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Modeling, air balancing and optimal pressure set-point selection for the ventilation system with minimized energy consumption

机译:通风系统的建模,空气平衡和最佳压力设定点选择,从而将能耗降至最低

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Traditional static pressure reset control strategies commonly use a feedback indicator to reset the static pressure; this results in under-ventilation in certain zones and over-ventilation in others. Based on this issue, the objective of this study was to develop a model-based, improved, static pressure reset control strategy, providing a well-balanced system to eliminate under-ventilation and over-ventilation, while consuming minimal energy. In the study reported here, a comprehensive mathematical model was established to simulate the non-linear behavior of the ventilation system, and a supervised machine learning algorithm for a support vector machine was used to obtain values for unknown parameters in the model. The resulting model was then used as the basis for development of a damper position control method and to determine the damper position, given a desired airflow rate. An optimal, static pressure set-point selection method was also proposed using the developed model to calculate the minimum static pressure set-point in a closed-form. As a result, the revised system consumed less energy owing to the better-balanced system and optimized pressure set-point selection. Moreover, through the application of the damper position control method, the ventilation system was well-balanced and eliminated both under-ventilation and over-ventilation. Experimental tests were carried out to validate the performance of the proposed method in comparison with the conventional static pressure reset strategy, data from which were collected to train the proposed model.
机译:传统的静压复位控制策略通常使用反馈指示器来复位静压。这会导致某些区域的通风不足,而另一些区域的通风过度。基于此问题,本研究的目的是开发一种基于模型的改进的静压复位控制策略,以提供一种平衡良好的系统,以消除通风不足和过度通风,同时消耗最少的能量。在这里报告的研究中,建立了一个全面的数学模型来模拟通风系统的非线性行为,并使用支持向量机的有监督机器学习算法来获取模型中未知参数的值。然后,将所得模型用作开发风门位置控制方法的基础,并在给定所需气流速率的情况下确定风门位置。还使用开发的模型提出了一种最佳的静态压力设定点选择方法,以封闭形式计算最小静态压力设定点。结果,由于系统更好的平衡和优化的压力设定点选择,修订后的系统消耗的能量更少。此外,通过使用风门位置控制方法,通风系统得到了很好的平衡,并消除了通风不足和过度通风的情况。与常规的静压复位策略相比,进行了实验测试以验证所提出的方法的性能,从中收集数据以训练所提出的模型。

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