Numerically Efficient Fuzzy MPC Algorithm with Advanced Generation of Prediction—Application to a Chemical Reactor
Abstract
:1. Introduction
2. Model Predictive Control Algorithms
2.1. MPC Algorithms Based on Nonlinear Models (NMPC)
2.2. MPC Algorithms Based on Linear Models (LMPC)
3. Fuzzy MPC Algorithm with Advanced Generation of Prediction
3.1. Generation of the Dynamic Matrix
3.2. Generation of the Free Response
- First, the nonlinear model (12) is used to obtain
- Next, the values are used when calculating the output values for the next sampling instant:
- For the ith iteration, using the values one obtains:
- After taking into account the estimation of unmeasured disturbances , containing also influence of modeling errors, the final form of the formula describing the elements of the free response is obtained:
3.3. Formulation of the Optimization Problem
3.4. Iterative Improvement of the Prediction
- First, the model is used to obtain values
- Next, the values are used to calculate the output values for the next sampling instant:
- For the ith iteration, using the values one obtains:
- After taking into account the estimation of unmeasured disturbances , containing also influence of modeling errors, like in (30), the final formula describing the elements of the free response is obtained:
3.5. Fast Generation of the Control Action—Analytical Approach
3.6. Disturbance Measurement Utilization
3.6.1. Employing Fuzzy Model
3.6.2. Employing Nonlinear Model
4. Example
Experiments
5. Conclusions
Funding
Conflicts of Interest
Abbreviations
CSTR | Continuous Stirred–Tank Reactor |
DMC | Dynamic Matrix Control |
FMPC | Fuzzy Model Predictive Control |
LMPC | Linear Model Predictive Control |
LMIs | Linear Matrix Inequalities |
MPC | Model Predictive Control |
MIMO | Multiple–Input Multiple–Output |
NMPC | Nonlinear Model Predictive Control |
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NMPC | FMPC1 | FMPC2 | |
---|---|---|---|
mol/L | 29.1671 | 1.8175 | 1.8118 |
mol/L | 47.0518 | 1.8116 | 1.8137 |
sum | 76.2189 | 3.6291 | 3.6254 |
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Marusak, P.M. Numerically Efficient Fuzzy MPC Algorithm with Advanced Generation of Prediction—Application to a Chemical Reactor. Algorithms 2020, 13, 143. https://doi.org/10.3390/a13060143
Marusak PM. Numerically Efficient Fuzzy MPC Algorithm with Advanced Generation of Prediction—Application to a Chemical Reactor. Algorithms. 2020; 13(6):143. https://doi.org/10.3390/a13060143
Chicago/Turabian StyleMarusak, Piotr M. 2020. "Numerically Efficient Fuzzy MPC Algorithm with Advanced Generation of Prediction—Application to a Chemical Reactor" Algorithms 13, no. 6: 143. https://doi.org/10.3390/a13060143
APA StyleMarusak, P. M. (2020). Numerically Efficient Fuzzy MPC Algorithm with Advanced Generation of Prediction—Application to a Chemical Reactor. Algorithms, 13(6), 143. https://doi.org/10.3390/a13060143