posted on 2015-05-13, 00:00authored byLluvia
M. Ochoa-Estopier, Megan Jobson
This
work presents a methodology for optimizing heat-integrated
crude oil distillation systems. Part I of this three-part series presents
a modeling strategy where artificial neural networks are used to represent
the distillation process. Part II presents a new methodology to retrofit
heat exchanger networks (HENs) and Part III presents the application
of this distillation model to perform operational optimization of
the crude oil distillation unit while proposing retrofit modifications
to the associated HEN. Independent variables of the distillation model
include flow rates of products, stripping steam, pump-around specifications,
and furnace exit temperature. Dependent variables include those related
to product quality, and temperatures, duties, and heat capacities
of process streams involved in heat integration. The resulting neural
network model is able to overcome convergence problems presented by
rigorous or simplified models. Simulation time is significantly improved
using neural networks, compared to rigorous models, with practically
no detriment to model accuracy.