2016 AIChE Annual Meeting
(714f) Predicting Feeder Performance Based on Material Flow Properties
Authors
Method: The proposed methodology includes techniques to characterize material flow properties, methods to quantify feeder performance of a loss-in-weight feeder, and predictive multivariate analysis. Materials with varying flow properties were firstly characterized. The flow properties of each material was represented by 30 flow indices. Two approaches to correlate feeding performance and material flow properties were examined in the study: principal component analysis followed by similarity scoring (PCA-SS), and partial least squares regression (PLSR).
Results: Experimental results showed that selection of the optimal feeder screw to achieve optimal feeder performance is heavily dependent on material flow properties. Both approaches were validated by testing an additional material. The predicted feeder results were generally in good agreement with the experimental results. In addition, a strong linear relation was observed between the initial feed factor of each material and its scores for the first principal component.
Conclusion: The work presented here has shown an efficient approach to correlate material properties with process performance using multivariate analysis. This approach is especially powerful in the early phase of process and product development, when the amount of a material is limited.