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Homepage>BS Standards>19 TESTING>19.120 Particle size analysis. Sieving>BS ISO 9276-4:2001+A1:2017 Representation of results of particle size analysis Characterization of a classification process
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BS ISO 9276-4:2001+A1:2017 Representation of results of particle size analysis Characterization of a classification process

BS ISO 9276-4:2001+A1:2017

Representation of results of particle size analysis Characterization of a classification process

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Standard number:BS ISO 9276-4:2001+A1:2017
Pages:26
Released:2017-11-24
ISBN:978 0 580 92677 8
Status:Standard
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BS ISO 9276-4:2001+A1:2017


This standard BS ISO 9276-4:2001+A1:2017 Representation of results of particle size analysis is classified in these ICS categories:
  • 19.120 Particle size analysis. Sieving

The main object of this part of ISO 9276 is to provide the mathematical background for the characterization of a classification process. This part of ISO 9276 is not limited to an application in particle size analysis, the same procedure may be used for the characterization of a technical classification process (e.g. air classification, centrifugal classification) or a separation process (e.g. gas or hydrocyclones).

In clause 3 the characterization of a classification process is described under the presupposition that the A1_startdistribution densityA1_end curves describing the feed material and the fractions, as well as the overall mass balance, are free from errors. In clause 4 the influence of systematic errors on the efficiency of a classification process is described. The effect of stochastic errors in the characterization of a classification process is described in annex A.