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理数融合

  • 摘要: 理数融合是一种面向复杂工业系统智能决策与控制的新兴范式,通过协同融合以物理机制、实验分析和领域知识为基础的理论模型(理)与基于工业现场数据驱动的不确定性建模方法(数),突破了传统单一技术路径的局限。其核心在于构建“双核三机制”工业智能体系:以动态工业知识图谱为知识中枢(理),实现结构化认知与逻辑推理;以物理引导的混合智能模型簇为计算中枢(数),实现模式识别与补偿计算。三项机制内容为:借助智能调度机制提升人工智能决策的精准性,使用安全验证机制保障物理一致性与可靠性,通过协同进化机制促进知识与计算中枢的自主学习与持续优化。该范式兼具物理模型的高可靠性与可解释性和数据驱动模型的非线性拟合与自适应能力,显著克服了各自的固有限制。理数融合能够为工业系统从自动化迈向自主化提供关键支撑,对于提升系统的自适应性、可靠性和自主进化能力具有重要意义。

     

    Abstract: Theory-data fusion is an emerging paradigm for intelligent decision-making and control in complex industrial systems. By synergistically integrating theory-driven models—rooted in physical mechanisms, experimental analysis, and domain knowledge (Theory)—with data-driven approaches for modeling uncertainties from real-world industrial data (Data), this paradigm overcomes the limitations of traditional single-approach methods. At its core, Theory-Data Fusion establishes a “dual-core, triple-mechanism” framework: a dynamic industrial knowledge graph serves as the knowledge center (Theory), enabling structured cognition and logical reasoning, while a cluster of physics-guided hybrid intelligence models function as the computational center (Data), facilitating pattern recognition and compensatory computation. The three key mechanisms include: intelligent scheduling to enhance the precision of AI interventions, safety verification to ensure physical consistency and reliability, and co-evolution to promote autonomous learning and continuous optimization between the knowledge and computational centers. This approach combines the high reliability and interpretability of physical models with the nonlinear fitting and adaptive capabilities of data-driven models, effectively addressing the limitations inherent to each. Theory-Data Fusion provides critical support for advancing industrial systems from automation to autonomy, and is of great significance for enhancing the adaptability, reliability, and self-evolution capabilities of such systems.

     

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