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Journal ArticleDOI

A review on time series forecasting techniques for building energy consumption

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TLDR
The various combinations of the hybrid model are found to be the most effective in time series energy forecasting for building and the nine most popular forecasting techniques based on the machine learning platform are analyzed.
Abstract
Energy consumption forecasting for buildings has immense value in energy efficiency and sustainability research. Accurate energy forecasting models have numerous implications in planning and energy optimization of buildings and campuses. For new buildings, where past recorded data is unavailable, computer simulation methods are used for energy analysis and forecasting future scenarios. However, for existing buildings with historically recorded time series energy data, statistical and machine learning techniques have proved to be more accurate and quick. This study presents a comprehensive review of the existing machine learning techniques for forecasting time series energy consumption. Although the emphasis is given to a single time series data analysis, the review is not just limited to it since energy data is often co-analyzed with other time series variables like outdoor weather and indoor environmental conditions. The nine most popular forecasting techniques that are based on the machine learning platform are analyzed. An in-depth review and analysis of the ‘hybrid model’, that combines two or more forecasting techniques is also presented. The various combinations of the hybrid model are found to be the most effective in time series energy forecasting for building.

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Citations
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Journal ArticleDOI

On the non-intrusive extraction of residents’ privacy- and security-sensitive information from energy smart meters

TL;DR: In this article, the authors investigated the potential of extracting information from smart meters related to residents' security- and privacy-sensitive information, using methodologies for load demand prediction, nonintrusive load monitoring and elastic matching, evaluation of extraction of information related to house occupancy, multimedia watching detection, socioeconomic and health profiling of residents.
Journal ArticleDOI

Optimization of Short-Term Forecast of Electric Power Demand in the city of Yaoundé-Cameroon by a hybrid model based on the combination of neural networks and econometric methods from a designed energy optimization algorithm

TL;DR: In this article , a hybrid model of artificial intelligence and statistical methods, designed from an optimization algorithm for hourly forecasts of electricity over a period of one week, was proposed for load forecasting.
Journal ArticleDOI

Energy forecasting in smart grid systems: recent advancements in probabilistic deep learning

TL;DR: A comprehensive and application-oriented review of state-of-the-art forecasting methods for SG systems along with recent developments in probabilistic deep learning (PDL) is presented.
Journal ArticleDOI

Challenges in implementing data-driven approaches for building life cycle energy assessment: A review

TL;DR: In this article , the authors conduct a systematic review of literature to identify key factors hindering the application of machine learning techniques specifically for building LCEA. They include: (i) issues of data collection, quality and availability; (ii) lack of standardized methodologies; and (iii) temporal representativeness and granularity of prediction.
Proceedings ArticleDOI

Usability Requirements for Smart Buildings’ Performance Testing Solutions: A Survey

TL;DR: A generic performance testing framework for automatic instantiation and execution of applicable performance tests is established and an interest for simple visualization techniques, requiring little to no expertise in building management to understand is shown.
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