论文标题
物体形状误差建模和在早期设计阶段的模拟通过变形高斯随机场
Object shape error modelling and simulation during early design stage by morphing Gaussian Random Fields
论文作者
论文摘要
物体的几何变化和维数是由制造过程中不可避免的不确定性引起的,并且通常导致产品质量问题。在设计阶段的早期,未能对效果对象形状误差进行建模,即零件的几何和维数错误,从而抑制了预测此类质量问题的能力;因此,在冻结设计后会导致昂贵的设计更改。建模和模拟对象形状误差的最新方法论的缺陷保真度,数据多功能性和以设计师为中心的方法有限,可以防止其在早期设计阶段的有效应用。克服这些局限性,本文介绍了一种新型的变形高斯随机场(MGRF)方法,用于对象形状误差建模和模拟。 MGRF方法论具有(i)高缺陷保真度,并能够模拟包括局部和全局变形以及技术模式在内的各种零件缺陷; (ii)高数据多功能性,可以在有限的数据可用性的约束下有效地模拟非理想零件,并可以利用历史非理想零件数据; (iii)设计师中心的功能,例如执行“如果?”分析实际相关的缺陷; (iv)能够生成符合统计形式公差规范的非理想零件的能力。上述功能使MGRF方法论能够准确模拟和模拟对象形状变化对早期设计阶段产品质量的影响。这是通过首先实现的,在零件偏离其设计名义上使用高斯随机场的偏差中建模空间相关性,然后利用建模的空间相关性来通过条件模拟生成非理想的部分。使用运动型汽车门零件证明了开发的MGRF方法及其优势的实际应用。
Geometric and dimensional variations in objects are caused by inevitable uncertainties in manufacturing processes and often lead to product quality issues. Failing to model the effect object shape errors, i.e., geometric and dimensional errors of parts, early during design phase inhibits the ability to predict such quality issues; consequently leading to expensive design changes after freezing of design. State-of-Art methodologies for modelling and simulating object shape error have limited defect fidelity, data versatility, and designer centricity that prevent their effective application during early design phase. Overcoming these limitations a novel Morphing Gaussian Random Field (MGRF) methodology for object shape error modelling and simulation is presented in this paper. The MGRF methodology has (i) high defect fidelity and is capable of simulating various part defects including local and global deformations, and technological patterns; (ii) high data versatility and can effectively simulate non-ideal parts under the constraint of limited data availability and can utilise historical non-ideal part data; (iii) designer centric capabilities such as performing `what if?' analysis of practically relevant defects; and (iv) capability to generate non-ideal parts conforming to statistical form tolerance specification. The aforementioned capabilities enable MGRF methodology to accurately model and simulate the effect of object shape variations on product quality during the early design phase. This is achieved by first, modelling the spatial correlation in the deviations of the part from its design nominal using Gaussian Random Field and then, utilising the modelled spatial correlations to generate non-ideal parts by conditional simulations. Practical applications of developed MGRF methodology and its advantages are demonstrated using sport-utility-vehicle door parts.