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Fusion-Based Sensor Selection for Optimal State Estimation and Minimum Cost (Intelligent Optimization Approach)

机译:基于融合的传感器选择,用于最佳状态估计和最小成本(智能优化方法)

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This paper proposes a heuristic method for the sensor selection problem that uses a state vector fusion approach as a data fusion method. We explain the heuristic to estimate a stationary target position. Given a first sensor with specified accuracy and by using genetic algorithm, the heuristic selects second sensor such that the fusion of two sensor measurements would yield an optimal estimation in a target localization scenario. Optimality in our method means that a trade-off between estimation error and cost of sensory system should be created. The heuristic also investigates the importance of proportion between the range and bearing measurement accuracy of selected sensor. Monte Carlo Simulation results for a target position estimation scenario showed that the error in heuristic is less than the estimate error where sensors are used alone for estimation, while considering the trade-off between cost and accuracy.
机译:针对传感器选择问题,本文提出了一种启发式方法,该方法将状态向量融合方法用作数据融合方法。我们解释了启发式估计固定目标位置。给定具有指定精度的第一传感器并通过使用遗传算法,试探法选择第二传感器,以使两个传感器测量值的融合将在目标定位场景中产生最佳估计。我们方法的最优性意味着应该在估计误差和感觉系统成本之间进行权衡。启发式方法还研究了范围和所选传感器的方位测量精度之间的比例的重要性。目标位置估计方案的蒙特卡洛模拟结果表明,启发式方法的误差小于单独使用传感器进行估计时的估计误差,同时考虑了成本和精度之间的权衡。

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