Mattia Casini, Paolo De Angelis, Marco Porrati, Paolo Vigo, Matteo Fasano, Eliodoro Chiavazzo, Luca Bergamasco
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引用次数: 0
摘要
随着工业 4.0 时代的到来,人工智能(AI)为制造和加工的数字化创造了有利环境,帮助各行业实现自动化和优化运营。在这项工作中,我们将重点放在制动钳质量控制操作的实际案例研究上,该操作通常由人工检测完成,需要专用的处理系统,生产速度慢,因此能源利用效率低。我们报告了基于深度卷积神经网络(D-CNN)开发的机器学习(ML)方法,该方法可自动从图像中提取信息,实现流程自动化。针对目标工业测试案例开发了一套完整的工作流程。为了在模型的准确性和计算需求之间找到最佳折衷方案,我们测试了几种 D-CNN 架构。结果表明,明智地选择带有适当训练的 ML 模型,可以实现快速、准确的质量控制;因此,可以针对所考虑问题的 ML 驱动版本实施所建议的工作流程。这最终将能在时间消耗和能源使用方面更好地管理可用资源。
Machine Learning and image analysis towards improved energy management in Industry 4.0: a practical case study on quality control
With the advent of Industry 4.0, Artificial Intelligence (AI) has created a favorable environment for the digitalization of manufacturing and processing, helping industries to automate and optimize operations. In this work, we focus on a practical case study of a brake caliper quality control operation, which is usually accomplished by human inspection and requires a dedicated handling system, with a slow production rate and thus inefficient energy usage. We report on a developed Machine Learning (ML) methodology, based on Deep Convolutional Neural Networks (D-CNNs), to automatically extract information from images, to automate the process. A complete workflow has been developed on the target industrial test case. In order to find the best compromise between accuracy and computational demand of the model, several D-CNNs architectures have been tested. The results show that, a judicious choice of the ML model with a proper training, allows a fast and accurate quality control; thus, the proposed workflow could be implemented for an ML-powered version of the considered problem. This would eventually enable a better management of the available resources, in terms of time consumption and energy usage.
期刊介绍:
The journal Energy Efficiency covers wide-ranging aspects of energy efficiency in the residential, tertiary, industrial and transport sectors. Coverage includes a number of different topics and disciplines including energy efficiency policies at local, regional, national and international levels; long term impact of energy efficiency; technologies to improve energy efficiency; consumer behavior and the dynamics of consumption; socio-economic impacts of energy efficiency measures; energy efficiency as a virtual utility; transportation issues; building issues; energy management systems and energy services; energy planning and risk assessment; energy efficiency in developing countries and economies in transition; non-energy benefits of energy efficiency and opportunities for policy integration; energy education and training, and emerging technologies. See Aims and Scope for more details.