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Development of an adaptive neuro-fuzzy method for supply air pressure control in HVAC system

机译:HVAC系统供气空气压力控制自适应神经模糊方法的研制

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An adaptive neuro-fuzzy (ANF) method is developed for the supply air pressure control loop of a heating, ventilation and air-conditioning (HVAC) system. Although a well-tuned PID controller performs well around normal working points, its tolerance to process parameter variations is severely affected due to the nature of PID controllers. The ANF controller developed overcomes this weakness. The controller design involves 1) the constructing a Takagi and Sugeno-type fuzzy rule-based system, 2) employing the BP learning algorithm combined with the least squares method to optimize the membership function (MF) parameters, and 3) adding a secondary loop to ensure control performance. Compared with PID and original fuzzy logic controllers, simulation results show that the ANF controller performances are comparable to the well-tuned PID controller under normal conditions. It, however, exhibits a much improved robustness when the system encounters large parameter variations. It is also expected that the ANF method developed can be easily extended to other control loops in HVAC systems.
机译:为加热,通风和空调(HVAC)系统的供气压力控制回路开发了一种自适应神经模糊(ANF)方法。虽然经过调整的PID控制器差别围绕正常工作点进行良好,但由于PID控制器的性质,其对处理参数变化的公差受到严重影响。 ANF控制器开发克服了这种弱点。控制器设计涉及1)构建基于Takagi和Sugeno型模糊规则的系统,2)采用BP学习算法与最小二乘法组合,以优化成员函数(MF)参数,以及添加辅助循环确保控制性能。与PID和原始模糊逻辑控制器相比,仿真结果表明,ANF控制器的性能与正常情况下的良好调谐的PID控制器相当。然而,当系统遇到大参数变化时,它表现出大大提高的鲁棒性。还期望开发的ANF方法可以很容易地扩展到HVAC系统中的其他控制环。

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