZHILIU significantly reduces manual intervention by 65.26% and cuts operational steps to just 1/8 of the conventional approach. It also demonstrates an advantage in solution stability. Overall, ZHILIU provides a practical and deployable pathway for transitioning CFD from tool-centric workflows to intelligent, collaborative simulation. This study is primarily based on the domestic open-source CFD platform (NNW-PHengLEI), and invokes its core solver module. It provides a feasible path for transforming CFD from tool-driven to intelligent collaborative approaches. The platform improves efficiency without sacrificing accuracy, and is suitable for both research and industrial applications.

     

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