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Sensor Placement Design Strategy and Quality Estimation in Modern Car Body Production Using Stochastic Finite Element Methods

机译:随机有限元方法在现代车身生产中的传感器布置设计策略和质量评估

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For automotive body panel’s producers, any failures of tooling or formed components pose significant risk in the forms of costly repairs and production delays. Accordingly, methods of reducing the risk of tooling damage and part failure through predictive measures are of great value. Such predictive methods are particularly beneficial in optimizing forming operations when process parameters such as friction and material behavior are uncertain or variable. AUDI has invented the Intelligent Tool which uses sensor measurements to observe the quality of the part and adjusts actuators to eliminate differences between desired quality and actual quality. A key question in planning such intelligent tool systems is the appropriate number and positions of sensors to maximize information content.A stochastic finite element method-based approach has been developed in the scope of this work to critically assess the observability of split and wrinkling type failures, based on laser sensor draw-in measurements. Furthermore, a design strategy for the number of sensors and the respective positions around the blank is proposed which enables an accurate yet cost-effective acquisition of process data. The methodology is applied to the tailgate of an AUDI Model A4. Stochastic finite element simulations are computed in AutoForm. The quality of the part under varying process parameters is evaluated and critical zones are identified. A principal component analysis is utilized to reveal that correlations exist between the quality criteria; therefore, only principal quality criteria need to be observed in order to estimate global part quality. Regression models are trained to connect quality criteria to flange draw-in measurements and a subset selection algorithm is used to find the optimal sensor layout which delivers the highest information content.
机译:对于车身面板的生产商而言,任何工具或成型组件故障都可能带来高昂的维修和生产延误风险。因此,通过预测措施降低工具损坏和零件故障风险的方法具有重要价值。当诸如摩擦和材料行为的过程参数不确定或可变时,这种预测方法在优化成形操作中特别有益。奥迪(AUDI)发明了智能工具,该工具使用传感器测量值来观察零件的质量并调整执行器以消除所需质量和实际质量之间的差异。规划此类智能工具系统的关键问题是传感器的适当数量和位置,以最大化信息含量。在这项工作范围内,开发了一种基于随机有限元方法的方法,以严格评估裂痕和起皱类型故障的可观察性,基于激光传感器的插入测量。此外,提出了一种用于传感器的数量以及围绕毛坯的各个位置的设计策略,该策略使得能够精确而经济地获取过程数据。该方法适用于A4型AUDI的后挡板。随机有限元模拟是在AutoForm中计算的。在变化的工艺参数下评估零件的质量,并确定关键区域。利用主成分分析来揭示质量标准之间存在相关性。因此,仅需遵守主要质量标准即可估算整体零件质量。训练了回归模型,以将质量标准连接到法兰插入测量值,并且使用子集选择算法来找到提供最高信息含量的最佳传感器布局。

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