A decision support approach for condition-based maintenance of rails based on big data analysis
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Bart De Schutter | Ali Jamshidi | Siamak Hajizadeh | Alfredo Núñez | Zili Li | Zhou Su | Meysam Naeimi | R.P.B.J. Dollevoet | B. Schutter | A. Jamshidi | A. Núñez | Z. Su | Zili Li | R. Dollevoet | M. Naeimi | S. Hajizadeh
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