利用人工神经网络实现家庭热能储存自动化

B. Venkatesh
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引用次数: 1

摘要

北美家庭大约60%的能源消耗用于空调。在美国,大约78%的电能是由化石燃料产生的,这种能源使用导致了温室气体排放和全球变暖。住宅太阳能现在变得具有成本效益,并且是来自电网的具有成本效益的电能。然而,太阳能的可用性和空调所需的能量在时间上是不匹配的。这种可得性和需求的不匹配使得使用储能成为必要。在以前的工作中,已经提出了在家庭热气团中储存能量。然而,这种应用所需的恒温器非常复杂。在这项工作中,提出了一种基于人工神经网络的恒温器。最后以一个普通家庭为例,给出了一种训练模型的方法,该方法是有效的。
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Automation of Thermal Energy Storage in Homes Using Artificial Neural Networks
About 60% of the energy consumed by homes in North America is for air conditioning. With about 78% of electric energy is generated by from fossil fuels in the US, this energy use contributes to greenhouse gas emissions and global warming. Residential solar energy is now becoming cost effective and is as cost effective electric energy from the electric grid. However, solar energy availability and energy required for air conditioning are mismatched with respect to time. This mismatch in availability and need necessitates the use of energy storage. In previous works, storage of energy in thermal air mass of homes has been proposed. However, the thermostat required for such application is very complex. In this work, an artificial-neural-network-based thermostat is proposed. A method to train the model for an average home is demonstrated with an example, and the method is shown to be effective.
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