用于工业过程时间序列预测的物理信息库普曼网络

IF 3.9 3区 工程技术 Q2 ENGINEERING, CHEMICAL
Hang Liu, Gaowei Yan*, Lifeng Cao, Suxia Ma, Guanjia Zhao and Zhongyuan Liu, 
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引用次数: 0

摘要

工业时间序列数据记录了关键参数的动态变化,准确预测对实时监控和生产优化至关重要。然而,深度学习模型在复杂的工业环境中遇到了重大挑战,包括对长期依赖关系的建模不足,以及在不同操作条件和噪声干扰下的有限泛化能力。为了克服这些挑战,本文引入了一种物理通知库普曼网络(PIKN),该网络将库普曼理论的全局线性化能力与物理先验知识相结合,从而提高了模型的预测精度和泛化能力。具体而言,PIKN采用神经网络学习观测函数,将非线性时间序列映射到库普曼潜空间,从而实现对动态行为的线性预测。此外,从简化的力学方程中导出的物理正则化项被纳入损失函数,以确保模型符合物理定律,从而提高其对噪声的鲁棒性和对不同操作条件的适应性。实验结果表明,PIKN在多个工业数据集上具有较好的预测精度和较强的泛化能力,从而验证了其在工业时间序列预测中的有效性和优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Physics-Informed Koopman Networks for Industrial Process Time-Series Prediction

Physics-Informed Koopman Networks for Industrial Process Time-Series Prediction

Physics-Informed Koopman Networks for Industrial Process Time-Series Prediction

Industrial time series data record the dynamic changes of key parameters, and accurate prediction is crucial for real-time monitoring and production optimization. However, deep learning models encounter significant challenges in complex industrial environments, including inadequate modeling of long-term dependencies and limited generalization capabilities under varying operational conditions and noise interference. To overcome these challenges, this paper introduces a physics-informed Koopman network (PIKN) that integrates the global linearization capabilities of Koopman theory with physical prior knowledge, thereby enhancing the model’s prediction accuracy and generalization. Specifically, PIKN employs a neural network to learn the observation function, mapping the nonlinear time series to the Koopman latent space, which enables linear prediction of dynamic behavior. Additionally, a physical regularization term, derived from a simplified mechanistic equation, is incorporated into the loss function to ensure the model adheres to physical laws, thereby improving its robustness against noise and adaptability to varying operational conditions. Experimental results demonstrate that PIKN achieves superior prediction accuracy and enhanced generalization capabilities across multiple industrial data sets, thereby validating its effectiveness and advantages in industrial time series prediction.

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来源期刊
Industrial & Engineering Chemistry Research
Industrial & Engineering Chemistry Research 工程技术-工程:化工
CiteScore
7.40
自引率
7.10%
发文量
1467
审稿时长
2.8 months
期刊介绍: ndustrial & Engineering Chemistry, with variations in title and format, has been published since 1909 by the American Chemical Society. Industrial & Engineering Chemistry Research is a weekly publication that reports industrial and academic research in the broad fields of applied chemistry and chemical engineering with special focus on fundamentals, processes, and products.
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