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Environmental Sensor Drift Correction using Wavelet mFCM FIS Architecture: An Unsupervised Machine Learning Approach

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Figure

Fig 1: Tyco Greenspan EC250 sensors
Fig 2: Typical monthly Sensor observations during May 2009.
Fig 4: Clustering using PC-FCM algorithm to identify six separable monthly data
Fig 6: m-FCM based drift correction factor estimator algorithm
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