Multistatic radar system has a great potential for human detection and tracking for its fine localization precision, wide coverage and good observability. T-R-N (one transmitting antenna and N receiving antennas) rada...
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ISBN:
(纸本)9781509033324
Multistatic radar system has a great potential for human detection and tracking for its fine localization precision, wide coverage and good observability. T-R-N (one transmitting antenna and N receiving antennas) radar system is the most popular multistatic radar structure. In this paper, the localization performance of T-R-N radar is evaluated using Cramer-Rao lower bound (CRLB). The localization precision of different radar topology types and different numbers of receiving antennas are compared. The localization performance is also evaluated by experimental data. The results reveal that more separated receiving antenna configurations and more numbers of receiving antennas have better localization precision.
In wireless location area, taylor series algorithm is essential to find the solution to minimize the objective function the sum of squared TDOA measurement remains. This paper proposes a new objective function definit...
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ISBN:
(纸本)9781424455379
In wireless location area, taylor series algorithm is essential to find the solution to minimize the objective function the sum of squared TDOA measurement remains. This paper proposes a new objective function definition: the sum of squared distance from iterative point to each TDOA hyperbola. Then steepest descent method is used to find the optimized solution of the new model. In the end the two algorithms are compared using simulation tests under different environments. Results show that the new algorithm can achieve stabler and higher accuracy than taylor series algorithm especially under high noise environment.
In wireless location area, taylor series algorithm is essential to find the solution to minimize the objective function- the sum of squared TDOA measurement remains. This paper proposes a new objective function defini...
详细信息
In wireless location area, taylor series algorithm is essential to find the solution to minimize the objective function- the sum of squared TDOA measurement remains. This paper proposes a new objective function definition: the sum of squared distance from iterative point to each TDOA hyperbola. Then steepest descent method is used to find the optimized solution of the new model. In the end the two algorithms are compared using simulation tests under different environments. Results show that the new algorithm can achieve stabler and higher accuracy than taylor series algorithm especially under high noise environment.
The taylorseries method is one of the earliest analytic-numeric algorithms for approximate solution of initial value problems for ordinary differential equations. The main idea of the rehabilitation of these algorith...
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The taylorseries method is one of the earliest analytic-numeric algorithms for approximate solution of initial value problems for ordinary differential equations. The main idea of the rehabilitation of these algorithms is based on the approximate calculation of higher derivatives using well-known technique for the partial differential equations. In some cases such algorithms will be much more complicated than a R-K methods, because it will require more function evaluation than well-known classical algorithms. However these evaluations can be accomplished fully parallel and the coefficients of truncated taylorseries can be calculated with matrix-vector operations. For large systems these operations suit for the parallel computers. The approximate solution is given as a piecewise polynomial function defined on the subintervals of the whole interval and the local error of this solution at the interior points of the subinterval is less than that one at the end point. This property offers different facility for adaptive error control. This paper describes several above-mentioned algorithms and examines its consistency and stability properties. It demonstrates some numerical test results for stiff systems herewith we attempt to prove the efficiency of these new-old algorithms.
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