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Application of Machine Learning Methods to the Open-Loop Control of a Freeform Fabrication System

机译:机器学习方法在自由形式制造系统的开环控制中的应用

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Freeform fabrication of complete functional devices requires the fabrication system to achieve well-controlled deposition of many materials with widely varying material properties. In a research setting, material preparation processes are not highly refined, causing batch property variation, and cost and time may prohibit accurate quantification of the relevant material properties, such as viscosity, elasticity, etc. for each batch. Closed-loop control based on the deposited material road is problematic due to the difficulty in non-contact measurement of the road geometry, so a labor-intensive calibration and open-loop control method is typically used. In the present work, k-Nearest Neighbor and Support Vector Machine (SVM) machine learning algorithms are applied to the problem of generating open-loop control parameters which produce desired deposited material road geometry from a description of a given material and tool configuration comprising a set of qualitative and quantitative attributes. Training data for the algorithms is generated in the course of ordinary use of the SFF system as the results of manual calibration of control parameters: Given the large instance space and the small training data set compiled thus far, the performance is quite promising, although still insufficient to allow complete automation of the calibration process. The SVM-based approach produces tolerable results when tested with materials not in the training data set. When control parameters produced by the learning algorithms are used as a starting point for manual calibration, significant operator time savings and material waste reduction may be achieved.
机译:完整功能装置的自由形式制造需要制造系统,以实现具有广泛改变的材料特性的许多材料的良好控制的沉积。在研究环境中,材料制备过程不高度精细,引起批量性能变化,并且成本和时间可能禁止准确地定量相关材料特性,例如每批的粘度,弹性等。由于道路几何的非接触式测量难度,基于沉积材料道的闭环控制是有问题的,因此通常使用劳动密集型校准和开环控制方法。另外,在本工作中,k-最近邻和支持向量机(SVM)的机器学习算法应用于产生其产生期望的沉积材料的道路几何形状从一个给定的材料和工具配置包含的描述开环控制参数的问题集的定性和定量属性。在普通使用SFF系统的过程中产生算法的训练数据作为控制参数的手动校准的结果:给定到目前为止编译的大型实例空间和小型训练数据集,但仍然很有希望不足以允许完全自动化校准过程。基于SVM的方法在使用不在训练数据集中的材料进行测试时产生可容忍的结果。当学习算法产生的控制参数用作手动校准的起始点时,可以实现显着的操作员时间节省和材料废物减少。

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