Abstract
AbstractThe present study introduces “WindAware”, a wind and turbulence prediction system that provides nowcasts of wind and turbulence parameters every 5 min up to 6 h over a predetermined airway over Chicago, Illinois, USA, based on 100 m high-resolution simulations (HRSs). This system is a long short-term memory-based recurrent neural network (LSTM-RNN) that uses existing ground-based wind data to provide nowcasts (forecasts up to 6 h every 5 min) of wind speed, wind direction, wind gust, and eddy dissipation rate to support the Uncrewed Aircraft Systems (UASs) safe integration into the National Airspace System (NAS). These HRSs are validated using both ground-based measurements over airports and upper-air radiosonde observations and their skill is illustrated during lake-breeze events. A reasonable agreement is found between measured and simulated winds especially when the boundary layer is convective, but the timing and inland penetration of lake-breeze events are overall slightly misrepresented. The WindAware model is compared with the classic multilayer perceptron (MLP) and the eXtreme Gradient Boosting (XGBoost) models. It is demonstrated by comparison to high-resolution simulations that WindAware provides more accurate predictions than the MLP over the 6 h lead times and has almost similar performance as the XGBoost model although the XGBoost’s training is the fastest using its parallelized implementation. WindAware also has higher prediction errors when validated against lake-breeze events data due to their under-representation in the training dataset.
Funder
John D. Odegard School of Aerospace Sciences, University of North Dakota
Publisher
Springer Science and Business Media LLC
Reference70 articles.
1. Curlander JC, Gilboa-Amir A, Kisser LM, Koch RA, Amazon Technologies, INC. (2017) Multi-level fulfillment center for unmanned aerial vehicles. U.S. Patent 9,777,502. https://patents.google.com/patent/US9777502B2/en
2. Cervantes A, Herrera S (2019) The drones are coming! How Amazon, alphabet and uber are taking to the skies. Wall Street J (Business), na. https://www.wsj.com/articles/the-drones-are-coming-11571995806
3. Sarker IH (2021) Deep learning: a comprehensive overview on techniques, taxonomy, applications and research directions. SN Comput Sci 2:420. https://doi.org/10.1007/s42979-021-00815-1
4. Arcucci R, Zhu J, Hu S, Guo Y-K (2021) Deep data assimilation: integrating deep learning with data assimilation. Appl Sci 11:1114. https://doi.org/10.3390/app11031114
5. Abirami S, Chitra P (2020) Energy-efficient edge based real-time healthcare support system. Adv Comput 117:339–368. https://doi.org/10.1016/bs.adcom.2019.09.007
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