自适应控制算法在水电站机组运行优化中的应用OA
在"双碳"目标驱动的新型电力系统转型背景下,水电站机组运行优化面临强非线性、时变参数和多重约束等核心挑战.针对这些问题,该文提出一种多层协同的自适应控制算法.该算法创新性地引入双时间尺度自适应机制,其中快时间尺度(10 ms)的局部自适应模型预测控制(LAMPC)负责高频功率跟踪与振荡抑制,慢时间尺度(1 s)的全局自适应效率优化(GAEO)则基于轻量化数字孪生进行在线效率寻优.为克服传统数字孪生计算量大的局限,该文构建水力-电气-机械三域耦合的降阶数字孪生模型,通过MOC、Kron降阶和模态综合法将状态维度有效压缩至 21 维,并结合深度核学习与残差卡尔曼滤波实现模型参数的在线自适应与误差校正.此外,为保障系统在模型不确定或极端扰动下的安全性,设计安全强化学习(Safe-RL)约束下的自适应切换策略,通过将控制屏障函数(CBF)作为硬约束嵌入Actor-Critic框架,并在模型置信度下降时实现LAMPC与Safe-RL的无扰切换.仿真结果表明,所提出的自适应控制算法在功率跟踪性能、误差收敛速度、控制输入平滑性及系统频域稳定性方面均优于传统控制方法,可有效提升水电站机组在复杂运行环境下的鲁棒性、效率和安全性.
In the context of the transformation of new power systems driven by the"double carbon"goal,the operation optimization of hydropower station units faces core challenges such as strong non-linearity,time-varying parameters and multiple constraints.To solve these problems,this paper proposes a multi-layer collaborative adaptive control algorithm.The algorithm innovatively introduces a dual-time scale adaptive mechanism.The local adaptive model predictive control(LAMPC)on the fast time scale(10 ms)is responsible for high-frequency power tracking and oscillation suppression,and the global adaptive efficiency optimization on the slow time scale(1 s).(GAEO)is based on a lightweight digital twin for online efficiency optimization.In order to overcome the limitations of traditional digital twins with large computing volume,this paper builds a reduced-order digital twin model coupled with hydraulic-electrical-mechanical three-domain.The state dimension is effectively compressed to 21 dimensions through MOC,Kron reduction and modal synthesis methods.Combined with deep kernel learning and residual Kalman filtering,online adaptation and error correction of model parameters are achieved.In addition,in order to ensure the safety of the system under model uncertainty or extreme disturbances,this paper designs an adaptive switching strategy under the constraint of Safe Reinforcement Learning(Safe-RL).By embedding the control barrier function(CBF)as a hard constraint into the Actor-Critic framework,the study realizes undisturbed switching between LAMPC and Safe-RL when the model confidence drops.Simulation results show that the proposed adaptive control algorithm is superior to traditional control methods in terms of power tracking performance,error convergence speed,control input smoothness and system frequency domain stability,effectively enhancing the robustness,efficiency,and safety of hydropower units in complex operating environments.
朱佳辉;张鑫伟;宋强
江苏水工建设集团有限公司,江苏 南通 226100江苏水工建设集团有限公司,江苏 南通 226100江苏水工建设集团有限公司,江苏 南通 226100
建筑与水利
自适应控制双时间尺度数字孪生安全强化学习模型预测控制
adaptive controldual time scaledigital twinssafety reinforcement learningmodel predictive control
《科技创新与应用》 2026 (8)
177-180,4
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