Title of article :
An enhanced genetic algorithm for structural topology optimization
Author/Authors :
S. Y. Wang، نويسنده , , Xin Liu and K. Tai، نويسنده , , M. Y. Wang، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Genetic algorithms (GAs) have become a popular optimization tool for many areas of research and
topology optimization an effective design tool for obtaining efficient and lighter structures. In this paper,
a versatile, robust and enhanced GA is proposed for structural topology optimization by using problemspecific
knowledge. The original discrete black-and-white (0–1) problem is directly solved by using
a bit-array representation method. To address the related pronounced connectivity issue effectively,
the four-neighbourhood connectivity is used to suppress the occurrence of checkerboard patterns.
A simpler version of the perimeter control approach is developed to obtain a well-posed problem and
the total number of hinges of each individual is explicitly penalized to achieve a hinge-free design.
To handle the problem of representation degeneracy effectively, a recessive gene technique is applied
to viable topologies while unusable topologies are penalized in a hierarchical manner. An efficient
FEM-based function evaluation method is developed to reduce the computational cost. A dynamic
penalty method is presented for the GA to convert the constrained optimization problem into an
unconstrained problem without the possible degeneracy. With all these enhancements and appropriate
choice of the GA operators, the present GA can achieve significant improvements in evolving into
near-optimum solutions and viable topologies with checkerboard free, mesh independent and hinge-free
characteristics. Numerical results show that the present GA can be more efficient and robust than the
conventional GAs in solving the structural topology optimization problems of minimum compliance
design, minimum weight design and optimal compliant mechanisms design. It is suggested that the
present enhanced GA using problem-specific knowledge can be a powerful global search tool for
structural topology optimization.
Keywords :
Topology optimization , Genetic algorithms , bit-array representation , connectivity analysis , black-and-white design , hinge-free-design
Journal title :
International Journal for Numerical Methods in Engineering
Journal title :
International Journal for Numerical Methods in Engineering