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基于數字孿生的工件裝夾機械臂路徑規劃仿真分析

Simulation analysis of path planning for workpiece clamping robots based on digital twin technology

  • 摘要: 針對數控加工過程取件、搬運、裝夾多環節異形障礙物路徑規劃難題,提出了數字孿生驅動的上下料機械臂高效高質量路徑規劃方法. 在分析數控加工過程上下料多環節避障環境的基礎上,研究了動態橢圓約束采樣RRT*-Connect的機械臂路徑規劃方法,通過采用動態約束采樣、自適應動態步長,提升擴展隨機樹搜索效率,并通過刪除冗余節點和初始路徑平滑優化提升路徑質量;在此基礎上,構建了機械臂路徑規劃的實時數字孿生仿真環境,通過對機械臂運行狀態數據的實時采集與雙向傳輸,實現機械臂上下料作業過程在孿生環境下的精準映射,極大提升了復雜工況下機械臂路徑規劃效率. 最后以某數控加工作業產線中的上下料過程為例對本文方法的有效性進行驗證,本文算法相較RRT*-Connect、改進RRT*-FN算法,作業時間分別降低30.68%、23.56%,末端路徑代價分別降低24.76%、14.99%.

     

    Abstract: Efficient path planning for manipulators is essential in modern CNC machining processes to ensure obstacle-free operations, particularly during complex tasks such as picking, handling, and clamping. The presence of irregularly shaped obstacles at various stages of machining presents significant challenges for traditional path planning algorithms, which often struggle to balance computational efficiency with path quality. To address these challenges, this study proposes a novel, efficient, and high-quality path planning method for loading and unloading manipulators, leveraging the advanced capabilities of digital twin technology. This approach not only improves operational efficiency but also ensures safety and adaptability in complex working environments. Central to this method is the proposed RRT*-Connect algorithm, which performs dynamic elliptical constraint sampling. By integrating dynamic constraint sampling with adaptive step-size adjustments, the algorithm significantly enhances the efficiency of random tree search process. Targeting feasible regions through elliptical constraints accelerates convergence toward optimal paths, while techniques such as redundant node elimination and initial path smoothing further improve path quality, resulting in shorter, smoother routes. To validate this approach, a real-time digital twin simulation environment was constructed. This high-fidelity environment accurately reflects manipulator operations by incorporating real-time data collection and bidirectional transmission of operational parameters. Through the digital twin framework, manipulator movements and interactions with obstacles are precisely mapped, enabling real-time monitoring and waypoint updates. The simulation environment also supports real-time updates of manipulator status, ensuring that the planned paths remain both feasible and optimized for actual operations. The effectiveness of the proposed method was demonstrated through a comprehensive case study on a CNC machining production line. Comparative experiments with two baseline algorithms, RRT*-Connect and an improved RRT*-FN algorithm, highlight the superior performance of the proposed method. Specifically, the proposed approach reduced operation time by 30.68% and 23.56% and terminal path cost by 24.76% and 14.99% compared to the respective baseline algorithms. These results underscore the ability of the algorithm to efficiently and cost-effectively navigate complex obstacle configurations. Beyond its technical merits, this study underscores the broader implications of integrating digital twin technology with path planning algorithms. The digital twin system is integral to the success of the method by enabling seamless data exchange and synchronization, bridging the gap between the physical manipulator and its simulation environment. This ensures that paths generated in the integrated virtual and physical environments are not only theoretically optimal but also practically executable, significantly enhancing the reliability and applicability of the proposed approach in industrial settings. Additionally, the digital twin environment serves as a robust platform for advanced simulations and algorithm refinement prior to real-world implementation. In summary, this paper presents an innovative and robust solution to path planning challenges for manipulators in CNC machining processes. By integrating dynamic elliptical constraints, adaptive step size, and digital twin technology, the proposed method addresses the complexities of irregularly shaped obstacles and dynamic operational environments. The demonstrated reductions in operation time and path cost highlight the method’s potential for widespread application in CNC machining and other industrial automation domains. Future research will focus on extending this approach to multi-manipulator systems, scaling its applicability to larger and more dynamic production environments, and exploring its use in diverse industrial tasks such as assembly, welding, and inspection. This research makes a significant contribution to the development of path planning methodologies within the context of intelligent manufacturing, offering valuable insights for industrial automation solutions.

     

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