Automatic generation of glass insulator formulations based on time-scale uniformity

Yongjian Fan, Fengyu Yang, Qing Du
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Abstract

The glass insulator formulation is a major factor affecting the production yield of glass insulators. In actual production, there are multiple production stages, such as incoming, laboratory and manufacturing, and there are inconsistencies in the corresponding time scales of the raw materials in the formula at different production stages. During the production process, the inconsistency in the time scale of each production stage causes the ratio of raw materials in the formulation to change frequently, which has a significant impact on the quality of the product. To solve the current problem that the generation of glass insulator recipes can only be achieved manually, which is time-consuming and labourintensive, and is prone to errors due to the inconsistent time scales of each production stage. we propose a method for automatic generation of glass insulator recipes based on uniform time scales in combination with machine learning, and evaluate the results of the method using MAPE and RMSE metrics. It is concluded that the time-scale-uniform glass insulator recipe generation method is more effective than the method without time-scale uniformity.
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基于时间尺度均匀性的玻璃绝缘子配方自动生成
玻璃绝缘子配方是影响玻璃绝缘子成品率的主要因素。在实际生产中,存在来料、实验室、制造等多个生产阶段,不同生产阶段配方中原料对应的时间尺度存在不一致的情况。在生产过程中,由于各生产阶段时间尺度的不一致,导致配方中原料的配比频繁变化,对产品质量产生重大影响。解决目前玻璃绝缘子配方只能手工生成,耗时耗力,且各生产阶段时间尺度不一致容易出错的问题。我们提出了一种结合机器学习的基于统一时间尺度的玻璃绝缘子配方自动生成方法,并使用MAPE和RMSE指标评估该方法的结果。结果表明,具有时标均匀性的玻璃绝缘子配方生成方法比不具有时标均匀性的方法更有效。
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