基于时空模式提取的混合深度学习框架在催化裂化装置中油固含量软传感器的开发

IF 6.1 1区 工程技术 Q2 ENERGY & FUELS
Nan Liu, Chun-Meng Zhu, Yu-Hui Li, Yun-Peng Zhao, Xiao-Gang Shi, Xing-Ying Lan
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引用次数: 0

摘要

精馏塔塔底和滗析油循环系统的结焦破坏了热平衡,导致意外停机,破坏了催化裂化装置的长期稳定运行。FCCU通过相互连接的子系统运行,生成具有时空相关性的高维、非线性和非平稳数据。滗析油固含量是监测反应器-再生系统催化剂损失和分馏塔底焦化风险趋势的关键指标,依赖于取样和实验室检测,响应滞后,劳动强度大。利用工业数据开发在线滗析油固体含量软传感器,以支持操作人员进行预测性维护是至关重要的。因此,本文提出了一种用于软传感器开发的混合深度学习框架,该框架将时空模式提取与可解释性相结合,能够在动态操作条件下准确识别风险。该框架采用Filter-Wrapper方法进行降维,然后使用2D卷积神经网络(2DCNN)提取空间模式,使用双向门控循环单元(BiGRU)捕获长期时间依赖性,并使用注意机制(AM)自适应突出关键特征。SHapley加性解释(SHAP)、互补集成经验模态分解与自适应噪声(CEEMDAN)、2DCNN和专家知识的集成精确量化了特征贡献并分解了信号,显著提高了风险识别的实用性。应用于中国某炼油厂2.80 × 106 t/a的处理能力,软传感器的R2值为0.93,五级风险识别准确率为96.42%。这些结果证明了该框架的准确性、鲁棒性和对复杂工业场景的适用性,促进了风险可视化和管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid deep learning framework with spatiotemporal pattern extraction for decant oil solid content soft sensor development in fluid catalytic cracking units
Coking at the fractionating tower bottom and the decant oil circulation system disrupts the heat balance, leading to unplanned shutdown and destroying the long period stable operation of the Fluid Catalytic Cracking Unit (FCCU). The FCCU operates through interconnected subsystems, generating high-dimensional, nonlinear, and non-stationary data characterized by spatiotemporally correlated. The decant oil solid content is the crucial indicator for monitoring catalyst loss from the reactor-regenerator system and coking risk tendency at the fractionating tower bottom that relies on sampling and laboratory testing, which is lagging responsiveness and labor-intensive. Developing the online decant oil solid content soft sensor using industrial data to support operators in conducting predictive maintenance is essential. Therefore, this paper proposes a hybrid deep learning framework for soft sensor development that combines spatiotemporal pattern extraction with interpretability, enabling accurate risk identification in dynamic operational conditions. This framework employs a Filter-Wrapper method for dimensionality reduction, followed by a 2D Convolutional Neural Network (2DCNN) for extracting spatial patterns, and a Bidirectional Gated Recurrent Unit (BiGRU) for capturing long-term temporal dependencies, with an Attention Mechanism (AM) to highlight critical features adaptively. The integration of SHapley Additive exPlanations (SHAP), Complementary Ensemble Empirical Mode Decomposition with Adaptive Noise (CEEMDAN), 2DCNN, and expert knowledge precisely quantifies feature contributions and decomposes signals, significantly enhancing the practicality of risk identification. Applied to a China refinery with processing capacity of 2.80 × 106 t/a, the soft sensor achieved the R2 value of 0.93 and five-level risk identification accuracy of 96.42%. These results demonstrate the framework's accuracy, robustness, and suitability for complex industrial scenarios, advancing risk visualization and management.
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来源期刊
Petroleum Science
Petroleum Science 地学-地球化学与地球物理
CiteScore
7.70
自引率
16.10%
发文量
311
审稿时长
63 days
期刊介绍: Petroleum Science is the only English journal in China on petroleum science and technology that is intended for professionals engaged in petroleum science research and technical applications all over the world, as well as the managerial personnel of oil companies. It covers petroleum geology, petroleum geophysics, petroleum engineering, petrochemistry & chemical engineering, petroleum mechanics, and economic management. It aims to introduce the latest results in oil industry research in China, promote cooperation in petroleum science research between China and the rest of the world, and build a bridge for scientific communication between China and the world.
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