• Title of article

    Settling of mineral aqueous suspensions. Classification and stability prediction by neural networks

  • Author/Authors

    Vié، نويسنده , , Rémy and Johannet، نويسنده , , Anne and Azéma، نويسنده , , Nathalie، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2014
  • Pages
    9
  • From page
    202
  • To page
    210
  • Abstract
    Aqueous mineral suspensions and pastes are greatly used in industry and waste treatment processes. But unfortunately due to their inherent complexity (numerous parameters to consider and non-linearity of temporal behaviour), their physicochemical stability, controlled by their dispersion state, is difficult to predict. A way to have a better understanding of these systems is to apprehend stability by studying settling behaviour of suspensions in function of solid concentration and interparticle interactions. s purpose, previous works on settling optical analysis were used in addition to rheological approach, to determine in some mineral systems, a suspension typology in function of solid mass fraction and predominant particle interaction. In order to generalize this work to various mineral aqueous suspensions, a modelling study is proposed in this paper. The aim of this work is to predict the stability of mineral suspensions based on a specific index: phase separation index (PSI) previously established using 10 discriminating parameters currently measured in industrial and academic areas. Because of their well-known ability to model non-linear processes, a neural networks-based procedure was used to classify the settling behaviour in four classes: diluted, concentrated (cohesive and non cohesive) and solid suspension. The method was proved to be very efficient, delivering 100% of good classification on various sets of test sets up to 60% of the database allowing thus to predict the suspension stability for applications such as inks, paints, cosmetics. In this research, the predominant influence of mass fraction parameter was showed.
  • Keywords
    Mineral suspension , NEURAL NETWORKS , settling , Classification , stability
  • Journal title
    Colloids and Surfaces A Physicochemical and Engineering Aspects
  • Serial Year
    2014
  • Journal title
    Colloids and Surfaces A Physicochemical and Engineering Aspects
  • Record number

    1946877