Real-time detection of uncalibrated sensors using neural networks

@article{MuozMolina2021RealtimeDO,
  title={Real-time detection of uncalibrated sensors using neural networks},
  author={Luis J. Mu{\~n}oz-Molina and Ignacio Cazorla-Pinar and J. P. Dominguez-Morales and Fernando Perez-Pe{\~n}a},
  journal={Neural Computing and Applications},
  year={2021},
  volume={34},
  pages={8227 - 8239}
}
Nowadays, sensors play a major role in several fields, such as science, industry and everyday technology. Therefore, the information received from the sensors must be reliable. If the sensors present any anomalies, serious problems can arise, such as publishing wrong theories in scientific papers, or causing production delays in industry. One of the most common anomalies are uncalibrations. An uncalibration occurs when the sensor is not adjusted or standardized by calibration according to a… 
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