A NARX Neural Network-Based Predictive Control for Power Management of DC Microgrid Clusters
ID:26 View Protection:PRIVATE Updated Time:2023-06-14 18:03:25 Hits:412 Oral Presentation

Start Time:2023-06-18 11:40 (Asia/Shanghai)

Duration:20min

Session:[S] Oral Session » [S2] Oral Session 2 & Oral Session 5

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Abstract
DC microgrid clusters (DCMGCs) are a network of interconnected DC microgrids that work collaboratively to enhance resilience, reliability and optimize the economic benefits of the systems. However, due to the intricate dynamics of high order and nonlinearities, modeling for controller design can be an overwhelming task. To overcome this issue, this paper proposes a data-driven predictive control approach to regulate the power flow of DCMGCs. The proposed method employs a nonlinear autoregressive network with exogenous inputs (NARX) neural network, which does not rely on analytical modeling. Instead, the prediction model is obtained by fitting and training the system data. Consequently, the control objectives of DCMGCs can be achieved intelligently using this model-free approach. The hardware-in-the-loop (HIL) prototype of the DCMGC based on dSPACETM MicroLabBox and Microcontroller STM32 is built, and the proposed method is verified by HIL experiments.
Keywords
DC microgrid cluster;data-driven;NARX neural network;predictive control tertiary control
Speaker
Jixiang Diao

Sucheng Liu

Xuefeng Huang

Qianjin Zhang

Wei Fang

Xiaodong Liu

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