Intelligent Control of Wastewater Treatment Plants Based on Model-Free Deep Reinforcement Learning

被引:3
|
作者
Aponte-Rengifo, Oscar [1 ]
Francisco, Mario [1 ]
Vilanova, Ramon [2 ]
Vega, Pastora [1 ]
Revollar, Silvana [1 ]
机构
[1] Univ Salamanca, Fac Sci, Dept Comp Sci & Automat, Plaza Merced S-N, Salamanca 37008, Spain
[2] Autonomous Univ Barcelona, Dept Automat Syst & Adv Control Res, Barcelona 08193, Spain
关键词
intelligent control; model-free deep reinforcement learning; reusing policy; waste water treatment plant; DISSOLVED-OXYGEN CONTROL; SIMULATION; OPERATION;
D O I
10.3390/pr11082269
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
In this work, deep reinforcement learning methodology takes advantage of transfer learning methodology to achieve a reasonable trade-off between environmental impact and operating costs in the activated sludge process of Wastewater treatment plants (WWTPs). WWTPs include complex nonlinear biological processes, high uncertainty, and climatic disturbances, among others. The dynamics of complex real processes are difficult to accurately approximate by mathematical models due to the complexity of the process itself. Consequently, model-based control can fail in practical application due to the mismatch between the mathematical model and the real process. Control based on the model-free reinforcement deep learning (RL) methodology emerges as an advantageous method to arrive at suboptimal solutions without the need for mathematical models of the real process. However, convergence of the RL method to a reasonable control for complex processes is data-intensive and time-consuming. For this reason, the RL method can use the transfer learning approach to cope with this inefficient and slow data-driven learning. In fact, the transfer learning method takes advantage of what has been learned so far so that the learning process to solve a new objective does not require so much data and time. The results demonstrate that cumulatively achieving conflicting objectives can efficiently be used to approach the control of complex real processes without relying on mathematical models.
引用
收藏
页数:25
相关论文
共 50 条
  • [41] Curious Meta-Controller: Adaptive Alternation between Model-Based and Model-Free Control in Deep Reinforcement Learning
    Hafez, Muhammad Burhan
    Weber, Cornelius
    Kerzel, Matthias
    Wermter, Stefan
    2019 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2019,
  • [42] Model-free voltage control of active distribution system with PVs using surrogate model-based deep reinforcement learning
    Cao, Di
    Zhao, Junbo
    Hu, Weihao
    Ding, Fei
    Yu, Nanpeng
    Huang, Qi
    Chen, Zhe
    APPLIED ENERGY, 2022, 306
  • [43] Sim-to-Real Model-Based and Model-Free Deep Reinforcement Learning for Tactile Pushing
    Yang, Max
    Lin, Yijiong
    Church, Alex
    Lloyd, John
    Zhang, Dandan
    Barton, David A. W.
    Lepora, Nathan F.
    IEEE ROBOTICS AND AUTOMATION LETTERS, 2023, 8 (09) : 5480 - 5487
  • [44] Hybrid model-free control based on deep reinforcement learning: An energy-efficient operation strategy for HVAC systems
    Zhang, Xiaoming
    Wang, Xinwei
    Zhang, Haotian
    Ma, Yinghan
    Chen, Shaoye
    Wang, Chenzheng
    Chen, Qili
    Xiao, Xiaoyang
    JOURNAL OF BUILDING ENGINEERING, 2024, 96
  • [45] Model-Free Reinforcement-Learning-Based Control Methodology for Power Electronic Converters
    Alfred, Dajr
    Czarkowski, Dariusz
    Teng, Jiaxin
    2021 13TH ANNUAL IEEE GREEN TECHNOLOGIES CONFERENCE GREENTECH 2021, 2021, : 81 - 88
  • [46] Model-based and Model-free Reinforcement Learning for Visual Servoing
    Farahmand, Amir Massoud
    Shademan, Azad
    Jagersand, Martin
    Szepesvari, Csaba
    ICRA: 2009 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION, VOLS 1-7, 2009, : 4135 - 4142
  • [47] Model-free Predictive Optimal Iterative Learning Control using Reinforcement Learning
    Zhang, Yueqing
    Chu, Bing
    Shu, Zhan
    2022 AMERICAN CONTROL CONFERENCE, ACC, 2022, : 3279 - 3284
  • [48] Model-Free Real-Time EV Charging Scheduling Based on Deep Reinforcement Learning
    Wan, Zhiqiang
    Li, Hepeng
    He, Haibo
    Prokhorov, Danil
    IEEE TRANSACTIONS ON SMART GRID, 2019, 10 (05) : 5246 - 5257
  • [49] Deep Reinforcement Learning-Based Smart Joint Control Scheme for On/Off Pumping Systems in Wastewater Treatment Plants
    Seo, Giup
    Yoon, Seungwook
    Kim, Myungsun
    Mun, Changho
    Hwang, Euiseok
    IEEE ACCESS, 2021, 9 : 95360 - 95371
  • [50] Model-Free Adaptive Control Approach Using Integral Reinforcement Learning
    Abouheaf, Mohammed
    Gueaieb, Wail
    2019 IEEE INTERNATIONAL SYMPOSIUM ON ROBOTIC AND SENSORS ENVIRONMENTS (ROSE 2019), 2019, : 84 - 90