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Method for the Investigation of Mold Filling in the Fiber Injection Molding Process Based on Image Processing

机译:基于图像处理的纤维注射成型过程中填充模具填充的方法

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Fiber Injection Molding is an innovative process for manufacturing 3D fiber formed parts. Within the process fibers are injected in a special mold through a movable nozzle by an air stream. This process allows a resource efficient production of near net-shape long fiber-preforms without cutting excess. For the properties of the preforms the mold filling is decisive, but current state of the art lacks methods to monitor mold filling online. In this paper a system for monitoring the mold filling based on image processing methods is presented. Therefor a camera and back-lighting has been integrated into a fiber injection mold. The detected filling level and fiber distribution is passed to the PLC of the fiber injection molding machine, which allows the operator to monitor the current mold filling state by means of a visual display. The image processing approach consists of preprocessing, binarization and segmentation. For the preprocessing and binarization several methods including a k-means algorithm, the Otsu thresholding method and a convolutional artificial neural network have been implemented and evaluated. Additionally the illumination of the mold has been investigated and found to have a very large influence on the quality of the results of all investigated methods. The results of the binarization are evaluated on the basis of ground truth images, where an absolute difference between labeled and binarized images is formed and the number of misinterpreted pixels is counted. Among the investigated methods, the method based on the Otsu threshold has been found to be the most efficient with regard to the achievable performance as well as to the correct detection of the current filling. The investigated approach allows the acquisition of more data about the mold filling process to improve models.
机译:纤维注塑成型是制造3D纤维成形部件的创新过程。在工艺纤维内通过空气流通过可移动喷嘴注入特殊模具中。该过程允许资源有效地生产近净形长纤维预制件,而无需切割过量。对于预制件的性质,模具填充是决定性的,但是本领域的电流状态缺乏在线监测模具填充的方法。在本文中,提出了一种基于图像处理方法监测模具填充的系统。有一种相机和背光已集成到光纤注塑模具中。检测到的填充水平和光纤分配通过光纤注塑机的PLC,这允许操作者通过视觉显示器监测电流模具填充状态。图像处理方法包括预处理,二值化和分割。对于预处理和二值化几种方法,包括K-Means算法,已经实施和评估了OTSU阈值方法和卷积人工神经网络。另外,已经研究了模具的照明,并发现对所有研究方法的结果的质量具有非常大的影响。基于地理图像评估二值化的结果,其中形成标记和二值化图像之间的绝对差异,并且计数误解的像素的数量。在研究方法中,已经发现基于OTSU阈值的方法是在可实现的性能方面是最有效的,以及对电流填充的正确检测。调查方法允许获取有关模具灌装过程的更多数据以改善模型。

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