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基于凸优化算法的无人水下航行器协同定位
引用本文:刘明雍,李闻白.基于凸优化算法的无人水下航行器协同定位[J].自动化学报,2010,36(5):704-710.
作者姓名:刘明雍  李闻白
作者单位:1.西北工业大学航海学院 西安 710072
基金项目:Supported by National High Technology Research and Development Program of China (863 Program) (2007AA809502C);;National Natural Science Foundation of China (50979093);;Program for New Century Excellent Talents in University (NCET-06-0877)
摘    要:In this paper, a cooperative localization algorithm for autonomous underwater vehicles (AUVs) is proposed. A ``parallel" model is adopted to describe the cooperative localization problem instead of the traditional ``leader-follower" model, and a linear programming associated with convex optimization method is used to deal with the problem. After an unknown-but-bounded model for sensor noise is assumed, bearing and range measurements can be modeled as linear constraints on the configuration space of the AUVs. Merging these constraints induces a convex polyhedron representing the set of all configurations consistent with the sensor measurements. Estimates for the uncertainty in the position of a single AUV or the relative positions of two or more nodes can then be obtained by projecting this polyhedron onto appropriate subspaces of the configuration space. Two different optimization algorithms are given to recover the uncertainty region according to the number of the AUVs. Simulation results are presented for a typical localization example of the AUV formation. The results show that our positioning method offers a good localization accuracy, although a small number of low-cost sensors are needed for each vehicle, and this validates that it is an economical and practical positioning approach compared with the traditional approach.

关 键 词:Autonomous  underwater  vehicle  (AUV)    convex  optimization    cooperative  localization    uncertainty  region    screening  algorithm    approximation  algorithm
收稿时间:2009-3-9
修稿时间:2009-7-28

Convex Optimization Algorithms for Cooperative Localization in Autonomous Underwater Vehicles
LIU Ming-Yong LI Wen-Bai PEI Xuan .College of Marine,Northwestern Polytechnical University,Xi an ,P.R.China.Convex Optimization Algorithms for Cooperative Localization in Autonomous Underwater Vehicles[J].Acta Automatica Sinica,2010,36(5):704-710.
Authors:LIU Ming-Yong LI Wen-Bai PEI Xuan College of Marine  Northwestern Polytechnical University  Xi an  PRChina
Affiliation:1.College of Marine, Northwestern Polytechnical University, Xi'an 710072, P.R. China
Abstract:In this paper, a cooperative localization algorithm for autonomous underwater vehicles (AUVs) is proposed. A ``parallel" model is adopted to describe the cooperative localization problem instead of the traditional ``leader-follower" model, and a linear programming associated with convex optimization method is used to deal with the problem. After an unknown-but-bounded model for sensor noise is assumed, bearing and range measurements can be modeled as linear constraints on the configuration space of the AUVs. Merging these constraints induces a convex polyhedron representing the set of all configurations consistent with the sensor measurements. Estimates for the uncertainty in the position of a single AUV or the relative positions of two or more nodes can then be obtained by projecting this polyhedron onto appropriate subspaces of the configuration space. Two different optimization algorithms are given to recover the uncertainty region according to the number of the AUVs. Simulation results are presented for a typical localization example of the AUV formation. The results show that our positioning method offers a good localization accuracy, although a small number of low-cost sensors are needed for each vehicle, and this validates that it is an economical and practical positioning approach compared with the traditional approach.
Keywords:Autonomous underwater vehicle (AUV)  convex optimization  cooperative localization  uncertainty region  screening algorithm  approximation algorithm
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