Multi-objective evolutionary algorithms for sensor network design
暂无分享,去创建一个
AbstrAct Many sensor network design problems are characterized by the need to optimize multiple conflicting objectives. However, existing approaches generally focus on a single objective (ignoring the others), or combine multiple objectives into a single function to be optimized, to facilitate the application of classical optimization algorithms. This restricts their ability and constrains their usefulness to the network designer. A much more appropriate and natural approach is to address multiple objectives simultaneously , applying recently developed multi-objective evolutionary algorithms (MOEAs) in solving sensor network design problems. This chapter describes and illustrates this approach by modeling two sensor network design problems (mobile agent routing and sensor placement), as multi-objective optimization problems, developing the appropriate objective functions and discussing the tradeoffs between them., show that these MOEAs successfully discover multiple solutions characterizing the tradeoffs between the objectives.
[1] Shu-Chiang Lin,et al. A Bayesian Based Machine Learning Application to Task Analysis , 2009, Encyclopedia of Data Warehousing and Mining.
[2] Simon X. Yang. A Biologically Inspired Neural Network Approach to Real-Time Map Building and Path Planning , 2003 .