Abstract

In this article, a systematic literature review of 419 articles on energy demand modeling, published between 2015 and 2020, is presented. This provides researchers with an exhaustive overview of the examined literature and classification of techniques for energy demand modeling. Unlike in existing literature reviews, in this comprehensive study all of the following aspects of energy demand models are analyzed: techniques, prediction accuracy, inputs, energy carrier, sector, temporal horizon, and spatial granularity. Readers benefit from easy access to a broad literature base and find decision support when choosing suitable data-model combinations for their projects. Results have been compiled in comprehensive figures and tables, providing a structured summary of the literature, and containing direct references to the analyzed articles. Drawbacks of techniques are discussed as well as countermeasures. The results show that among the articles, machine learning (ML) techniques are used the most, are mainly applied to short-term electricity forecasting on a regional level and rely on historic load as their main data source. Engineering-based models are less dependent on historic load data and cover appliance consumption on long temporal horizons. Metaheuristic and uncertainty techniques are often used in hybrid models. Statistical techniques are frequently used for energy demand modeling as well and often serve as benchmarks for other techniques. Among the articles, the accuracy measured by mean average percentage error (MAPE) proved to be on similar levels for all techniques. This review eases the reader into the subject matter by presenting the emphases that have been made in the current literature, suggesting future research directions, and providing the basis for quantitative testing of hypotheses regarding applicability and dominance of specific methods for sub-categories of demand modeling.

Highlights

  • The transformation of our energy system towards a more reliable, eco-friendly, and cost-effective one is a central goal of today’s energy policy

  • There is a strong need for reliable models predicting and simulating energy demand

  • A total number of 419 articles originating from 54 different countries was reviewed

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Summary

Introduction

The transformation of our energy system towards a more reliable, eco-friendly, and cost-effective one is a central goal of today’s energy policy. An integral part of the planning processes across different infrastructures are energy system models. As the scope of such models is expanding across multiple infrastructures and energy carriers [1] they become increasingly detailed and complex [2]. Well-founded information on future energy demand with the high temporal and spatial resolution is one of the most crucial inputs for such models, having a direct impact on associated decision-making processes [3] affecting real-time grid operation as well as long-term infrastructure extension planning. There is a strong need for reliable models predicting and simulating energy demand The terms energy consumption and energy demand are to be understood synonymously). Energy demand modeling is the essential basis for all quantifications of demand flexibility

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