首页> 外文会议>International Symposium on Air Conditioning in High Rise Buildings '2000 Oct 24-27, 2000, Shanghai, P.R.China >ANN IDENTIFICATION APPLYING TO MODEL STRUCTURE OF THE DIRECT-FIRED LIBR ABSORPTION CHILLER
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ANN IDENTIFICATION APPLYING TO MODEL STRUCTURE OF THE DIRECT-FIRED LIBR ABSORPTION CHILLER

机译:人工神经识别技术在直接燃烧天秤库制冷机模型结构中的应用

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摘要

One drawback of direct-fired LiBr absorption chiller lies in its excessive fuel consumption. Good control strategy is an effective way to improve the performance of the chiller systems and the associated equipment. There are two basic but quite different principles for model construction: the "a priori" approach and the "a posterior" approach. The former one is also known as "physical modeling", and the other one "identification" by which the models are derived from experiment data. This paper proposed using artificial neural networks to identify the nonlinear MIMO system such as absorption chiller system. In order to have informative data and to be able to find a suitable model structure, this paper presented using the physical model to eliminate the redundant or unnecessary variables in inputs and outputs.
机译:直燃式溴化锂吸收式制冷机的一个缺点在于其过多的燃料消耗。良好的控制策略是提高冷却器系统和相关设备性能的有效方法。模型构建有两个基本但完全不同的原则:“先验”方法和“后验”方法。前一种也称为“物理建模”,另一种称为“标识”,通过该“标识”可以从实验数据中得出模型。本文提出使用人工神经网络来识别非线性MIMO系统,例如吸收式制冷机系统。为了获得有用的数据并能够找到合适的模型结构,本文提出了使用物理模型消除输入和输出中多余或不必要的变量的方法。

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