Optimization of Antenna Arrays and Microwave Filters Using Differential Evolution Algorithms

Optimization of Antenna Arrays and Microwave Filters Using Differential Evolution Algorithms

DOI: 10.4018/978-1-5225-7598-6.ch094
OnDemand:
(Individual Chapters)
Available
$37.50
No Current Special Offers
TOTAL SAVINGS: $37.50

Abstract

The purpose of this chapter is to briefly describe the DE algorithm and its variants and present their application to antenna and microwave design problems. This chapter presents results from design cases using self-adaptive DE. The chapter discusses the issues, problems, and trends with DE for wireless communications. A brief description of different DE algorithms is also given. The numerical results for different design cases are reported. Moreover, an outline of future research directions is provided. Finally, the chapter concludes and the advantages of using a self-adaptive DE-based approach in the design and optimization of microwave systems and antennas is discussed.
Chapter Preview
Top

Background

Differential evolution was introduced proposed by KennethV. Price and R. Storn in 1995. It uses real operators for mutation and crossover, instead of the binary operators used in the first GAs. That fact has made DE suitable for solving real-valued problems. DE is a very simple but very powerful stochastic global optimizer. It has been used to solve problems in many scientific and engineering fields and proved to be a very efficient and robust technique for global optimization. In 1997, Storn established a website (Rainer Storn) to where DE source code is publically available for several popular programming languages. Since then there is an explosive growth in differential evolution research.

One of the DE advantages is that very few control parameters have to be adjusted in each algorithm run. However, the control parameters involved in DE are highly dependent on the optimization problem. Therefore, one of the major issues with DE is the correct selection of the control parameters. A basic trend in DE research is the control parameter setting, which has been extensively studied in the literature (Eiben, Hinterding, & Michalewicz, 1999). The effect of the population size was reported in (Feoktistov & Janaqi, 2004).

Complete Chapter List

Search this Book:
Reset