Forecast combinations: An over 50-year review

X Wang, RJ Hyndman, F Li, Y Kang - International Journal of Forecasting, 2023 - Elsevier
Forecast combinations have flourished remarkably in the forecasting community and, in
recent years, have become part of mainstream forecasting research and activities …

Machine Learning, Deep Learning and Statistical Analysis for forecasting building energy consumption—A systematic review

M Khalil, AS McGough, Z Pourmirza… - … Applications of Artificial …, 2022 - Elsevier
The building sector accounts for 36% of the total global energy usage and 40% of
associated Carbon Dioxide emissions. Therefore, the forecasting of building energy …

[HTML][HTML] Short-term photovoltaic power forecasting using meta-learning and numerical weather prediction independent Long Short-Term Memory models

E Sarmas, E Spiliotis, E Stamatopoulos, V Marinakis… - Renewable Energy, 2023 - Elsevier
Short-term photovoltaic (PV) power forecasting is essential for integrating renewable energy
sources into the grid as it provides accurate and timely information on the expected output of …

[HTML][HTML] The M5 competition: Background, organization, and implementation

S Makridakis, E Spiliotis, V Assimakopoulos - International Journal of …, 2022 - Elsevier
The M5 competition follows the previous four M competitions, whose purpose is to learn from
empirical evidence how to improve forecasting performance and advance the theory and …

The importance of community involvement in public management planning and decision-making processes

S Rijal - Journal of Contemporary Administration …, 2023 - journal.literasisainsnusantara.com
Public management is an effort to deliver public services, programmes, and projects that are
efficient, effective, and equitable for the community. The planning and decision-making …

Forecast evaluation for data scientists: common pitfalls and best practices

H Hewamalage, K Ackermann, C Bergmeir - Data Mining and Knowledge …, 2023 - Springer
Recent trends in the Machine Learning (ML) and in particular Deep Learning (DL) domains
have demonstrated that with the availability of massive amounts of time series, ML and DL …

A systematic review towards integrative energy management of smart grids and urban energy systems

Z Zheng, M Shafique, X Luo, S Wang - Renewable and Sustainable Energy …, 2024 - Elsevier
This paper presents a systematic review to align current and future research in smart grids
(SG) and smart urban energy systems (SUES) and unify the diverse but fragmented …

Adaptive normalization for non-stationary time series forecasting: A temporal slice perspective

Z Liu, M Cheng, Z Li, Z Huang, Q Liu… - Advances in Neural …, 2024 - proceedings.neurips.cc
Deep learning models have progressively advanced time series forecasting due to their
powerful capacity in capturing sequence dependence. Nevertheless, it is still challenging to …

[HTML][HTML] Forecasting with trees

T Januschowski, Y Wang, K Torkkola, T Erkkilä… - International Journal of …, 2022 - Elsevier
The prevalence of approaches based on gradient boosted trees among the top contestants
in the M5 competition is potentially the most eye-catching result. Tree-based methods out …

[HTML][HTML] Privacy-preserving federated learning for residential short-term load forecasting

JD Fernández, SP Menci, CM Lee, A Rieger, G Fridgen - Applied energy, 2022 - Elsevier
With high levels of intermittent power generation and dynamic demand patterns, accurate
forecasts for residential loads have become essential. Smart meters can play an important …