残差灰色预测自适应Smith-PID控制及其应用

Guo Peng
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引用次数: 0

摘要

过热蒸汽温度系统具有惯性大、时滞大、参数时变等特点。本文采用基于残差灰色预测的自适应Smith-PID来解决这些问题。为了克服参数时变的缺点,采用Adaline神经网络对目标的增益和延迟进行识别。反馈回路中的残差灰色预测模块可以预测反馈的多个步长,可以预先调节系统。这种自适应残差灰色预测控制可以克服模型失配的影响,增强系统的鲁棒性。通过对过热蒸汽温度系统的仿真,证明了该方法具有有效的控制性能。
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Residual Gray Predictive Adaptive Smith-PID Control and Its Application
The superheated steam temperature system has the characteristics of high inertia, large delay and time-varying parameters. In this paper, adaptive Smith-PID based on residual gray prediction is used to deal with these problems. Adaline neural network is used to identify the object's gain and delay in order to overcome the defectiveness of time-varying parameters. Residual gray prediction module in the feedback loop, which can predict multiple steps of the feedback, can regulate the system previously. This adaptive residual gray predictive control can overcome the influences of model mismatch and enhance the robustness of the system. The simulation of superheated steam temperature system proved that the new method has effective control performance.
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