Outer-approximation (OA)

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Author: Yousef Aloufi (CHEME 6800 Fall 2021)

Introduction

Theory

Example

Numerical Example

Minimize

Subject to
Solution
Step 1a: Start from and solve the NLP below:
Minimize
Subject to
Solution: , Upper Bound = 7

Step 1b: Solve the MILP master problem with OA for  :


Minimize

Subject to

MILP Solution: , Lower Bound = 6
Lower Bound < Upper Bound, Integer cut:

Step 2a: Start from and solve the NLP below:
Minimize

Subject to
Solution: , Upper Bound = 6
Upper Bound = 6 = Lower Bound, Optimum!
Optimal Solution for the MINLP:

Code

The following code is used to solve the above example in the General Algebraic Modeling System (GAMS): Variable z;

Positive Variables x1, x2;

Binary Variables y1, y2;

Equations obj, c1, c2, c3, c4, c5, c6, c7;

obj.. z =e= y1 + y2 + sqr(x1) + sqr(x2);

c1.. sqr(x1 - 2) - x2 =l= 0;

c2.. x1 - 2*y1 =g= 0;

c3.. x1 - x2 - 3*sqr(1 - y1) =g= 0;

c4.. x1 + y1 - 1 =g= 0;

c5.. x2 - y2 =g= 0;

c6.. x1 + x2 =g= 3*y1;

c7.. y1 + y2 =g= 1;

x1.lo = 0; x1.up = 4;

x2.lo = 0; x2.up = 4;

y1.l = 1; y2.l = 1;

model Example /all/;


option minlp = BONMIN;

option optcr = 0;

solve Example MINIMIZING z using MINLP;

display z.l, x1.l, x2.l, y1.l, y2.l;

Conclusion

References