Representation of classifier distributions in terms of hypergeometric functions_中国颗粒学会

在线阅读

Volurnes 72-75 (2023)

Volurnes 60-71 (2022)

Volurnes 54-59 (2021)

Volurnes 48-53 (2020)

Volurnes 42-47 (2019)

Volurnes 36-41 (2018)

Volurnes 30-35 (2017)

Volurnes 24-29 (2016)

Volurnes 18-23 (2015)

Volurnes 12-17 (2014)

Volurne 11 (2013)

Volurne 10 (2012)

Volurne 9 (2011)

Volurne 8 (2010)

Volurne 7 (2009)

Volurne 6 (2008)

Volurne 5 (2007)

Volurne 4 (2006)

Volurne 3 (2005)

Volurne 2 (2004)

Volurne 1 (2003)

在线阅读

Partic. vol. 5 no. 4 pp. 274-283 (August 2007)
doi: 10.1016/j.cpart.2007.05.003

Representation of classifier distributions in terms of hypergeometric functions

B. Venkoba Rao*

Show more

b.vrao@tcs.com

Abstract

This paper derives alternative analytical expressions for classifier product distributions in terms of Gauss hypergeometric function, 2F1, by considering feed distribution defined in terms of Gates–Gaudin–Schumann function and efficiency curve defined in terms of a logistic function. It is shown that classifier distributions under dispersed conditions of classification pivot at a common size and the distributions are difference similar. The paper also addresses an inverse problem of classifier distributions wherein the feed distribution and efficiency curve are identified from the measured product distributions without needing to know the solid flow split of particles to any of the product streams.

Keywords

Classifier; Efficiency curve; Inverse problem