数据受限条件下的装配机产品质量控制

Fatemeh Kakavandi, R. D. Reus, C. Gomes, Negar Heidari, A. Iosifidis, P. Larsen
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引用次数: 2

摘要

在批量生产的产品评估中,需要对一定数量的产品进行侵入式的调查,因此对装配机中的产品质量进行评估既关键又耗时。然而,连续制造以高效率和可追溯性确保了装配过程中的产品质量评估。本文提出了一种针对工业用例的质量评估方法。首先,数据是根据两个指标和专家知识准备的。然后通过对相关数据的分析,采用一类分类和二元分类两种数据分类方法对产品质量进行评价。最后,选择最有效的模型来预测产品标签并偏离正常产品的异常。对于所研究的用例和有限数量的产品,二元分类器保证检测出100%的缺陷产品。所提出的方法可以为工程师和操作员提供可理解的提取过程知识,因此可以适用于高速生产线,其中大数据量和过程复杂性可能存在问题。
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Product Quality Control in Assembly Machine under Data Restricted Settings
Evaluating the product quality in an assembly machine is critical yet time-consuming since, in product assessment in batch manufacturing, a certain amount of products should be investigated in an invasive manner. However, continuous manufacturing ensures product quality assessment during assembly with high efficiency and traceability. This paper proposes a quality assessment method for an industrial use case. First, the data is prepared based on two indicators and expert knowledge. Then two data classification approaches (one-class classification and binary classification) are applied to evaluate the products’ quality by analysing the related data. Finally, the most efficient model is selected to predict the product labels and deviate anomalies from normal products. For the studied use case and the limited number of products, the binary classifier guarantees to detect 100% of defective products. The proposed approach can provide the engineers and operators with understandable extracted process knowledge, and can therefore be adapted to a high-speed manufacturing line where large data volume and process complexity can be problematic.
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