Polymer and Separations Research Laboratory (PolySep)

 

 

 

Last update:

12/27/2005

 

Process Analysis

Search

 

 

Home
Nano-Structuring
Separations
Crystallization
Desalination
Polymer Chain Dynamics
Electroactive Polymers
Cognitive Networks
Environmental
New Initiatives

 

 
Neural Networks for Chemical Process Analysis 

 

Deterministic modeling of complex chemical and separation processes is often infeasible when such processes involve a series of complex steps and are affected by numerous variables. Recent, advances in neural network system design have made it possible to map complex process behavior, given sufficient operational data, and to be able to make generalizations regarding the process and even assess potential process upsets. Although, there have been a number of scoping studies  on the application of neural networks to process modeling, UCLA is in a unique position having developed, in collaboration with the University of Tarragona (Spain), a novel superior neural network approach for modeling complex systems. 

 

The study will involve a collaboration with a number of membrane manufacturers as well as a commercial membrane facility and a pilot plant in California. The outcome of the study will be a unique analysis system to explore system performance and pilot plant optimization. Given, the growing utilization of membranes in both the chemical and pharmaceutical industries and on a much larger scale by water utilities, the results of this research should have an immediate impact on this rapidly expanding area of membrane technology.  

   

Fundamental areas: process analysis, transport phenomena, separations, process thermodynamics, neural networks, cognitive systems, computer modeling.  

 

References:

 

 

 

 

 

 

 

 

 

 

Copyright © [Year] [Your company name]

 Back Home Up Next