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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

Green Design Studio: A modular-based approach for high-performance building design

TL;DR: In this paper, a modular-based Green Design Studio (GDS) platform has been developed for fast and accurate performance analysis for early stage green building design, which can simplify the design and analysis process by embedding performance parameters into design elements in modules and employing near-real-time model for whole building performance simulation as well as by providing an easy-to-use and intuitive user interface to assist users without extensive knowledge on building physics.
Journal ArticleDOI

Data-driven hybrid model and operating algorithm to shave peak demand costs of building electricity

TL;DR: A data-driven hybrid forecasting model and an operating algorithm to shave the peak demand costs based on time of use based on the TOU are proposed and results indicate that the hybrid model can reduce generalization errors and improves the forecasting performance.
Journal ArticleDOI

An Optimal Stacked Ensemble Deep Learning Model for Predicting Time-Series Data Using a Genetic Algorithm—An Application for Aerosol Particle Number Concentrations

TL;DR: Three machine learning techniques are proposed and tested to develop a predictive model for estimating atmospheric particle number concentrations in the form of a time-series database and demonstrated that the time-lag value can be optimized by using the heuristic algorithm.
Journal ArticleDOI

A Data-Driven Approach for Blockchain-Based Smart Grid System

TL;DR: In this paper, a data-driven, secure, and smart solution for peer-to-peer trading in the local energy market (LEM) based on blockchain is proposed.
Posted Content

Predicting Electricity Consumption using Deep Recurrent Neural Networks.

TL;DR: Two approaches to predict electricity consumption are presented with one using a Recurrent Neural Network (RNN) and a Long Short Term Memory (LSTM) network, which only considers the previous electricity consumption to predict the future electricity consumption.
References
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