2021
DOI: 10.3390/en14206568
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Interpretable Forecasting of Energy Demand in the Residential Sector

Abstract: Energy demand forecasting is practiced in several time frames; different explanatory variables are used in each case to serve different decision support mandates. For example, in the short, daily, term building level, forecasting may serve as a performance baseline. On the other end, we have long-term, policy-oriented forecasting exercises. TIMES (an acronym for The Integrated Markal Efom System) allows us to model supply and anticipated technology shifts over a long-term horizon, often extending as far away i… Show more

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Cited by 11 publications
(6 citation statements)
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“…Bartels and others [42] used gas consumption profiles of households and their economic characteristics, macro-and microeconomic data including regional differences in natural gas consumption and climatic data. Sakas et al [43] proposed a methodology for modeling energy consumption, including natural gas, in the residential sector in the medium term, taking into account economic, weather and demographic data. Hribar et al [44] used various machine learning models to forecast short-term natural gas consumption in the city of Ljubljana.…”
Section: Natural Gas Forecasting Researchmentioning
confidence: 99%
“…Bartels and others [42] used gas consumption profiles of households and their economic characteristics, macro-and microeconomic data including regional differences in natural gas consumption and climatic data. Sakas et al [43] proposed a methodology for modeling energy consumption, including natural gas, in the residential sector in the medium term, taking into account economic, weather and demographic data. Hribar et al [44] used various machine learning models to forecast short-term natural gas consumption in the city of Ljubljana.…”
Section: Natural Gas Forecasting Researchmentioning
confidence: 99%
“…This method creates nearby samples with minimal feature changes that alter the model's output. Sakkas et al [208] selected features through statistical analysis and then utilized them for diverse counterfactual explanation (DiCE) model to conduct counterfactual analysis to interpret energy-demand forecasting. Tran et al [209] developed an innovative context-aware evolutionary learning algorithm (CELA) to both increase the capabilities of existing evolutionary learning methods in handling many features and datasets, and to provide an interpretable model based on the automatically extracted contexts.…”
Section: Other Techniquesmentioning
confidence: 99%
“…TRUST-AI (www.trustai.eu, accessed on 14 April 2024) is a Horizon-funded research project running in the period 2020-2025 and aiming to develop a framework of so-called explainable AI approaches and their validation in diverse use cases. One such case was in the energy domain [40,41], where our specific responsibility was to customize an explainable energy forecasting approach. Though a variety of AI forecasting models have been developed over the last twenty years, our forecasting approach would differ in that it could provide user explanations of the forecast.…”
Section: The Case Of An Ai-based Energy Forecasting Technologymentioning
confidence: 99%