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Intermediate point superheat predictive control based on double-depth input convex neural network with multi-model
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Xin ZHONG1, Leihua FENG1, Jinqi HE2, Feng YANG3
Thermal Power Generation | 2024, 53(1) : 107 - 114
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Thermal Power Generation | 2024, 53(1): 107-114
Thermal energy science research
Intermediate point superheat predictive control based on double-depth input convex neural network with multi-model
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Xin ZHONG1, Leihua FENG1, Jinqi HE2, Feng YANG3
Affiliations
  • 1.School of Energy and Power Engineering, Changsha University of Science and Technology, Changsha 410114, China
  • 2.Shaanxi Gaoye Energy Technology Co., Ltd., Xi’an 710061, China
  • 3.HNAC Technology Co., Ltd., Changsha 410006, China
Published: 2024-01-25 doi: 10.19666/j.rlfd.202305088
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As a large number of new energy is connected to the grid, the participation of supercritical thermal power units in peak regulation tends to cause the superheat of intermediate points to fluctuate greatly, resulting in superheated steam over temperature and other problems. In order to better control the intermediate point superheat to achieve stability, a prediction method of intermediate point superheat based on double-depth input convex neural network multi-model (muti-DDICNN model) was proposed. Sub-models with different prediction step sizes were trained respectively, and the intermediate point superheat state prediction network (SPNN) and error prediction network (EPNN) were constructed. Based on the convex property of prediction network, a multi-model predictive controller (DDICNN-MPC) based on convex neural network with double-depth input is designed. The control problem is transformed into a convex optimization problem, the Jacobian matrix of control matrix to objective function is obtained, and the optimal solution of control matrix is calculated by gradient descent method. The simulation results show that, the DDICNN-MPC can track the intermediate point superheat setting quickly and stably, and the steady-state error is small, so it has good adjustment ability.

intermediate point superheat  /  input convex neural network  /  model predictive control  /  gradient descent algorithm  /  convex optimization
Xin ZHONG, Leihua FENG, Jinqi HE, Feng YANG. Intermediate point superheat predictive control based on double-depth input convex neural network with multi-model[J]. Thermal Power Generation, 2024 , 53 (1) : 107 -114 . DOI: 10.19666/j.rlfd.202305088
  • Natural Science Foundation of Hunan Province(2018JJ3552)
Year 2024 volume 53 Issue 1
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Article Info
doi: 10.19666/j.rlfd.202305088
  • Receive Date:2023-05-15
  • Online Date:2025-12-25
  • Published:2024-01-25
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  • Received:2023-05-15
Funding
Natural Science Foundation of Hunan Province(2018JJ3552)
Affiliations
    1.School of Energy and Power Engineering, Changsha University of Science and Technology, Changsha 410114, China
    2.Shaanxi Gaoye Energy Technology Co., Ltd., Xi’an 710061, China
    3.HNAC Technology Co., Ltd., Changsha 410006, China
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表12种不同金属材料的力学参数

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Number of
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鹅膏菌科Amanitaceae 2 11 5.26 鹅膏菌属 Amanita 10 4.78
小菇科 Mycenaceae 2 12 5.74 丝盖伞属 Inocybe 5 2.39
多孔菌科 Polyporaceae 8 14 6.70 蜡蘑属 Laccaria 5 2.39
红菇科 Russulaceae 3 23 11.00 小皮伞属 Marasmius 6 2.87
小菇属 Mycena 11 5.26
光柄菇属 Pluteus 5 2.39
红菇属 Russula 17 8.13
栓菌属 Trametes 5 2.39
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