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A low data requirement model of a variable-speed vapour compression refrigeration system based on neural networks

机译:基于神经网络的变速蒸汽压缩制冷系统的低数据需求模型

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In this work a model of a vapour compression refrigeration system with a variable-speed compressor, based on a black-box modelling technique, is presented. The kernel of the model consists of a full customized radial basis function network, which has been developed to accurately predict the performance of the system with low cost data requirement in terms of input variables and training data. The work also presents a steady state validation of the model inside and outside the training data set, finding, in both cases, a good agreement between experimental values and those predicted by the model. These results constitute a first step to go through future research on fault detection and energy optimisation in variable-speed refrigeration systems.
机译:在这项工作中,提出了一种基于黑匣子建模技术的带有变速压缩机的蒸汽压缩制冷系统模型。该模型的内核由完全自定义的径向基函数网络组成,已开发该网络来准确预测系统的性能,其中就输入变量和训练数据而言,这些数据需要低成本的数据。这项工作还提出了训练数据集内外模型的稳态验证,在两种情况下都发现了实验值与模型预测值之间的良好一致性。这些结果构成了对变速制冷系统中的故障检测和能量优化进行进一步研究的第一步。

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