论文标题
使用SOP的精确和快速定位的自适应频带选择
Adaptive Frequency Band Selection for Accurate and Fast Positioning utilizing SOPs
论文作者
论文摘要
机会信号(SOP)是一种有前途的技术,可用于在全球导航卫星系统(GNSS)信息不可靠或不可用的地区进行相对定位。该技术处理在广泛的无线频谱上传输的各种信号的特征,以使接收器能够在太空中定位。这项工作检查了频率选择问题,以便仅使用周围信号的接收信号强度(RSS)实现快速而准确的定位。从先前的信念开始,研究了搜索最匹配预测位置轨迹的频段的问题。为了最大程度地提高位置估计的准确性,排名和选择问题是数学提出的。提出了一种最佳学习理论的知识阶级(kg)算法,该算法使用频率频段值的贝叶斯先前信念中的相关性大大减少算法的处理时间。该技术对无人驾驶汽车(UAV)的实际情况进行了实验测试,其结果表明其有效性和实际适用性。
Signals of opportunity (SOPs) are a promising technique that can be used for relative positioning in areas where global navigation satellite system (GNSS) information is unreliable or unavailable. This technique processes features of the various signals transmitted over a broad wireless spectrum to enable a receiver to position itself in space. This work examines the frequency selection problem in order to achieve fast and accurate positioning using only the received signal strength (RSS) of the surrounding signals. Starting with a prior belief, the problem of searching for a frequency band that best matches a predicted location trajectory is investigated. To maximize the accuracy of the position estimate, a ranking-and-selection problem is mathematically formulated. A knowledge-gradient (KG) algorithm from optimal learning theory is proposed that uses correlations in the Bayesian prior beliefs of the frequency band values to dramatically reduce the algorithm's processing time. The technique is experimentally tested for a practical scenario of an unmanned aerial vehicle (UAV) moving around a GPS-denied environment, with obtained results demonstrating its validity and practical applicability.