1. 昆明理工大学 机构 机电工程学院,昆明,650500
2. 昆船智能技术股份有限公司,昆明,650506
[ "阴艳超,教授,博士," ]
[ "刘孝保,副教授,硕士生导师,博士," ]
纸质出版:2025
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阴艳超, 施成娟, 邹朝普, 等. 融合Seq2Seq与时序注意力机制的工艺质量预测[J]. 机械科学与技术, 2025,44(3):453-464.
阴艳超, 施成娟, 邹朝普, et al. Process Quality Prediction Combining Seq2Seq and Temporal Attention Mechanisms[J]. Mechanical Science and Technology for Aerospace Engineering, 2025, 44(3): 453-464.
阴艳超, 施成娟, 邹朝普, 等. 融合Seq2Seq与时序注意力机制的工艺质量预测[J]. 机械科学与技术, 2025,44(3):453-464. DOI: 10.13433/j.cnki.1003-8728.20230181.
阴艳超, 施成娟, 邹朝普, et al. Process Quality Prediction Combining Seq2Seq and Temporal Attention Mechanisms[J]. Mechanical Science and Technology for Aerospace Engineering, 2025, 44(3): 453-464. DOI: 10.13433/j.cnki.1003-8728.20230181.
针对流程工业生产过程整体工序繁多,工序间耦合严重,多维工艺数据间时序关系及其复杂等问题,提出一种融合Seq2Seq与时序注意力机制的高维多尺度工艺过程质量预测方法。在分析多工序工艺数据特点,以及运用Seq2Seq模型进行编码解码过程面临的难题的基础上,引入时序注意力机制来构造长距离变化的时域信息矩阵。设计卷积神经网络和BiLSTM作为编码组件,学习工艺过程时序数据的工艺参数关联性和双向时序关系等潜在深度特征,并结合时序注意力机制抽取关键信息,实现对工艺质量相关的工艺参数时序数据的非线性相关特征和时序依赖性的自适应地学习。最后,通过对制丝生产工艺过程质量的单输出和多输出预测实验,验证了所提算法的实用性和有效性,为多工序耦合的流程制造过程质量的精准预测提供了方法和实现途径。
Aiming at the problems of many processes
serious coupling between processes
and complexity of multivariable processing data
a high-dimensional and multi-scale process quality prediction method based on Seq2Seq temporal attention mechanism is proposed. Based on the analysis of the characteristics of multi-process process data and the problems encountered in the process of encoding and decoding by using Seq2Seq model
the sequential attention mechanism was introduced to construct the time-domain information matrix of long-distance variation
and the convolutional neural network and BiLSTM were designed as the encoder components. At the same time
the potential depth features such as process parameter correlation and bidirectional sequence relationship of process timing data were learned
and key information was extracted by using sequence attention mechanism
so as to realize adaptive learning of nonlinear correlation characteristics and sequence dependence of process parameter timing data related to process quality. Finally
the practicability and effectiveness of the proposed method were verified by prediction experiments on the quality of silk manufacturing process. The method provides the implementation approach for accurate quality prediction of multi-process coupling process.
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