Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
AI-Assisted approach for building energy and carbon footprint modeling
This paper proposes an energy and carbon footprint modelling using artificial intelligence technique to assess the impact of occupant density for various types of office building. We use EnergyPlus to simulate energy consumption, and then estimate the related CO₂ emissions based on three years (2016–2018) of Actual Meteorological Year (AMY) weather data. Various occupant densities were used to evaluate the annual energy consumption and CO₂ emission. In this work, a robust deep learning technique of long short-term memory (LSTM) model was established to predict the time-series energy consumption and CO₂ emissions. A power exponential curve was suggested to correlate the behaviour of annual energy and CO₂ emission for occupant densities range from 10 to 100 m²/person for each office building type. The results of LSTM model show high prediction performance and small variations within the three types of office building data, which can be applied to the similar building model to predict and optimise energy consumption and CO₂ emission.
AI-Assisted approach for building energy and carbon footprint modeling
This paper proposes an energy and carbon footprint modelling using artificial intelligence technique to assess the impact of occupant density for various types of office building. We use EnergyPlus to simulate energy consumption, and then estimate the related CO₂ emissions based on three years (2016–2018) of Actual Meteorological Year (AMY) weather data. Various occupant densities were used to evaluate the annual energy consumption and CO₂ emission. In this work, a robust deep learning technique of long short-term memory (LSTM) model was established to predict the time-series energy consumption and CO₂ emissions. A power exponential curve was suggested to correlate the behaviour of annual energy and CO₂ emission for occupant densities range from 10 to 100 m²/person for each office building type. The results of LSTM model show high prediction performance and small variations within the three types of office building data, which can be applied to the similar building model to predict and optimise energy consumption and CO₂ emission.
AI-Assisted approach for building energy and carbon footprint modeling
Chih-Yen Chen (Autor:in) / Kok Keong Chai (Autor:in) / Ethan Lau (Autor:in)
2021
Aufsatz (Zeitschrift)
Elektronische Ressource
Unbekannt
Metadata by DOAJ is licensed under CC BY-SA 1.0
The Carbon Footprint of a New Building
British Library Online Contents | 2002
The carbon footprint of a new commercial building
British Library Conference Proceedings | 2002
|Global Marginal Carbon Footprint Evaluation of Internet Services with Building Energy Models
BASE | 2020
|