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Predictive Functional Control of Superheat in a Refrigeration System using a Neural Network Model

机译:基于神经网络模型的制冷系统过热预测功能控制

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This paper compares three methods for control of the superheat in a refrigeration system. A traditional gain scheduled PI-based controller, a predictive functional controller (PFC) and a predictive functional controller with a neural network model (PFCNN). The aim is to investigate the performance of the three controllers with respect to disturbance rejection measured both at the superheat deviation from the reference and the actuation of the expansion valve. The controllers are designed and tested on a laboratory set-up. The performance of the controllers turns out to be similar and distinguish between the concepts must be based on other parameters like tuning and demands for computational power.
机译:本文比较了三种控制制冷系统过热的方法。传统的基于增益调度的PI控制器,预测功能控制器(PFC)和具有神经网络模型(PFCNN)的预测功能控制器。目的是研究相对于参考值和膨胀阀的过热度在过热偏差下测得的三个控制器在抑制干扰方面的性能。控制器是在实验室设置下设计和测试的。控制器的性能证明是相似的,并且在概念之间的区分必须基于其他参数,例如调整和对计算能力的要求。

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