Artificial Intelligence in Steam Cracking Modeling: A Deep Learning Algorithm for Detailed Effluent Prediction

被引:53
|
作者
Plehiers, Pieter P. [1 ]
Symoens, Steffen H. [1 ]
Amghizar, Ismael [1 ]
Marin, Guy B. [1 ]
Stevens, Christian V. [2 ]
Van Geem, Kevin M. [1 ]
机构
[1] Univ Ghent, Dept Mat Text & Chem Engn, Lab Chem Technol, B-9052 Ghent, Belgium
[2] Univ Ghent, Fac Biosci Engn, Dept Green Chem & Technol, SynBioC Res Grp, B-9000 Ghent, Belgium
关键词
Artificial intelligence; Deep learning; Steam cracking; Artificial neural networks; COMPLEX HYDROCARBON MIXTURES; MOLECULAR RECONSTRUCTION; THERMAL-CRACKING; NEURAL-NETWORK; AB-INITIO; METHODOLOGY; PERSPECTIVE; CHALLENGES; MECHANISM;
D O I
10.1016/j.eng.2019.02.013
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Chemical processes can benefit tremendously from fast and accurate effluent composition prediction for plant design, control, and optimization. The Industry 4.0 revolution claims that by introducing machine learning into these fields, substantial economic and environmental gains can be achieved. The bottleneck for high-frequency optimization and process control is often the time necessary to perform the required detailed analyses of, for example, feed and product. To resolve these issues, a framework of four deep learning artificial neural networks (DL ANNs) has been developed for the largest chemicals production process-steam cracking. The proposed methodology allows both a detailed characterization of a naphtha feedstock and a detailed composition of the steam cracker effluent to be determined, based on a limited number of commercial naphtha indices and rapidly accessible process characteristics. The detailed characterization of a naphtha is predicted from three points on the boiling curve and paraffins, iso-paraffins, olefins, naphthenes, and aronatics (PIONA) characterization. If unavailable, the boiling points are also estimated. Even with estimated boiling points, the developed DL ANN outperforms several established methods such as maximization of Shannon entropy and traditional ANNs. For feedstock reconstruction, a mean absolute error (MAE) of 0.3 wt% is achieved on the test set, while the MAE of the effluent prediction is 0.1 wt%. When combining all networks-using the output of the previous as input to the next-the effluent MAE increases to 0.19 wt%. In addition to the high accuracy of the networks, a major benefit is the negligible computational cost required to obtain the predictions. On a standard Intel i7 processor, predictions are made in the order of milliseconds. Commercial software such as COILSIM1D performs slightly better in terms of accuracy, but the required central processing unit time per reaction is in the order of seconds. This tremendous speed-up and minimal accuracy loss make the presented framework highly suitable for the continuous monitoring of difficult-to-access process parameters and for the envisioned, high-frequency real-time optimization (RTO) strategy or process control. Nevertheless, the lack of a fundamental basis implies that fundamental understanding is almost completely lost, which is not always well-accepted by the engineering community. In addition, the performance of the developed networks drops significantly for naphthas that are highly dissimilar to those in the training set. (C) 2019 THE AUTHORS. Published by Elsevier LTD on behalf of Chinese Academy of Engineering and Higher Education Press Limited Company.
引用
收藏
页码:1027 / 1040
页数:14
相关论文
共 50 条
  • [21] Prediction Model for Students' Future Development by Deep Learning and Tensorflow Artificial Intelligence Engine
    Fok, Wilton W. T.
    He, Y. S.
    Yeung, H. H. Au
    Law, K. Y.
    Cheung, K. H.
    Ai, Y. Y.
    Ho, P.
    2018 4TH INTERNATIONAL CONFERENCE ON INFORMATION MANAGEMENT (ICIM2018), 2018, : 103 - 106
  • [22] Prediction of optimal surgical outcomes with radiologic images using deep learning artificial intelligence
    Newtson, A. M.
    Mattson, J. N.
    Goodheart, M. J.
    Bender, D. P.
    Rajput, M.
    McDonald, M.
    Lyons, Y. A.
    Reyes, H. D.
    Gonzalez-Bosquet, J.
    GYNECOLOGIC ONCOLOGY, 2019, 154 : 156 - 156
  • [23] Cellular Network Power Allocation Algorithm Based on Deep Reinforcement Learning and Artificial Intelligence
    Cao, Jinghua
    Zou, Xiang
    Xie, Rui
    Li, Yujiang
    COMPUTATIONAL INTELLIGENCE AND NEUROSCIENCE, 2022, 2022
  • [24] Artificial intelligence identification of ore minerals under microscope based on deep learning algorithm
    Xu, ShuTeng
    Zhou, YongZhang
    Yanshi Xuebao/Acta Petrologica Sinica, 2018, 34 (11): : 3244 - 3252
  • [25] Evaluation of tooth development stages with deep learning-based artificial intelligence algorithm
    Kurt, Ayca
    Gunacar, Dilara Nil
    Silbir, Fatma Yanik
    Yesil, Zeynep
    Bayrakdar, Ibrahim Sevki
    Celik, Ozer
    Bilgir, Elif
    Orhan, Kaan
    BMC ORAL HEALTH, 2024, 24 (01):
  • [26] Frideswide - An artificial intelligence deep learning algorithm for audits and quality improvement in the neurosurgical practice
    Brzezicki, Maksymilian Aleksander
    Kobetic, Matthew David
    Neumann, Sandra
    INTERNATIONAL JOURNAL OF SURGERY, 2017, 43 : 56 - 57
  • [27] Deep-learning-based artificial intelligence algorithm for detecting anemia using electrocardiogram
    Jeon, K. H.
    Kwon, J. M.
    Kim, K. H.
    Kim, M. J.
    Lee, S. H.
    Baek, S. D.
    Jeung, S. M.
    Park, J. S.
    Choi, R. K.
    Oh, B. H.
    EUROPEAN HEART JOURNAL, 2020, 41 : 3446 - 3446
  • [28] Artificial Intelligence and Deep Learning in Sensors and Applications
    Yuan, Shyan-Ming
    Hong, Zeng-Wei
    Cheng, Wai-Khuen
    SENSORS, 2024, 24 (10)
  • [29] Artificial intelligence and deep learning for biomedical applications
    Khanna, Pritee
    Tanveer, Mohammad
    Prasad, Mukesh
    Lin, Chin-Teng
    MULTIMEDIA TOOLS AND APPLICATIONS, 2022, 81 (10) : 13137 - 13137
  • [30] Artificial intelligence identification of ore minerals under microscope based on deep learning algorithm
    Xu ShuTeng
    Zhou YongZhang
    ACTA PETROLOGICA SINICA, 2018, 34 (11) : 3244 - 3252