基于模型预测控制的热管冷却堆功率控制系统设计

Jiajun Huang, Peiwei Sun, Songmao Pu, Xinyu Wei
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摘要

热管冷却堆(HPR)具有体积小、固有安全性高、易于模块化和扩展等优点,在深空探测、深海海底探测等场景中具有广阔的应用前景。然而,HPR通过热管内工作流体的蒸发和冷凝来传递热能。这一特性使HPR成为一个大时延系统。如果功率控制系统采用传统的PID算法,会有较长的稳定时间和较大的超调量。为此,提出了模型预测控制算法,以提高功率控制系统的控制性能。选择HPR线性模型作为预测模型,将其非线性模型线性化。基于预测模型和电抗器功率反馈值,通过求解优化问题得到最优控制值。由于预估模型与实际系统响应不一致,会产生稳态误差。为了解决这一问题,在模型预测控制器之前增加一个积分控制器来消除误差。采用试错法对控制系统参数进行了调整。最后,以非线性HPR模型为被控对象,通过典型暂态验证了该控制系统具有满意的控制性能。模型预测控制能有效克服大时滞特性的影响。
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Power Control System Design for Heat Pipe Cooled Reactor Based on Model Predictive Control
Due to the small size, the high inherent safety, and easy modularization and expansion, heat-pipe cooled reactor (HPR) has broad application prospects in deep space exploration, deep-sea submarine exploration and other scenarios. However, the HPR conducts thermal energy through the evaporation and condensation of the working fluid inside the heat pipe. This feature makes the HPR a large time-delay system. If the power control system adopts the conventional PID algorithm, there will be a long settling time and large overshoot. Therefore, the model predictive control algorithm is proposed for the power control system to improve the control performance. The HPR linear model, which is developed by linearization of its nonlinear model, is chosen as the predictive model. Based on the predictive model and the reactor power feedback value, the optimal control value is obtained by solving the optimization problem. Due to the discrepancy between the predive model and the actual system response, a steady-state error occurs. To solve this problem, an integral controller is added before the model predictive controller to eliminate the error. The appropriate control system parameters are tuned by trial and error method. Finally, taking the nonlinear HPR model as the controlled object, it is verified by typical transient that the control system has satisfactory control performance. The model predictive control can effectively overcome the influence of the large time-delay characteristics.
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