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虚实双向驱动的制鞋智能成型生产线工艺规划

Bidirectional Cyber-physical Driven Process Planning for Intelligent Shoe Forming Production Line

  • 摘要:
    目的 针对制鞋业智能化成型工艺规划存在的时效性低、质量不稳定等问题,提出一种融合虚实双向驱动的智能工艺规划方法,以推动传统制鞋产业的数字化转型。
    方法 构建了涵盖几何、物理、行为与规则的数字孪生混合机理模型,设计了虚实双向驱动的工艺规划闭环反馈系统;进而提出一种多特征耦合驱动与过程实时反馈的成型工艺规划方法,并集成于智能成型管控平台。
    结果 冷粘鞋智能成型生产线实例验证表明:与传统依赖人工经验的方法相比,该方法使规划周期显著缩短,产品合格率有效提升,同时人力、物力及能源消耗大幅降低。
    结论 为制鞋产业提供了一种有效的智能化工艺规划解决方案,显著提升了生产效率与质量稳定性。

     

    Abstract:
    Objective Aiming at the problems of low efficiency and inconsistent quality in intelligent forming process planning in the footwear industry, a bidirectional cyber-physical driven intelligent process planning method is proposed to promote the digital transformation of traditional shoemaking.
    Methods A hybrid mechanism digital twin model incorporating geometry, physics, behavior, and rules was constructed, and a closed-loop feedback system for process planning based on bidirectional cyber-physical drive was designed. Furthermore, a forming process planning method driven by multi-feature coupling and real-time process feedback was developed and integrated into an intelligent forming management platform.
    Results The bidirectional cyber-physical driven process planning system developed in this study has been comprehensively validated on an intelligent cold-adhesive shoe forming production line, with core achievements demonstrated across four dimensions: planning efficiency, product quality, resource consumption, and system intelligence. In terms of planning efficiency and responsiveness, compared to traditional process planning that relies on manual trial-and-error by engineers, the application of this system enables the digital twin model to automatically generate and simulate multiple optimization schemes, significantly reducing the average time required for planning the glue spraying path for a new shoe sole; meanwhile, for high-variety, small-batch orders, the production line changeover time is markedly shortened, greatly enhancing production flexibility. Regarding product quality consistency, through real-time inspection of the "glue line after upper-sole assembly" using vision sensors and feedback for compensatory calibration in the virtual model, the deviation of the upper glue line is controlled within ≤1.5 mm, significantly reducing the risk of debonding; the system also performs online inspection and control of "sole glue spray coverage", maintaining a stable coverage rate above 96%, thus avoiding quality issues caused by insufficient glue or overspray and leading to a substantial increase in the product qualification rate. In terms of production cost and resource consumption, precise glue spraying control reduces the overconsumption of adhesive, and the reliance on process engineers' experience is greatly diminished — the role of process debugging personnel for a single production line shifts from glue line debugging to monitoring and handling equipment exceptions, while the number of physical debugging iterations is reduced, thereby eliminating energy waste caused by equipment idling. Regarding process knowledge precipitation and decision intelligence, the system archives successful process parameters (e.g., robot trajectory, glue pressure, and temporal coordination) as digital assets, forming a "process knowledge base" that can automatically recommend optimal historical solutions when processing similar shoe styles, achieving a paradigm shift from "experience-driven" to "data and model-driven" operations.
    Conclusion This research provides an effective intelligent process planning solution for the footwear industry, significantly enhancing production efficiency and quality stability.

     

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