Spatiotemporal Approaches for Quality Control and Error Correction of Atmospheric Data through Machine Learning.

Journal: Computational intelligence and neuroscience
Published Date:

Abstract

We propose three quality control (QC) techniques using machine learning that depend on the type of input data used for training. These include QC based on time series of a single weather element, QC based on time series in conjunction with other weather elements, and QC using spatiotemporal characteristics. We performed machine learning-based QC on each weather element of atmospheric data, such as temperature, acquired from seven types of IoT sensors and applied machine learning algorithms, such as support vector regression, on data with errors to make meaningful estimates from them. By using the root mean squared error (RMSE), we evaluated the performance of the proposed techniques. As a result, the QC done in conjunction with other weather elements had 0.14% lower RMSE on average than QC conducted with only a single weather element. In the case of QC with spatiotemporal characteristic considerations, the QC done via training with AWS data showed performance with 17% lower RMSE than QC done with only raw data.

Authors

  • Hye-Jin Kim
    Department of Animal Life Science, College of Animal Life Science, Kangwon National University, Chuncheon 24341, Korea.
  • Sung Min Park
    R&D Center, Jubix Co., Ltd., B-808, Gunpo IT Valley, 17, Gosan-ro 148beon-gil, Gunpo-si, Gyeonggi-do 15850, Republic of Korea.
  • Byung Jin Choi
    R&D Center, Jubix Co., Ltd., B-808, Gunpo IT Valley, 17, Gosan-ro 148beon-gil, Gunpo-si, Gyeonggi-do 15850, Republic of Korea.
  • Seung-Hyun Moon
    Department of Computer Science & Engineering, Seoul National University, 1 Gwanak-ro, Gwanak-gu, Seoul 08826, Republic of Korea.
  • Yong-Hyuk Kim
    Department of Computer Science & Engineering, Kwangwoon University, 20 Kwangwoon-ro, Nowon-gu, Seoul 139-701, Republic of Korea.