Weighted average strategy-based distributed radar network multi-target positioning method

A multi-target positioning and weighted average technology, which is applied in the reflection/re-radiation of radio waves, special data processing applications, and utilization of re-radiation. And other issues

Inactive Publication Date: 2014-10-15
NORTHWESTERN POLYTECHNICAL UNIV
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Problems solved by technology

Since the knapsack problem is a typical NP-hard problem, the computational complexity increases exponentially, and its optimal solution can only be obtained through exhaustion
[0004] Although the existing technology has systematically studied the power allocation and transmitter and receiver selection problems in multi-radar systems, it does not use the structure of the objective function to be optimized and the feasible solution space. It has been verified to have good performance, but the lack of theoretical guarantees means that the algorithm performance may be very poor in some cases
In addition, it only studies the case where there is one target in the system, and there are often a large number of targets in the actual scene

Method used

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  • Weighted average strategy-based distributed radar network multi-target positioning method
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  • Weighted average strategy-based distributed radar network multi-target positioning method

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Embodiment Construction

[0030] The above and other technical features and advantages of the present invention will be described in more detail below in conjunction with the accompanying drawings.

[0031] The distributed radar network locating method of the present invention realizes better locating by setting near-optimal transmitters.

[0032] see figure 1 As shown, it is a flow chart of the distributed radar network multi-target positioning method of the present invention, and the specific process is:

[0033] Step a, setting M transmitters and N receivers in a distributed multi-radar network, which are widely distributed geographically and time-synchronized; the transmitters and receivers are located on a two-dimensional plane, and their positions are known. The set of transmitter position coordinates is denoted as The set of receiver position coordinates is denoted as S Rx : = { ( ...

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Abstract

The invention relates to a weighted average strategy-based distributed radar network multi-target positioning method. The method includes the following steps that: step a, M transmitters and N receivers are arranged in a distributed radar network and are widely distributed geographically and in time synchronization; the transmitters and the receivers are located in a two-dimensional plane, and the locations of the transmitters and the receivers are known; step b, parameter information such as target position and radar cross-section area is estimated through utilizing a target tracking algorithm, and objective functions to be optimized are constructed through a Cramer-Rao Bound-based variance decline function of transmitter sub sets; step c, a sub set of the transmitters is selected to maximize objective functions under the constraint of total power by using sub-module features of the objective functions to be optimized and a weighted average strategy-based sub set selection algorithm. According to the weighted average strategy-based distributed radar network multi-target positioning method of the invention, a weighted average strategy-based polynomial time algorithm complexity transmitter sub set selection algorithm having a performance guaranteeing function can be realized through utilizing the sub-module features of the objective functions to be optimized.

Description

technical field [0001] The invention relates to the field of radar information processing, in particular to a multi-target positioning method of a distributed radar network. Background technique [0002] The distributed radar network is composed of multiple radar sites widely distributed in the area, including: distributed multiple input multiple output (Multiple Input Multiple Output, MIMO) radar and multi-station radar system. Distributed MIMO radar was first proposed by Fishler et al. Compared with traditional radar, one of the main advantages of distributed MIMO radar is that the widely distributed transmitting / receiving antennas in the area can capture different sections of the target and provide information about the spatial scattering characteristics of the target. , which can avoid the scintillation of target scatter and thus have better performance in detecting low-observable targets, has received extensive attention. [0003] In a distributed radar network, the nu...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01S13/06G06F19/00
CPCG01S13/003G01S13/06
Inventor 王增福郭振潘泉兰华梁彦
Owner NORTHWESTERN POLYTECHNICAL UNIV
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