524 Geometric Programming
they can each be approximated by a single-term posynomial with the help of Eq. (8.78)
as
̃
Q 1 (X,
̃
X)=( 1 + 4
̃
x^21 )
(
x 1
̃
x 2
) 8
̃
x^21 /( 1 + 4
̃
x^21 )
̃
Q 2 (X,
̃
X)=
(
1 + ̃
x 2
̃
x 1
)(
x 1
̃
x 1
)−
̃
x 2 /(
̃
x 1 +
̃
x 2 )(x
2
̃
x 1
)
̃
x 2 /(
̃
x 1 +
̃
x 2 )
Let us start the iterative process from the pointX(^1 )=
{ 1
1
}
,which can be seen to be
feasible. By taking
̃
X=X(^1 ), we obtain
̃
Q 1 (X,X(^1 ))= 5 x
8 / 5
1
̃
Q 2 (X,X(^1 ))= 2 x 1 −^1 /^2 x 21 /^2
and we formulate the first ordinary geometric programming problem (OGP 1 ) as
Minimizex 1
subject to
4
5 x
− 8 / 5
1 x^2 ≤^1
1
2 x
− 1 / 2
1 x
− 1 / 2
2 ≤^1
x 1 > 0
x 2 > 0
Since this (OGP 1 ) is a geometric programming problem with zero degree of difficulty,
its solution can be found by solving a square system of linear equations, namely
λ 1 = 1
λ 1 −^85 λ 2 −^12 λ 3 = 0
λ 2 −^12 λ 3 = 0
The solution isλ∗ 1 = 1 ,λ∗ 2 = 135 , λ∗ 3 =^1013. By substituting this solution into the dual
objective function, we obtain
v(λ∗)=(^45 )^5 3 /^1 (^12 )^10 3 /^1 ≃ 0. 5385
From the duality relations, we get
x 1 ≃ 0. 5 385 and x 2 =^54 (x 1 )^8 5 /^1 ≃ 0. 4643
Thus the optimal solution of OGP 1 is given by
X(o^1 pt)=