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Abbreviations
- ANN:
-
Artificial neural network
- CER:
-
Carbon dioxide evolution rate
- C feed :
-
Substrate concentration in feed flow
- CPR:
-
Carbon dioxide production rate
- DO:
-
Dissolved oxygen
- e(t):
-
Control deviation at time t
- EKF:
-
Extended Kalman filter
- FIA:
-
Flow injection analysis
- F0(t):
-
Feeding rate
- Fb(t):
-
Feeding rate due to feedback part
- GC:
-
Gas chromatography
- HCDC:
-
High-cell-density cultivation
- K :
-
PID controller parameter matrix
- K d :
-
PID controller parameter, derivative part
- K i :
-
PID controller parameter, integral part
- K L a :
-
Oxygen transfer coefficient
- K p :
-
PID controller parameter, proportional part
- LLM:
-
Local linear model
- LoLiMoT:
-
Local linear model tree
- m :
-
Substrate consumption due to cell maintenance
- MIMO:
-
Multiple-input multiple-output
- MISO:
-
Multiple-input single-output
- MPC:
-
Model predictive controller
- NMPC:
-
Nonlinear model predictive controller
- ORP:
-
Oxidation–reduction potential
- OTR:
-
Oxygen transfer rate
- OUR:
-
Oxygen uptake rate
- PID:
-
Proportional–integral–derivative
- r DO :
-
Specific oxygen consumption rate
- r DO X t :
-
Oxygen consumption rate
- SISO:
-
Single-input single-output
- t :
-
Time
- u(t):
-
Control action at time t
- V :
-
Cultivation volume
- V 0 :
-
Initial volume
- V head :
-
Volume of head space
- X :
-
Biomass
- x(t),x:
-
Input values (measurement)
- X 0 :
-
Initial biomass
- Y XS :
-
Yield factor for biomass formation
- μ :
-
Specific growth rate
- μB(X):
-
Membership function of a fuzzy logic controller
- μ sp :
-
Set-point of specific growth rate
- τ :
-
Integration variable
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Stanke, M., Hitzmann, B. (2012). Automatic Control of Bioprocesses. In: Mandenius, CF., Titchener-Hooker, N. (eds) Measurement, Monitoring, Modelling and Control of Bioprocesses. Advances in Biochemical Engineering/Biotechnology, vol 132. Springer, Berlin, Heidelberg. https://doi.org/10.1007/10_2012_167
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DOI: https://doi.org/10.1007/10_2012_167
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