A deep reinforcement learning approach to gasoline blending real-time optimization under uncertainty

被引:0
|
作者
Zhu, Zhiwei [1 ]
Yang, Minglei [1 ]
He, Wangli [1 ]
He, Renchu [1 ]
Zhao, Yunmeng [1 ]
Qian, Feng [1 ]
机构
[1] East China Univ Sci & Technol, Key Lab Smart Mfg Energy Chem Proc, Minist Educ, Shanghai 200237, Peoples R China
来源
CHINESE JOURNAL OF CHEMICAL ENGINEERING | 2024年 / 71卷
基金
中国国家自然科学基金;
关键词
Deep reinforcement learning; Gasoline blending; Real -time optimization; Petroleum; Computer simulation; Neural networks;
D O I
10.1016/j.cjche.2024.03.023
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
The gasoline inline blending process has widely used real -time optimization techniques to achieve optimization objectives, such as minimizing the cost of production. However, the effectiveness of realtime optimization in gasoline blending relies on accurate blending models and is challenged by stochastic disturbances. Thus, we propose a real -time optimization algorithm based on the soft actor-critic (SAC) deep reinforcement learning strategy to optimize gasoline blending without relying on a single blending model and to be robust against disturbances. Our approach constructs the environment using nonlinear blending models and feedstocks with disturbances. The algorithm incorporates the Lagrange multiplier and path constraints in reward design to manage sparse product constraints. Carefully abstracted states facilitate algorithm convergence, and the normalized action vector in each optimization period allows the agent to generalize to some extent across different target production scenarios. Through these well-designed components, the algorithm based on the SAC outperforms real -time optimization methods based on either nonlinear or linear programming. It even demonstrates comparable performance with the time-horizon based real -time optimization method, which requires knowledge of uncertainty models, confirming its capability to handle uncertainty without accurate models. Our simulation illustrates a promising approach to free real -time optimization of the gasoline blending process from uncertainty models that are difficult to acquire in practice. (c) 2024 The Chemical Industry and Engineering Society of China, and Chemical Industry Press Co., Ltd. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
引用
收藏
页码:183 / 192
页数:10
相关论文
共 50 条
  • [41] Realizing a deep reinforcement learning agent for real-time quantum feedback
    Kevin Reuer
    Jonas Landgraf
    Thomas Fösel
    James O’Sullivan
    Liberto Beltrán
    Abdulkadir Akin
    Graham J. Norris
    Ants Remm
    Michael Kerschbaum
    Jean-Claude Besse
    Florian Marquardt
    Andreas Wallraff
    Christopher Eichler
    Nature Communications, 14 (1)
  • [42] Real-time Energy Optimization of Hybrid Electric Vehicle in Connected Environment Based on Deep Reinforcement Learning
    He, Weiliang
    Huang, Ying
    IFAC PAPERSONLINE, 2021, 54 (10): : 176 - 181
  • [43] Realizing a deep reinforcement learning agent for real-time quantum feedback
    Reuer, Kevin
    Landgraf, Jonas
    Foesel, Thomas
    O'Sullivan, James
    Beltran, Liberto
    Akin, Abdulkadir
    Norris, Graham J.
    Remm, Ants
    Kerschbaum, Michael
    Besse, Jean-Claude
    Marquardt, Florian
    Wallraff, Andreas
    Eichler, Christopher
    NATURE COMMUNICATIONS, 2023, 14 (01)
  • [44] Deep Reinforcement Learning for Real-Time Trajectory Planning in UAV Networks
    Li, Kai
    Ni, Wei
    Tovar, Eduardo
    Guizani, Mohsen
    2020 16TH INTERNATIONAL WIRELESS COMMUNICATIONS & MOBILE COMPUTING CONFERENCE, IWCMC, 2020, : 958 - 963
  • [45] Deep Reinforcement Learning for Green Security Games with Real-Time Information
    Wang, Yufei
    Shi, Zheyuan Ryan
    Yu, Lantao
    Wu, Yi
    Singh, Rohit
    Joppa, Lucas
    Fang, Fei
    THIRTY-THIRD AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE / THIRTY-FIRST INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE CONFERENCE / NINTH AAAI SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2019, : 1401 - 1408
  • [46] Real-Time Energy Management of a Microgrid Using Deep Reinforcement Learning
    Ji, Ying
    Wang, Jianhui
    Xu, Jiacan
    Fang, Xiaoke
    Zhang, Huaguang
    ENERGIES, 2019, 12 (12)
  • [47] Training effective deep reinforcement learning agents for real-time life-cycle production optimization
    Zhang, Kai
    Wang, Zhongzheng
    Chen, Guodong
    Zhang, Liming
    Yang, Yongfei
    Yao, Chuanjin
    Wang, Jian
    Yao, Jun
    JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2022, 208
  • [48] Distributed Real-Time Scheduling in Cloud Manufacturing by Deep Reinforcement Learning
    Zhang, Lixiang
    Yang, Chen
    Yan, Yan
    Hu, Yaoguang
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2022, 18 (12) : 8999 - 9007
  • [49] Comparing Reinforcement Learning Methods for Real-Time Optimization of a Chemical Process
    Quah, Titus
    Machalek, Derek
    Powell, Kody M.
    PROCESSES, 2020, 8 (11) : 1 - 19
  • [50] Reinforcement Learning for Real-Time Optimization in NB-IoT Networks
    Jiang, Nan
    Deng, Yansha
    Nallanathan, Arumugam
    Chambers, Jonathon A.
    IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, 2019, 37 (06) : 1424 - 1440