Machine Learning Applied to an Intelligent and Adaptive Robotic Inspection Station

Luis Variz, Luis Piardi, P. J. Rodrigues, P. Leitão
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引用次数: 6

Abstract

Industry 4.0 promotes the use of emergent technologies, such as Internet of Things (IoT), Big Data, artificial intelligence (AI) and cloud computing, sustained by cyber-physical systems to reach smart factories. The idea is to decen-tralize the production systems and allow to reach monitoring, adaptation and optimization to be made in real time, based on the large amount of data available at shop floor that feed the use of machine learning techniques. This technological revolution will bring significant productivity gains, resources savings and reduced maintenance costs, as machines will have information to operate more efficiently, adaptable and following demand fluctuations. This paper discusses the application of supervised Machine Learning techniques allied with artificial vision, to implement an intelligent, collaborative and adaptive robotic inspection station, which carries out the quality control of Human Machine Interface (HMI) consoles, equipped with pressure buttons and LCD displays. Machine learning techniques were applied for the recognition of the operator’s face, to classify the type of HMI console to be inspected, to classify the state condition of the pressure buttons and detect anomalies in the LCD displays. The developed solution reaches promising results, with almost 100% accuracy in the correct classification of the consoles and anomalies in the pressure buttons, and also high values in the detection of defects in the LCD displays.
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机器学习在智能自适应机器人检测站中的应用
工业4.0促进了新兴技术的使用,如物联网(IoT)、大数据、人工智能(AI)和云计算,由网络物理系统支持,以达到智能工厂。其理念是分散生产系统,并基于车间可用的大量数据实时监控、调整和优化,这些数据可以为机器学习技术的使用提供支持。这一技术革命将带来显著的生产力提高、资源节约和维护成本降低,因为机器将拥有更有效运行的信息,适应能力更强,并能顺应需求波动。本文讨论了结合人工视觉的监督机器学习技术的应用,以实现一个智能、协作和自适应的机器人检测站,该检测站对配备压力按钮和LCD显示器的人机界面(HMI)控制台进行质量控制。机器学习技术用于识别操作员的面部,分类要检查的HMI控制台类型,分类压力按钮的状态状态,并检测LCD显示器中的异常。开发的解决方案取得了令人满意的结果,在控制台和压力按钮异常的正确分类方面几乎具有100%的准确性,并且在LCD显示器缺陷的检测方面也具有很高的价值。
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