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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Dual Attention-Based Encoder–Decoder: A Customized Sequence-to-Sequence Learning for Soft Sensor Development
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Dual Attention-Based Encoder–Decoder: A Customized Sequence-to-Sequence Learning for Soft Sensor Development

机译:基于双重关注的编码器 - 解码器:用于软传感器开发的自定义序列 - 序列学习

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摘要

Soft sensor techniques have been applied to predict the hard-to-measure quality variables based on the easy-to-measure process variables in industry scenarios. Since the products are usually produced with prearranged processing orders, the sequential dependence among different variables can be important for the process modeling. To use this property, a dual attention-based encoder-decoder is developed in this article, which presents a customized sequence-to-sequence learning for soft sensor. We reveal that different quality variables in the same process are sequentially dependent on each other and the process variables are natural time sequences. Hence, the encoder-decoder is constructed to explicitly exploit the sequential information of both the input, that is, the process variables, and the output, that is, the quality variables. The encoder and decoder modules are specified as the long short-term memory network. In addition, since different process variables and time points impose different effects on the quality variables, a dual attention mechanism is embedded into the encoder-decoder to concurrently search the quality-related process variables and time points for a fine-grained quality prediction. Comprehensive experiments are performed based on a real cigarette production process and a benchmark multiphase flow process, which illustrate the effectiveness of the proposed encoder-decoder and its sequence to sequence learning for soft sensor.
机译:已应用软传感器技术以基于行业情景中易于测量的过程变量来预测难以测量的质量变量。由于产品通常具有预先加工的处理订单,因此不同变量之间的顺序依赖对于过程建模可能是重要的。要使用此属性,本文开发了一种基于双重关注的编码器 - 解码器,它为软传感器提供了一种定制的序列到序列学习。我们揭示了相同过程中的不同质量变量顺序地依赖于彼此,并且过程变量是自然时序列。因此,构造编码器解码器以明确地利用输入,即处理变量和输出的顺序信息,即质量变量。编码器和解码器模块被指定为长短短期内存网络。另外,由于不同的处理变量和时间点对质量变量对不同的影响产生不同的影响,因此将双重注意机制嵌入到编码器解码器中以同时搜索质量相关的处理变量和用于细粒质量预测的时间点。综合实验是基于真实卷烟生产过程和基准多相流程流程进行的,该流量流程是说明所提出的编码器解码器及其序列对软传感器的序列学习的有效性。

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