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\quad \dot{x_3}(t) & = & k_3(t) \cdot x_2(t),\\
\quad \dot{x_3}(t) & = & k_3(t) \cdot x_2(t),\\
\quad k_i(t) & = & k_i^* \cdot \exp\left( \frac{-E_i}{T(t)} \right), \ i=1,\ldots,4, \\
\quad k_i(t) & = & k_i^* \cdot \exp\left( \frac{-E_i}{T(t)} \right), \ i=1,\ldots,4, \\
\quad T(t) & \in & [273, 415] \ \quad \forall t \in [0,t_f] \\
\quad T(t) & \in & [273, 415] \ \quad \forall t \in [0,t_f], \\
\quad x(0) &=& (1, 0, 0)^T
\quad x(0) &=& (1, 0, 0)^T.
   \end{array}
   \end{array}
</math>
</math>

Revision as of 14:18, 22 August 2025

Denbigh Reaction
State dimension: 1
Differential states: 3
Discrete control functions: 1


The Denbigh Reaction problem is based on the system of chemical reactions initially considered by Denbigh [1], which was also studied by Aris [2] and more recently by Luus [3]:

A+BXXQXYA+XP

where X is an intermediate, Y is the desired product, and P and Q are waste products. The optimal control problem is to find T(t) (the temperature of the reactor as a function of time) so that the yield of Y is maximized at the end of the given batch time tf.

Its dynamics are given by a three-dimensional ODE model. The optimal control functions is given by a path-constrained arc.

Mathematical formulation

maxux3(tf)subject tox1˙(t)=k1(t)x1(t)k2(t)x1(t),x2˙(t)=k1(t)x1(t)k3(t)+k4(t)x2(t),x3˙(t)=k3(t)x2(t),ki(t)=ki*exp(EiT(t)), i=1,,4,T(t)[273,415] t[0,tf],x(0)=(1,0,0)T.

Parameters

Parameters
Symbol Value
E1 103
E2 107
E3 10
E4 103
k1* 3103
k2* 6103
k3* 3103
k4* 0
tf 103


Reference Solutions

Here is one local solution to the above control problem.

Miscellaneous and Further Reading

This formulation and a detailed description can be found in [1].

References

[1] Kenneth Denbigh, Chemical Reactor Theory an Introduction, Cambridge University Press, London, 1965.
[2] Rutherford Aris. The Optimal Design of Chemical Reactors A Study in Dynamic Programming. Academic Press, London, 1961.
[3] Rein Luus, Iterative Dynamic Programming. CHAPMAN & HALL/CRC Monographs and Surveys in Pure and Applied Mathematics, New York, 2000.
[4] Tomlab optimization: https://tomopt.com/docs/propt/tomlab_propt030.php