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Vision-based defect detection in laser metal deposition process

机译:激光金属沉积过程中基于视觉的缺陷检测

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摘要

Purpose - Laser metal deposition (LMD) is a type of additive manufacturing process in which the laser is used to create a melt pool on a substrate to which metal powder is added. The powder is melted within the melt pool and solidified to form a deposited track. These deposited tracks may contain porosities or cracks which affect the functionality of the part. When these defects go undetected, they may cause failure of the part or below par performance in their applications. An on demand vision system is required to detect defects in the track as and when they are formed. This is especially crucial in LMD applications as the part being repaired is typically expensive. Using a defect detection system, it is possible to complete the LMD process in one run, thus minimizing cost. The purpose of this paper is to summarize the research on a low-cost vision system to study the deposition process and detect any thermal abnormalities which might signify the presence of a defect. Design/methodology/approach - During the LMD process, the track of deposited material behind the laser is incandescent due to heating by the laser; also, there is radiant heat distribution and flow on the surfaces of the track. An SLR camera is used to obtain images of the deposited track behind the melt pool. Using calibrated RGB values and radiant surface temperature, it is possible to approximate the temperature of each pixel in the image. The deposited track loses heat gradually through conduction, convection and radiation. A defect-free deposit should show a gradual decrease in temperature which enables the authors to obtain a reference cooling curve using standard deposition parameters. A defect, such as a crack or porosity, leads to an increase in temperature around the defective region due to interruption of heat flow. This leads to deviation from the reference cooling curve which alerts the authors to the presence of a defect. Findings - The temperature gradient was obtained across the deposited track during LMD. Linear least squares curve fitting was performed and residual values were calculated between experimental temperature values and line of best fit. Porosity defects and cracks were simulated on the substrate during LMD and irregularities in the temperature gradients were used to develop a defect detection model. Originality/value - Previous approaches to defect detection in LMD typically concentrate on the melt pool temperature and dimensions. Due to the dynamic and violent nature of the melt pool, consistent and reliable defect detection is difficult. An alternative method of defect detection is discussed which does not involve the melt pool and therefore presents a novel method of detecting a defect in LMD.
机译:目的-激光金属沉积(LMD)是一种增材制造工艺,其中,激光用于在添加了金属粉末的基板上形成熔池。粉末在熔池中熔化并固化形成沉积的痕迹。这些沉积的轨迹可能包含影响零件功能的孔隙或裂纹。当这些缺陷未被发现时,它们可能会导致零件故障或在其应用中低于标准性能。需要随需应变的视觉系统来检测轨道中的缺陷,以及何时形成缺陷。这在LMD应用中尤其重要,因为要维修的零件通常很昂贵。使用缺陷检测系统,可以一次完成LMD处理,从而将成本降至最低。本文的目的是总结对低成本视觉系统的研究,以研究沉积过程并检测可能表明缺陷存在的任何热异常。设计/方法/方法-在LMD过程中,由于激光加热,在激光后面沉积的材料的轨迹是白炽的。同样,在轨道表面上存在辐射热分布和流动。单反相机用于获取熔池后面沉积轨迹的图像。使用校准的RGB值和辐射表面温度,可以估算图像中每个像素的温度。沉积的轨道通过传导,对流和辐射逐渐散失热量。无缺陷的沉积物应显示出逐渐降低的温度,这使作者能够使用标准沉积参数获得参考冷却曲线。由于热流的中断,诸如裂缝或孔隙的缺陷导致缺陷区域周围的温度升高。这导致偏离参考冷却曲线,从而提醒作者存在缺陷。发现-在LMD期间,在沉积的轨道上获得了温度梯度。进行线性最小二乘曲线拟合,并在实验温度值和最佳拟合线之间计算残差值。在LMD上模拟了基板上的孔隙缺陷和裂纹,并使用温度梯度的不规则性建立了缺陷检测模型。原创性/价值-LMD中缺陷检测的先前方法通常集中在熔池温度和尺寸上。由于熔池的动态和剧烈的特性,很难始终如一地可靠地检测缺陷。讨论了一种不包含熔池的缺陷检测方法,因此提出了一种检测LMD中缺陷的新颖方法。

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