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Performance of Model-based Predictive Control of the Ventilation Rate with Axial Fans

机译:基于模型的轴流风机通风率预测控制的性能

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摘要

A new algorithm for ventilation rate control in mechanically ventilated buildings was developed and evaluated on a laboratory test installation. It was demonstrated that the current problems with traditional control of axial fans, such as instability due to dynamic wind actions, could be overcome by using a model-based predictive control (MBPC) algorithm. In the laboratory test installation, the performance of the MBPC algorithm was compared to the performance of a traditional proportional, integral, derivative (PID) controller in an airflow range from 1000 to 5000 m{sup}3/h (20-100% of fan capacity) and in a normal pressure range from 0 to 60 Pa. The accuracy and the stability of the ventilation rate control and the energy consumption were studied for both control algorithms. It was concluded that the main advantage of a MBPC algorithm over a PID controller lies in its stability in a wider range of the ventilation rates and pressure differences due to an automatic adaptation of the control parameters. The PID algorithm with fixed settings did not generate a stable control of the ventilation rate when the target value deviated more than 500m{sup}3/h (16% of centre capacity) from the ventilation rate that it was optimised for, whereas the MBPC controller remained stable throughout the complete working range of the fan.
机译:开发了一种用于机械通风建筑物的通风率控制的新算法,并在实验室测试设备上进行了评估。结果表明,使用基于模型的预测控制(MBPC)算法可以解决传统轴流风机控制当前存在的问题,例如由于动态风作用引起的不稳定性。在实验室测试设备中,将MBPC算法的性能与传统比例,积分,微分(PID)控制器在1000至5000 m {sup} 3 / h(20-100%of风扇容量),并且在0至60 Pa的常压范围内。研究了两种控制算法的通风率控制的准确性,稳定性以及能耗。结论是,MBPC算法相对于PID控制器的主要优点在于,由于控制参数的自动适应,其在较大的通风速率和压力差范围内具有稳定性。当目标值与优化后的通风量相比偏离目标值超过500m {sup} 3 / h(中心容量的16%)时,具有固定设置的PID算法无法对通风量产生稳定的控制。在风扇的整个工作范围内,控制器保持稳定。

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