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Application of A Neural Network Predictive Control Based on GGAP-RBF for the Supercritical Main Steam

机译:基于GGAP-RBF的神经网络预测控制在超临界主汽中的应用。

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摘要

The Supercritical Main Steam has a large inertia, delay and nonlinear and dynamic characteristics change with the operating conditions, it is difficult to establish the precise mathematical model, this algorithm based on RBF neural network GGAP posed a direct neural network predictive controller, the combination of online learning and control to a supercritical power plant main steam temperature as the research object, MATLAB simulation results show that the superheated steam temperature system can achieve effective control, performance than the conventional PID control has greatly improved.
机译:超临界主蒸汽具有较大的惯性,延迟以及非线性和动态特性随运行条件的变化,很难建立精确的数学模型,该算法基于RBF神经网络GGAP构成了直接的神经网络预测控制器,结合了在线学习和控制以超临界电厂的主蒸汽温度为研究对象,MATLAB仿真结果表明,过热蒸汽温度系统可以实现有效的控制,性能比常规的PID控制有了很大的提高。

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