TY - JOUR AU - Wanfu Zheng AU - Laura Zabala AU - Jesus Febres AU - David Blum AU - Zhe Wang AB -
Weather forecast uncertainty is unavoidable despite technological advancements. Accurately quantifying and modeling this uncertainty is essential for developing and comparing advanced building controllers. In this study, we present a structured approach using a first-order autoregressive model (AR(1)) to model uncertainty in ambient temperature and global solar irradiation (GHI) forecasts. We analyzed weather data from four cities and employed Jensen-Shannon divergence (JSD) to evaluate the similarity between synthetic and actual forecast errors. The average JSD values for temperature are 0.027 (Berkeley), 0.021 (Leuven), 0.018 (Berlin), and 0.008 (Oslo), and for GHI, the average JSD values are 0.016 (Berkeley), 0.058 (Leuven), and 0.013 (Berlin). The low JSD values indicate a high similarity between the synthetic and real forecast error distributions. Our approach successfully generates synthetic weather forecasts that mirror the statistical properties of actual forecasts. The implementation of our method for uncertain forecast generation is being added to the BOPTEST framework.
BT - Journal of Building Performance Simulation DA - 28/01/2025 DO - 10.1080/19401493.2025.2453537 N2 -Weather forecast uncertainty is unavoidable despite technological advancements. Accurately quantifying and modeling this uncertainty is essential for developing and comparing advanced building controllers. In this study, we present a structured approach using a first-order autoregressive model (AR(1)) to model uncertainty in ambient temperature and global solar irradiation (GHI) forecasts. We analyzed weather data from four cities and employed Jensen-Shannon divergence (JSD) to evaluate the similarity between synthetic and actual forecast errors. The average JSD values for temperature are 0.027 (Berkeley), 0.021 (Leuven), 0.018 (Berlin), and 0.008 (Oslo), and for GHI, the average JSD values are 0.016 (Berkeley), 0.058 (Leuven), and 0.013 (Berlin). The low JSD values indicate a high similarity between the synthetic and real forecast error distributions. Our approach successfully generates synthetic weather forecasts that mirror the statistical properties of actual forecasts. The implementation of our method for uncertain forecast generation is being added to the BOPTEST framework.
PB - Informa UK Limited PY - 2025 SP - 1 EP - 16 T2 - Journal of Building Performance Simulation TI - Quantifying and simulating the weather forecast uncertainty for advanced building control UR - https://doi.org/10.1080/19401493.2025.2453537 SN - 1940-1493, 1940-1507 ER -