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Journal ArticleDOI

A review on time series forecasting techniques for building energy consumption

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

More Buildings Make More Generalizable Models—Benchmarking Prediction Methods on Open Electrical Meter Data

TL;DR: This paper outlines a library of open-source regression techniques from the Scikit-Learn Python library and describes the process of applying them to open hourly electrical meter data from 482 non-residential buildings from the Building Data Genome Project, showing that there is no one size-fits-all modeling solution and that various types of temporal behavior are difficult to capture using machine learning.
Journal ArticleDOI

A data-driven strategy to forecast next-day electricity usage and peak electricity demand of a building portfolio using cluster analysis, Cubist regression models and Particle Swarm Optimization

TL;DR: In this paper, a new strategy using cluster analysis, Cubist regression models and Particle Swarm Optimization to forecast next-day total electricity usage and peak electricity demand of a building portfolio was presented.
Journal ArticleDOI

A model-based air balancing method of a ventilation system

TL;DR: The proposed method provides a well-defined form of balancing for a ventilation system, which can be effectively solved, and is validated through testing in a duct testbed with five terminals.
Journal ArticleDOI

Energy Demand Forecasting: Combining Cointegration Analysis and Artificial Intelligence Algorithm

TL;DR: In this article, a new energy demand forecasting framework is presented at first, where the coefficients of linear and quadratic forms of the AI-based model are optimized by combining an adaptive genetic algorithm and a cointegration analysis.
Proceedings ArticleDOI

Short-term load forecasting based on support vector regression considering cooling load in summer

TL;DR: A cooling maximum load prediction LS-SVM model is established based on meteorological factors considering accumulated temperature effect based on daily load characteristics of Jinan in the summer of 2016 to prove the effectiveness of the developed prediction algorithm.
References
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Book

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TL;DR: Setting of the learning problem consistency of learning processes bounds on the rate of convergence ofLearning processes controlling the generalization ability of learning process constructing learning algorithms what is important in learning theory?
Journal ArticleDOI

Learning representations by back-propagating errors

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Journal ArticleDOI

A logical calculus of the ideas immanent in nervous activity

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Journal ArticleDOI

The perceptron: a probabilistic model for information storage and organization in the brain.

TL;DR: This article will be concerned primarily with the second and third questions, which are still subject to a vast amount of speculation, and where the few relevant facts currently supplied by neurophysiology have not yet been integrated into an acceptable theory.
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The perception: a probabilistic model for information storage and organization in the brain

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TL;DR: The second and third questions are still subject to a vast amount of speculation, and where the few relevant facts currently supplied by neurophysiology have not yet been integrated into an acceptable theory as mentioned in this paper.
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