基于潜在神经网络的风洞测量模型3d打印异常识别

Pawel Tomilo, J. Pytka, J. Józwik, E. Gnapowski, Tomasz Muszyński, A. Łukaszewicz
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引用次数: 0

摘要

本文研究了一种基于描述3D打印头运动的运动学参数测量来诊断和监测3D打印过程的新方法。该研究的目的是使用无监督学习方法创建一个神经网络模型,其任务是将信号特征(加速度计和陀螺仪数据)映射到潜在空间。在给定的3D打印执行过程中,进行了描述打印机头运动运动学的显著量的测量。提出的潜在人工神经网络算法在IMUMETER测量装置的微处理器上实现,并进行了测试,在测试过程中,测量系统采集数据,神经网络模型映射特征,将异常信号与典型信号分离。该结果允许对特征进行映射,并分析在风洞中测试的机翼截面模型的样品打印输出中的异常情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Latent Neural Network For Recognition of Annomalies in 3D-Print of a Scale Model for Wind Tunnel Measurements
The paper concerns a new method of diagnosing and monitoring 3D printing processes based on measurements of kinematic parameters describing the movement of the 3D printer head. The aim of the research was to create a neural network model using unsupervised learning methods, whose task is to map signal characteristics (accelerometer and gyroscope data) to latent space. The measurement of significant quantities describing the kinematics of printer head movement was carried out during the execution of the given 3D print. The proposed latent artificial neural network algorithm was implemented in the microprocessor of the IMUMETER measuring device and tests were carried out during which the measuring system collected data and the neural network model mapped the features in such a way that it separated signals with anomalies from typical signals. The results allowed for the mapping of features and the analysis of the occurrence of anomalies on a sample printout of a wing section model for testing in a wind tunnel.
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