SCIENCE CHINA Information Sciences, Volume 63 , Issue 8 : 189204(2020) https://doi.org/10.1007/s11432-018-9645-3

Synthesis of model predictive control based on data-driven learning

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  • ReceivedJun 5, 2018
  • AcceptedOct 19, 2018
  • PublishedMar 16, 2020


There is no abstract available for this article.


This work was supported by National Natural Science Foundation of China (Grant Nos. 61973214, 61590924, 61963030), Natural Science Foundation of Shanghai (Grant No. 19ZR1476200), and National Key Basic Research Special Foundation of China (Grant No. 2014CB249200). The authors would like to thank Prof. Zhong-Ping JIANG and his CAN Lab at Tandon School of Engineering, New York University, Brooklyn, NY, USA, for many inspirations and the help of this work.


Appendixes A–E.


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