Classification-assisted memetic algorithms for solving optimization problems with restricted equality constraint function mapping
Conference proceedings article
ผู้เขียน/บรรณาธิการ
กลุ่มสาขาการวิจัยเชิงกลยุทธ์
รายละเอียดสำหรับงานพิมพ์
รายชื่อผู้แต่ง: Stephanus Daniel Handoko, Kwoh Chee Keong, Ong Yew Soon, Jonathan Chan
ปีที่เผยแพร่ (ค.ศ.): 2011
ชื่อชุด: 2011 IEEE Congress of Evolutionary Computation (CEC)
หน้าแรก: 1209
หน้าสุดท้าย: 1216
จำนวนหน้า: 8
ISBN: 9781424478347
URL: https://ieeexplore.ieee.org/document/5949754
บทคัดย่อ
The success of Memetic Algorithms (MAs) has driven many researchers to be more focused on the efficiency aspect of the algorithms such that it would be possible to effectively employ MAs to solve computationally expensive optimization problems where single evaluation of the objective and constraint functions may require minutes to hours of CPU time. One of the important design issues in MAs is the choice of the individuals upon which local search procedure should be applied. Selecting only some potential individuals lessens the demand for functional evaluations hence accelerates convergence to the global optimum. In recent years, advances have been made targeting optimization problems with single equality constraint h(x) = 0. The presence of previously evaluated candidate solutions with different signs of constraint values within some localities thus allows the estimation of the constraint boundary. An individual will undergo local search only if it is sufficiently close to the approximated boundary. Elegant as it may seem, the approach had unfortunately assumed that every constraint function maps the design variables to optimize into unbounded real values. This, however, may not always be the case in practice. In this paper, we present a strategy to efficiently solve constrained problems with a single equality constraint; the function of which maps the design variables into restricted (either strictly non-negative or strictly non-positive) real values only.
คำสำคัญ
Classification, computationally-expensive problems, equality-constrained optimization, Evolutionary computation, genetic algorithms, memetic algorithms, sequential quadratic programming, support vector machine