基于XGBoost的制造业4.0电能表智能校准测试

Evan Enza Rizqi, Cutifa Safitri
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引用次数: 0

摘要

以制造电表为核心业务的制造公司,拥有计量行业的检测系统,即校准检测。电表校准测试的一部分是验证测试,它采用与标准电表试验台比较的方法来计算测量的精度误差。但问题是,进行该测试需要较长的周期时间,并且在不增加标准仪表校准试验台的情况下难以提高生产能力,且投资昂贵。支持工业4.0的智能工厂概念可以为使用人工智能和机器学习模型的信息技术研究开辟机会,以创建智能测试的想法来解决这一问题。本研究需要在校准测试台机上收集数据,然后进行处理以找到模型预测,以便使用XGBoost回归实现智能测试,并以超参数调优方法作为本研究的目标。在本研究结果中,与文献综述中定义的其他场景模型相比,使用本案例中实现的超参数调优和优化方法对XGBoost进行评估,可以提高准确性和RMSE数据测试建模。因此,这是一个很好的解决方案,可以应用于计量制造业,特别是电能表制造校准测试中的验证测试,通过实施智能制造校准测试,可以实现更快,更低的投资测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent Calibration Testing of Electricity Meter using XGBoost for Manufacturing 4.0
The manufacturing company with a core business of manufacturing electricity meters has a testing system for the metrology industry, namely calibration testing. The part of calibration testing on an electricity meter is the verification test, which uses the method of comparing it to the standard meter test bench to calculate the accuracy error of the measurement. However, the problem is that carrying out this test requires a long cycle time, and it is difficult to increase production capacity without adding a standard meter calibration test bench which has an expensive investment. The smart factory concept that supports industry 4.0 can open up opportunities for research on information technology using artificial intelligence with machine learning models to solve this problem with the idea of creating intelligent testing. This research requires data collection on a calibration test bench machine, then processed to find model predictions so that they can be implemented into an intelligent test using the XGBoost Regression with Hyperparameter Tuning and Optimization methods as the Goal of this Research. In the results of this research, the evaluation of the XGBoost using the Hyperparameter Tuning and Optimization method, which is implemented in this case, could improve the accuracy and RMSE data testing modelling comparing other scenario models as defined before in the literature review. So, this can be an excellent solution to be applied in metrology manufacturing, especially verification tests in Manufacturing Calibration Testing on Electricity Meter, which is faster and low-investment testing with the implementation of an Intelligent Manufacturing Calibration Test.
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