Prediction and clustering models based on multivariate parameters

Ying-lan Fang, Qilin Sun, Pengfei Zhang
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Abstract

In the multi-parameter sequence in the industrial electrolyzer, in order to solve the problem that the traditional method is difficult to predict the nonlinear features and obtain the hidden feature information in the sequence, this paper uses the VARMA model to fit the multi-parameter features and combines the Time2Vec vector to embed the time form as the neural network. Augmented data sources for automated feature engineering and generalization of deep learning techniques; multivariate parameters were dimensionally reduced and KS tests were used to capture correlations in order to explore relationships between electrolyzers. The experimental results show that the model is superior to other comparative models in terms of computational efficiency, accuracy, and network structure, which verifies the effectiveness of its prediction in the multi-parameter field.
基于多变量参数的预测和聚类模型
在工业电解槽多参数序列中,为了解决传统方法难以预测序列中的非线性特征和获取序列中隐藏的特征信息的问题,本文采用VARMA模型对多参数特征进行拟合,并结合Time2Vec向量作为神经网络嵌入时间形式。增强数据源用于自动化特征工程和深度学习技术的推广多变量参数被降维,并使用KS测试来捕获相关性,以探索电解槽之间的关系。实验结果表明,该模型在计算效率、精度和网络结构等方面均优于其他比较模型,验证了其在多参数领域预测的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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