An Intelligent Approach to Develop, Assess and Optimize Energy Consumption Models for Air-Cooled Chillers using Machine Learning Algorithms

M. Tahmasebi, N. Nassif
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Abstract

: The building sector accounts for more than 70% of the total electricity use. Chillers consume more than 50% of electrical energy during seasonal periods of building use. With the growth of the building sector and climate change, it's essential to develop energy-efficient HVAC systems that optimize the ever-increasing energy demand. This study aims to develop an energy consumption prediction model for air-cooled chillers using machine learning algorithms. This is done by developing different static and dynamic data-driven regressive and neural network models and comparing the accuracy of their prediction to identify the most accurate modeling algorithm using 3 main inputs chilled water return temperature, outside drybulb temperature, and cooling load. The proposed model structure was then optimized in terms of the number of neurons, epochs, time delays as well as the number of input variables using a genetic algorithm. Training and testing were done using real data obtained from a fully instrumented 4-ton air-cooled chiller. Results of the study show that the optimized artificial neural network model can predict energy consumption with a high level of accuracy compared to conventional modeling techniques. The development of highly accurate self-tuning models can be a powerful tool to use for other applications such as fault detection and diagnosis, assessment, and system optimization. Further studies are necessary to evaluate the effectiveness of using deep learning algorithms with more hidden layers and cross-validation techniques.
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利用机器学习算法开发、评估和优化风冷冷却器能耗模型的智能方法
:建筑部门的用电量占总用电量的70%以上。在建筑使用的季节性期间,冷却器消耗超过50%的电能。随着建筑行业的发展和气候变化,开发节能的暖通空调系统以优化不断增长的能源需求至关重要。本研究旨在利用机器学习算法开发风冷式制冷机的能耗预测模型。这是通过开发不同的静态和动态数据驱动的回归和神经网络模型来完成的,并比较其预测的准确性,以确定最准确的建模算法,使用3个主要输入冷冻水回流温度,外部干球温度和冷却负荷。然后使用遗传算法根据神经元数量、epoch、时间延迟以及输入变量的数量对所提出的模型结构进行优化。培训和测试是使用从一台设备齐全的4吨风冷制冷机获得的真实数据完成的。研究结果表明,与传统建模技术相比,优化后的人工神经网络模型可以较准确地预测能源消耗。高度精确的自调整模型的开发可以成为用于其他应用程序(如故障检测和诊断、评估和系统优化)的强大工具。需要进一步的研究来评估使用具有更多隐藏层和交叉验证技术的深度学习算法的有效性。
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