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Application of artificial neural network for predicting performance of solid desiccant cooling systems - A review

机译:人工神经网络在固体干燥剂冷却系统性能预测中的应用

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摘要

In present study, an attempt has been made to review the applications of artificial neural network (ANN) for predicting the performance of solid desiccant cooling systems. Different types of neural networks are applied to model the solid desiccant cooling systems. With use of experimental data, an ANN model was developed which is based on different algorithms. Available experimental data were divided into two categories for training and testing of the ANN model. Later on, trained ANN model was tested for predicting the performance of system based on various input and output parameters such as air stream flow rates, temperatures and humidity ratios, pressure drop, dehumidifier effectiveness, cooling capacity, regeneration temperature, power input, coefficient of performance etc. So, present review proposes the use of ANN based model to simulate the relationship between inlet and outlet parameters of the system. The ANN predictions for these parameters usually agreed with the experimental values with higher correlation co-efficient. The previous studies show that ANNs can be used with a higher precision in guessing the performance of solid desiccant cooling systems. This review is useful for making opportunities to further research of ANNs and its feasibility which is becoming common in the coming days.
机译:在当前的研究中,已经进行了尝试来审查人工神经网络(ANN)在预测固体干燥剂冷却系统性能方面的应用。应用不同类型的神经网络对固体干燥剂冷却系统进行建模。利用实验数据,开发了基于不同算法的ANN模型。可用的实验数据分为两类,用于训练和测试ANN模型。后来,对经过训练的ANN模型进行了测试,以基于各种输入和输出参数(例如气流速率,温度和湿度比,压降,除湿机效率,冷却能力,再生温度,功率输入,系数)来预测系统性能。因此,本综述提出使用基于ANN的模型来模拟系统入口和出口参数之间的关系。这些参数的ANN预测通常与具有较高相关系数的实验值一致。先前的研究表明,人工神经网络可以更精确地用于猜测固体干燥剂冷却系统的性能。这篇综述对于为进一步研究人工神经网络及其可行性提供了有用的机会,这种可能性在未来几天将变得越来越普遍。

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