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Mostindustrialbiotechnologicalprocessesareoperatedempirically.Oneofthe
major di?culties of applying advanced control theories is the
highly nonlinear nature of the processes. This book examines
approaches based on arti?cial intelligencemethods, inparticular,
geneticalgorithmsandneuralnetworks, for monitoring, modelling and
optimization of fed-batch fermentation processes. The main aim of a
process control is to maximize the ?nal product with minimum
development and production costs. This book is interdisciplinary in
nature, combining topics from biotechn- ogy, arti?cial
intelligence, system identi?cation, process monitoring, process
modelling and optimal control. Both simulation and experimental
validation are performed in this study to demonstrate the
suitability and feasibility of proposed methodologies. An online
biomass sensor is constructed using a - current neural network for
predicting the biomass concentration online with only three
measurements (dissolved oxygen, volume and feed rate). Results show
that the proposed sensor is comparable or even superior to other
sensors proposed in the literature that use more than three
measurements. Biote- nological processes are modelled by cascading
two recurrent neural networks. It is found that neural models are
able to describe the processes with high accuracy. Optimization of
the ?nal product is achieved using modi?ed genetic algorithms to
determine optimal feed rate pro?les. Experimental results of the
corresponding production yields demonstrate that genetic algorithms
are powerful tools for optimization of highly nonlinear systems.
Moreover, a c- bination of recurrentneural networks and genetic
algorithms provides a useful and cost-e?ective methodology for
optimizing biotechnological process
Mostindustrialbiotechnologicalprocessesareoperatedempirically.Oneofthe
major di?culties of applying advanced control theories is the
highly nonlinear nature of the processes. This book examines
approaches based on arti?cial intelligencemethods, inparticular,
geneticalgorithmsandneuralnetworks, for monitoring, modelling and
optimization of fed-batch fermentation processes. The main aim of a
process control is to maximize the ?nal product with minimum
development and production costs. This book is interdisciplinary in
nature, combining topics from biotechn- ogy, arti?cial
intelligence, system identi?cation, process monitoring, process
modelling and optimal control. Both simulation and experimental
validation are performed in this study to demonstrate the
suitability and feasibility of proposed methodologies. An online
biomass sensor is constructed using a - current neural network for
predicting the biomass concentration online with only three
measurements (dissolved oxygen, volume and feed rate). Results show
that the proposed sensor is comparable or even superior to other
sensors proposed in the literature that use more than three
measurements. Biote- nological processes are modelled by cascading
two recurrent neural networks. It is found that neural models are
able to describe the processes with high accuracy. Optimization of
the ?nal product is achieved using modi?ed genetic algorithms to
determine optimal feed rate pro?les. Experimental results of the
corresponding production yields demonstrate that genetic algorithms
are powerful tools for optimization of highly nonlinear systems.
Moreover, a c- bination of recurrentneural networks and genetic
algorithms provides a useful and cost-e?ective methodology for
optimizing biotechnological process
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