RP-CATE: Recurrent Perceptron-based Channel Attention Transformer Encoder for Industrial Hybrid Modeling
Haoran Yang, Yinan Zhang, Wenjie Zhang, Dongxia Wang, Peiyu Liu, Yuqi Ye, Kexin Chen, Wenhai Wang

TL;DR
RP-CATE is a novel transformer-based model that enhances industrial hybrid modeling by integrating a recurrent perceptron and channel attention, effectively capturing dataset associations and improving predictive performance.
Contribution
The paper introduces RP-CATE, a new architecture replacing self-attention with channel attention and incorporating a recurrent perceptron, tailored for complex industrial modeling tasks.
Findings
RP-CATE outperforms baseline models in chemical engineering experiments.
The proposed Pseudo-Image Data and Pseudo-Sequential Data improve dataset representation.
RP-CATE achieves higher accuracy and interpretability in industrial hybrid modeling.
Abstract
Nowadays, industrial hybrid modeling which integrates both mechanistic modeling and machine learning-based modeling techniques has attracted increasing interest from scholars due to its high accuracy, low computational cost, and satisfactory interpretability. Nevertheless, the existing industrial hybrid modeling methods still face two main limitations. First, current research has mainly focused on applying a single machine learning method to one specific task, failing to develop a comprehensive machine learning architecture suitable for modeling tasks, which limits their ability to effectively represent complex industrial scenarios. Second, industrial datasets often contain underlying associations (e.g., monotonicity or periodicity) that are not adequately exploited by current research, which can degrade model's predictive performance. To address these limitations, this paper proposes…
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Taxonomy
TopicsModel Reduction and Neural Networks · Machine Learning in Materials Science · Fault Detection and Control Systems
