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Spatial MCUSUM Control Chart
Carta de control MCUSUM espacial
DOI:
https://doi.org/10.15446/rce.v43n1.78748Keywords:
Mutivariate control charts, Multivariate CUSUM, Spatial correlation, Semivariogram (en)Cartas de control multivariadas, CUSUM multivariada, Correlación espacial, Semivariograma (es)
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References
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