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Development of a dynamic artificial neural network model of an absorption chiller and its experimental validation

机译:吸收式制冷机动态人工神经网络模型的建立及其实验验证

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The aim of this paper is to present a methodology to model and evaluate the energy performance and outlet temperatures of absorption chillers so that users can have reliable information on the long-term performance of their systems in the desired boundary conditions before the product is installed. Absorption chillers' behaviour could be very complex and unpredictable, especially when the boundary conditions are variable. The system dynamic must therefore be included in the model. Artificial neural networks (ANNs) have proved to be suitable for handling such complex problems, particularly when the physical phenomena inside the system are difficult to model. Reliable "black box" ANN modelling is able to identify the system's global model without any advanced knowledge of its internal operating principles. Knowledge of the system's global inputs and outputs is sufficient. The methodology proposed was applied to evaluate a commercial absorption chiller. Predictions of the ANN model developed were compared, with a satisfactory degree of precision, to 2 days of experimental measures. These days were chosen to be representative of the real dynamic operating conditions of an absorption chiller. The neural model predictions are very satisfactory: absolute relative errors of the transferred energy are within 0.1 6.6%. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文的目的是提供一种对吸收式制冷机的能量性能和出口温度进行建模和评估的方法,以便用户在安装产品之前可以在所需的边界条件下获得有关系统长期性能的可靠信息。吸收式制冷机的行为可能非常复杂且不可预测,尤其是当边界条件可变时。因此,系统动态必须包含在模型中。事实证明,人工神经网络(ANN)适用于处理此类复杂问题,尤其是当系统内部的物理现象难以建模时。可靠的“黑匣子” ANN建模能够识别系统的全局模型,而无需对其内部操作原理有任何高级了解。足够了解系统的全局输入和输出。提出的方法论被用于评估商用吸收式制冷机。将开发的ANN模型的预测以令人满意的精确度与2天的实验测量值进行了比较。选择这些天来代表吸收式制冷机的实际动态运行条件。神经模型的预测是非常令人满意的:所转移能量的绝对相对误差在0.1 6.6%之内。 (C)2015 Elsevier Ltd.保留所有权利。

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