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模糊PID在热水锅炉温度控制系统中的应用

于 2021-05-06 发布
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针对热水锅炉温度控制的特点,采用模糊PID 控制策略。将SIMULINK 与FUZZY TOOL BOX有机地结合设计模糊自整定PID 控制器。系统的仿真结果表明该控制方法提高了对非线性、滞后系统的控制效果。经过在丹东燃煤热水锅炉供暖工程的实际运行,证明系统的控制效果良好.

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