Abstract

Nowadays, as more data is now available from an increasing number of installed sensors, load forecasting applied to buildings is being increasingly explored. The amount and quality of resulting information can provide inputs for smarter decisions when managing and operating office buildings. In this article, the authors use two data-driven methods (artificial neural networks and support vector machines) to predict the heating and cooling energy demand in an office building located in Lisbon, Portugal. In the present case-study, these methods prove to be an accurate and appealing alternative to the use of accurate but time-consuming multi-zone dynamic simulation tools, which strongly depend on several parameters to be inserted and user expertise to calibrate the model. Artificial neural networks and support vector machines were developed and parametrized using historical data and different sets of exogenous variables to encounter the best performance combinations for both the heating and cooling periods of a year. In the case of support vector regression, a variation introduced simulated annealing to guide the search for different combinations of hyperparameters. After a feature selection stage for each individual method, the results for the different methods were compared, based on error metrics and distributions. The outputs of the study include the most suitable methodology for each season, and also the features (historical load records, but also exogenous features such as outdoor temperature, relative humidity or occupancy profile) that led to the most accurate models. Results clearly show there is a potential for faster, yet accurate machine-learning based forecasting methods to replace well-established, very accurate but time-consuming multi-zone dynamic simulation tools to forecast building energy consumption.

Highlights

  • Energy management plays an important role in buildings nowadays, and its interest is still rising [1,2,3,4,5], as more and different types of sensors are being installed in existent buildings, or form part of projects when designing new buildings

  • The results obtained using artificial neural networks (ANN), SVM, and SVM+simulated annealing (SA) to forecast cooling and heating energy demand are presented in three stages:

  • As root mean squared error (RMSE) is more sensitive to highest errors, this was the main criteria in the selection of the best set of inputs

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Summary

Introduction

Energy management plays an important role in buildings nowadays, and its interest is still rising [1,2,3,4,5], as more and different types of sensors are being installed in existent buildings, or form part of projects when designing new buildings. In order to take advantage of available consumption data being continuously accessed through the Building Management Systems (BMS), new strategies should be designed to better analyze the incoming data [6] These types of analyses could be providential to better accompany consumptions trends, to project the effect of demand-side actions and even to rapidly identify untypical consumption patterns (operation alarmistic purposes) [1,5]. Feasibility studies concerning the optimized operation of renewable energy generation and efficient use of resources, including economic constraints, are needed for adequate design of nearly zero energy buildings. Often, this type of analysis requires significant computation resources, which could led to long computation times, data-driven approaches play an important role in predicting buildings’ energy performance [9,10]

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