Abstract

Energy performance certification is an important tool for the assessment and improvement of energy efficiency in buildings. In this context, estimating building energy demand also in a quick and reliable way, for different combinations of building features, is a key issue for architects and engineers who wish, for example, to benchmark the performance of a stock of buildings or optimise a refurbishment strategy. This paper proposes a methodology for (i) the automatic estimation of the building Primary Energy Demand for space heating ( P E D h ) and (ii) the characterization of the relationship between the P E D h value and the main building features reported by Energy Performance Certificates (EPCs). The proposed methodology relies on a two-layer approach and was developed on a database of almost 90,000 EPCs of flats in the Piedmont region of Italy. First, the classification layer estimates the segment of energy demand for a flat. Then, the regression layer estimates the P E D h value for the same flat. A different regression model is built for each segment of energy demand. Four different machine learning algorithms (Decision Tree, Support Vector Machine, Random Forest, Artificial Neural Network) are used and compared in both layers. Compared to the current state-of-the-art, this paper brings a contribution in the use of data mining techniques for the asset rating of building performance, introducing a novel approach based on the use of independent data-driven models. Such configuration makes the methodology flexible and adaptable to different EPCs datasets. Experimental results demonstrate that the proposed methodology can estimate the energy demand with reasonable errors, using a small set of building features. Moreover, the use of Decision Tree algorithm enables a concise interpretation of the quantitative rules used for the estimation of the energy demand. The methodology can be useful during both designing and refurbishment of buildings, to quickly estimate the expected building energy demand and set credible targets for improving performance.

Highlights

  • Energy efficiency is a growing policy priority for many countries around the world, for both economic and environmental reasons

  • In this paper we propose the Heating Energy Demand Estimation for Building Asset Rating (HEDEBAR) methodology providing the following features. (i) HEDEBAR allows the automatic estimation of the Primary Energy Demand for space heating (PEDh ) reported by Energy Performance

  • Three main types of buildings energy performance assessment are commonly acknowledged [19]: Energy benchmarking, i.e., the comparison of Energy Performance Indicators (EPIs) of a building with a sample representative of similar buildings; Energy rating, i.e., the evaluation and classification of the building energy performance according to predefined criteria; and Energy labeling, i.e., the assignment of an energy performance class to the building, according to a scale of values defined for some relevant parameter (e.g., Energy Use Intensity (EUI), Primary Energy Demand of flats (PED))

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Summary

A Data-Driven Approach Exploiting Building

Antonio Attanasio 1,† , Marco Savino Piscitelli 2,† , Silvia Chiusano 3, *,† , Alfonso Capozzoli 2,† and Tania Cerquitelli 1,†.

Introduction
Related Work
Data Analysis Methodology
Flat Characterization
Data Preprocessing
Two-Layer Approach for the Estimation of Heating Energy Demand
Case Study
Characterization of Flat Segments
Segment Estimation
Performance Comparison with a Single Layer Approach for PEDh Prediction
Interpretation of the Energy Demand Estimation Models
Segment Estimation Model
Local Energy Demand Prediction Models
Parameter Tuning of Algorithms
Findings
Discussion and Conclusions
Full Text
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