可持续智慧大学:能源消耗预测的短期深度学习框架

Berny Carrera, Kwanho Kim
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引用次数: 0

摘要

理想情况下,智慧城市应该是环境友好和可持续的,而能源管理是监测可持续利用的一种技术。同样,这个概念也可以应用于城市形式,例如大学所在的那种城市。本研究分析了一所大学通过允许采用各种智能技术来加强能源管理的可能性,这些技术可以提高城市基础设施的能源可持续性及其运营效率。在拟议系统的第一个模块中,我们非常强调为每个不同建筑创建能源统计所需的数据能力。在该技术的第二阶段,我们利用收集到的数据对微城市内部的能源行为进行数据分析,并从中得出特征。在第三个模块中,我们开发了基线回归量来评估所提出模型的不同程度的有效性。最后,我们描述了一种利用深度学习回归模型建立能源预测模型的方法,以解决短期能源消耗预测问题。性能度量结果表明,与其他传统回归技术相比,所建议的深度学习模型提高了性能预测。与其他回归模型相比,该模型具有优越的RMSE、MAE和R平方结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sustainable Smart University: A Short-Term Deep Learning Framework for Energy Consumption Forecast
A smart city should ideally be environmentally friendly and sustainable, and energy management is one technique to monitor sustainable use. Similarly, this notion might be applied in an urban form, such as the sort of city in which a university would be located. This research analyzes the possibility for a university to enhance energy management by permitting the adoption of a variety of intelligent technologies that increase the energy sustainability of a city's infrastructure and the effectiveness of its operations. In the first module of the proposed system, we place significant emphasis on the data capabilities necessary to create energy statistics for each of its various buildings. In the second phase of the technique, we employ the collected data to conduct a data analysis of the energy behavior inside micro-cities, from which we derive characteristics. In the third module, we develop baseline regressors to assess the varying degrees of efficacy of the proposed model. Last, we describe a way for developing an energy prediction model using a deep learning regression model to solve the problem of short-term energy consumption forecasting. The performance metric results show that the suggested deep learning model increases performance prediction compared to other traditional regression techniques. The proposed model has superior RMSE, MAE and R squared results compared to alternative regression models.
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