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Vibration sensor dataset for estimating fan coil motor health.
Lifsitch, Heitor; Rocha, Gabriel; Bragança, Hendrio; Filho, Cláudio; Okimoto, Leandro; Amorin, Allan; Cardoso, Fábio.
Affiliation
  • Lifsitch H; Department of R&D, TPV company, Amazonas, Brazil.
  • Rocha G; Department of Electrical Engineering, State University of Amazonas, Amazonas, Brazil.
  • Bragança H; Institute of Computing, Federal University of Amazonas, Amazonas, Brazil.
  • Filho C; Department of Electrical Engineering, State University of Amazonas, Amazonas, Brazil.
  • Okimoto L; Institute of Computing, Federal University of Amazonas, Amazonas, Brazil.
  • Amorin A; Department of R&D, TPV company, Amazonas, Brazil.
  • Cardoso F; Department of Electrical Engineering, State University of Amazonas, Amazonas, Brazil.
Data Brief ; 56: 110866, 2024 Oct.
Article in En | MEDLINE | ID: mdl-39286422
ABSTRACT
To enhance the field of continuous motor health monitoring, we present FAN-COIL-I, an extensive vibration sensor dataset derived from a Fan Coil motor. This dataset is uniquely positioned to facilitate the detection and prediction of motor health issues, enabling a more efficient maintenance scheduling process that can potentially obviate the need for regular checks. Unlike existing datasets, often created under controlled conditions or through simulations, FAN-COIL-I is compiled from real-world operational data, providing an invaluable resource for authentic motor diagnosis and predictive maintenance research. Gathered using a high-resolution 32 KHz sampling rate, the dataset encompasses comprehensive vibration readings from both the forward and rear sides of the Fan Coil motor over a continuous two-week period, offering a rare glimpse into the dynamic operational patterns of these systems in a corporate setting. FAN-COIL-I stands out not only for its real-world applicability but also for its potential to serve as a reliable benchmark for researchers and practitioners seeking to validate their models against genuine engine conditions.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Data Brief Year: 2024 Document type: Article Affiliation country: Brazil Country of publication: Netherlands

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Data Brief Year: 2024 Document type: Article Affiliation country: Brazil Country of publication: Netherlands