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Research on PTC Cable Materials Based on Principal Component Analysis and Quantitative Correspondence Factor Analysis Method in Big Data Technology

机译:基于主成分分析和大数据技术定量对应因子分析方法的PTC电缆材料研究

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To analyse the huge production data scientifically, the records of enterprises were used. Principal component analysis techniques and quantitative corresponding factor analysis techniques in big data technology were applied. The primary and secondary factors affecting the design performance of PTC cable materials and the influence laws were found. Through analysis, the best process recipe conditions in the existing data were obtained. The results showed that the optimization of the PTC cable material formulation process effectively guided industrial production and met different practical needs. In summary, multi-factor and multi-level visual design and analysis methods, artificial neural network models and big data technology have good qualitative and quantitative analysis functions. A complex process optimization problem with four influencing factors and three indicators is solved.
机译:为了科学地分析巨大的生产数据,使用企业的记录。应用了大数据技术中的主要成分分析技术和定量对应的因子分析技术。发现了影响PTC电缆材料设计性能的主要和二次因素及影响法。通过分析,获得了现有数据中的最佳过程配方条件。结果表明,PTC电缆材料配方工艺的优化有效地引导了工业生产并达到了不同的实用需求。总之,多因素和多级视觉设计和分析方法,人工神经网络模型和大数据技术具有良好的定性和定量分析功能。解决了四个影响因素和三个指标的复杂过程优化问题。

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