Asosiy kontentga oʻtish
AkademIndex

Mahsulotlar

Ishlab chiquvchilar uchun

AkademBaseEkotizim uchun ochiq API
Maqola

An empirical comparison of a calibrated white-box versus multiple LSTM black-box building energy models

José Eduardo PachanoSchool of Architecture, Universidad de Navarra, 31009 Pamplona, SpainCristina Nuevo‐GallardoSchool of Architecture, Universidad de Navarra, 31009 Pamplona, SpainCarlos Fernández BanderaSchool of Technology of Cáceres, Universidad de Extremadura, 10003 Cáceres, Spain
2025en
ABI

Annotatsiya

Building energy simulation plays a critical role in establishing the impact of new energy conservation measures (ECMs) in buildings, in recent years it has become a go-to tool when developing sustainable energy saving solutions in modern architecture. The present study explores the energy performance gap in building energy models (BEMs), specifically a series of black-box Long Short-Term Memory (LSTM) BEMs and a traditional white-box or physical model, by comparing their simulated energy consumption results against real data measured in-situ. It evaluates different LSTM case studies that integrate climate, building operation, and explore different configurations of the data provided by Heating, Ventilation and Air Conditioning (HVAC) subsystems as input variables. The black-box LSTM models are trained on time series data collected from the building, and their performance is compared against a calibrated white-box model. The study emphasizes the importance of data quality and quantity when training black-box models. It highlights the physical white-box model's stability and reliability in predicting energy consumption, noting that these qualities come at the cost of significantly longer development and computer processing times than its black-box counterparts. To this aim, two validation periods are evaluated: the first considers winter conditions between January and March 2020, and the second includes spring conditions in April 2019. Among the case studies, only one configuration surpassed the white-box model's performance, requiring twice as much data at a finer resolution. This model reached an NMBE of -4.140%, CV(RMSE) of 12.570%, and R 2 of 84.398% for the winter checking period, and an NMBE of -1.797%, CV(RMSE) of 10.799% with an R 2 of 96.268% for spring checking period; both meeting international standards of IPMVP. The findings also suggest that LSTM BEM hyper-parameter calibration could improve the models adaptability and robustness, ensuring that simulations remain reliable across different operating conditions of the building's life-cycle. • The study shows a comparison between a white-box model and multiple LSTM black-box models. • The model's energy performance gap is evaluated using winter and spring validation periods. • The study suggests the importance of data stream quality and quantity to describe the HVAC system. • The results provide an insight into guidelines to be used when training a black-box LSTM model.

Hali tarjima qilinmagan

Identifikatorlar

Iqtiboslar va manbalar

2 ta iqtibos0 ta foydalanilgan manba