Digital twin-driven staged error prediction and compensation framework for the whole process of robotic machining

IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL
Teng Zhang , Fangyu Peng , Zhao Yang , Xiaowei Tang , Jiangmiao Yuan , Rong Yan
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引用次数: 0

Abstract

Robotic machining has become another important machining paradigm after CNC machine tools. However, robot error has always been an important constraint in its progress towards high quality demand scenarios due to characteristics such as weak rigidity and pose dependence. Numerous scholars have carried out rich work around errors in robotic machining systems, and these studies have achieved excellent results in robot localization, trajectory continuous motion, and machining operations. However, due to the complexity of the robot machining system, the robot error has differentiated performance at different stages, and it is difficult to guarantee the global accuracy of the robot by focusing on and controlling a certain kind of error in a discrete manner. For this reason, a digital twin-driven staged error prediction and compensation framework for the whole robot machining process is constructed. In this framework, the whole process of robot machining is divided into three stages with significant differences: point planning, trajectory planning and material removal. And the error prediction function block in each stage is constructed for the error characteristics (distribution skew, error step, spatial-temporal coupling). For error compensation, a staged error compensation strategy is constructed from three aspects: offline point position, robot body and external three-axis platform, respectively. The constructed system was case-validated in the robotic machining of curved parts. All stages of the error prediction models show high prediction accuracy, and the excellent performance of the staged prediction models is verified by comparing with the classical prediction models. For the error compensation, the designed system is utilized to ensure that the robotic machining system provides a double guarantee on the robot end and the machining quality, the point position absolute error is controlled at 0.109 mm, the orientation error is controlled at 0.028°, the trajectory position error is controlled at 0.067 mm, the orientation error is controlled at 0.031°, and the final part machining error is controlled at 0.036 mm, which is almost approximates the repeatable positioning accuracy of the robot. The proposed framework realizes the system-level sensing and control of the robot machining system error, and provides a unified system framework for the subsequent research of related unit methods, which is conducive to promoting the development of robot machining to high-quality requirement scenarios.
面向机器人加工全过程的数字双驱动阶段误差预测与补偿框架
机器人加工已成为继数控机床之后又一种重要的加工模式。然而,由于机器人的刚度弱、姿态依赖等特点,误差一直是制约其向高质量需求场景发展的重要因素。众多学者针对机器人加工系统中的误差进行了丰富的研究,这些研究在机器人定位、轨迹连续运动、加工操作等方面取得了优异的成果。然而,由于机器人加工系统的复杂性,机器人误差在不同阶段具有差异化的表现,以离散的方式关注和控制某一种误差很难保证机器人的全局精度。为此,构建了面向机器人全加工过程的数字双驱动阶段误差预测与补偿框架。在该框架下,将机器人的整个加工过程分为三个阶段,分别是点规划、轨迹规划和材料去除。针对误差分布偏度、误差步长、时空耦合等误差特征,构建了各阶段的误差预测函数块。对于误差补偿,分别从离线点位置、机器人本体和外部三轴平台三个方面构建了阶段误差补偿策略。所构建的系统在曲面零件的机器人加工中得到了实例验证。各阶段误差预测模型均显示出较高的预测精度,并通过与经典预测模型的对比验证了阶段预测模型的优异性能。在误差补偿方面,利用所设计的系统保证了机器人加工系统对机器人端部和加工质量的双重保证,点位绝对误差控制在0.109 mm,姿态误差控制在0.028°,轨迹位置误差控制在0.067 mm,姿态误差控制在0.031°,最终零件加工误差控制在0.036 mm。这几乎近似于机器人的可重复定位精度。提出的框架实现了机器人加工系统误差的系统级感知与控制,为后续相关单元方法的研究提供了统一的系统框架,有利于推动机器人加工向高质量需求场景发展。
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来源期刊
Journal of Manufacturing Systems
Journal of Manufacturing Systems 工程技术-工程:工业
CiteScore
23.30
自引率
13.20%
发文量
216
审稿时长
25 days
期刊介绍: The Journal of Manufacturing Systems is dedicated to showcasing cutting-edge fundamental and applied research in manufacturing at the systems level. Encompassing products, equipment, people, information, control, and support functions, manufacturing systems play a pivotal role in the economical and competitive development, production, delivery, and total lifecycle of products, meeting market and societal needs. With a commitment to publishing archival scholarly literature, the journal strives to advance the state of the art in manufacturing systems and foster innovation in crafting efficient, robust, and sustainable manufacturing systems. The focus extends from equipment-level considerations to the broader scope of the extended enterprise. The Journal welcomes research addressing challenges across various scales, including nano, micro, and macro-scale manufacturing, and spanning diverse sectors such as aerospace, automotive, energy, and medical device manufacturing.
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