Abstract
Accurate meteorological data play a substantial role in the building energy estimation process and projected energy savings retrofitting. The present study presents predicted micro-climates parameters with long short-term memory (LSTM) network based on the long-term on-site measurement and its significance in the building energy analysis. The one-day-period-ahead prediction results demonstrated approving performance that the average RMSE of predicted on-site temperature is 0.75 °C, corresponding to 4.11% in MAPE while RMSEs of EPW data (the common embedded datasets representative of the typical meteorological year) and suburban meteorological station data are 5.23 °C and 5.18 °C, respectively; the similar applied to relative humidity and solar radiation. The predicted meteorological parameters were therefore passed into building energy estimation models. The comparisons of energy consumption for building heating and cooling against reference models with suburban station climates and EPW datasets are statistically investigated, with the underlying propagation of bias from meteorological inputs being analyzed. For the typical building where the micro-climate station located, the estimation biases are as follows (i) LSTM predicted datasets: Δ = -1.58% for cooling, Δ = -2.51% for heating; (ii) EPW climate datasets: Δ = -29.68% for cooling, Δ = +129.88% for heating; (iii) suburban station climate datasets: Δ = -5.1% for cooling, Δ = +235.95% for heating.
Original language | English |
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Article number | 103227 |
Journal | Sustainable Cities and Society |
Volume | 74 |
Online published | 3 Aug 2021 |
DOIs | |
Publication status | Published - Nov 2021 |
Funding
The research reported in this paper is supported by the international (regional) cooperation and exchange projects of the National Natural Science Foundation of China [Projects No. 51520105009 ] and the Natural Science Foundation of Jiangsu Province [#BK20190362]. The first author would also like to acknowledge the scholarship from China Scholarship Council [Grant no.202006090149] .
Research Keywords
- Building energy estimation
- Long short-term memory
- Meteorological prediction
- Urban micro-climate