Automatic energy demand assessment in low-carbon investments: a neural network approach for building portfolios

IF 1.3 Q3 BUSINESS, FINANCE
L. Gabrielli, A. Ruggeri, M. Scarpa
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引用次数: 8

Abstract

Purpose This paper aims to develop a forecasting tool for the automatic assessment of both environmental and economic benefits resulting from low-carbon investments in the real estate sector, especially when applied in large building stocks. A set of four artificial neural networks (NNs) is created to provide a fast and reliable estimate of the energy consumption in buildings due to heating, hot water, cooling and electricity, depending on some specific buildings’ characteristics, such as geometry, orientation, climate or technologies. Design/methodology/approach The assessment of the building’s energy demand is performed comparing the as-is status (pre-retrofit) against the design option (post-retrofit). The authors associate with the retrofit investment the energy saved per year, and the net monetary saving obtained over the whole cost after a predetermined timeframe. The authors used a NN approach, which is able to forecast the buildings’ energy demand due to heating, hot water, cooling and electricity, both in the as-is and in the design stages. The design stage is the result of a multiple attribute optimization process. Findings The approach here developed offers the opportunity to manage energy retrofit interventions on wide property portfolios, where it is necessary to handle simultaneously a large number of buildings without it being technically feasible to achieve a very detailed level of analysis for every property of a large portfolio. Originality/value Among the major accomplishments of this research, there is the creation of a methodology that is not excessively data demanding: the collection of data for building energy simulations is, in fact, extremely time-consuming and expensive, and this NN model may help in overcoming this problem. Another important result achieved in this study is the flexibility of the model developed. The case study the authors analysed was referred to one specific stock, but the results obtained have a more widespread importance because it ends up being only a matter of input-data entering, while the model is perfectly exportable in other contexts.
低碳投资中的自动能源需求评估:建筑投资组合的神经网络方法
本文旨在开发一种预测工具,用于自动评估房地产行业低碳投资带来的环境和经济效益,特别是在大型建筑库存中应用时。一组由四个人工神经网络(NNs)组成的系统可以根据建筑物的某些特定特征,如几何形状、朝向、气候或技术,快速可靠地估计建筑物中由于加热、热水、冷却和电力而消耗的能源。设计/方法/方法对建筑物的能源需求进行评估,将现状(改造前)与设计方案(改造后)进行比较。作者将每年的节能投资与在预定时间内的总成本中获得的净货币节省联系起来。作者使用了一种神经网络方法,该方法能够预测建筑在现状和设计阶段因供暖、热水、制冷和电力而产生的能源需求。设计阶段是一个多属性优化过程的结果。本文开发的方法为管理广泛的物业投资组合的能源改造干预提供了机会,在这些投资组合中,有必要同时处理大量建筑物,而在技术上不可行,无法对大型投资组合中的每个物业进行非常详细的分析。原创性/价值本研究的主要成就之一是创造了一种不需要过多数据的方法:实际上,建筑能源模拟的数据收集非常耗时和昂贵,而这个神经网络模型可能有助于克服这个问题。本研究取得的另一个重要成果是所开发模型的灵活性。作者分析的案例研究涉及一个特定的股票,但获得的结果具有更广泛的重要性,因为它最终只是输入数据的问题,而模型完全可以在其他情况下导出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.10
自引率
7.70%
发文量
18
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