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Geolocation in mines with an impulse response fingerprinting technique and neural networks

机译:脉冲响应指纹技术和神经网络对矿山进行地理定位

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The location of people, mobile terminals and equipment is highly desirable for operational enhancements in the mining industry. In an indoor environment such as a mine, the multipath caused by reflection, diffraction and diffusion on the rough sidewall surfaces, and the non-line of sight (NLOS) due to the blockage of the shortest direct path between transmitter and receiver are the main sources of range measurement errors. Unreliable measurements of location metrics such as received signal strengths (RSS), angles of arrival (AOA) and times of arrival (TOA) or time differences of arrival (TDOA), result in the deterioration of the positioning performance. Hence, alternatives to the traditional parametric geolocation techniques have to be considered. In this paper, we present a novel method for mobile station location using wideband channel measurement results applied to an artificial neural network (ANN). The proposed system, the wide band neural network-locate (WBNN-locate), learns off-line the location 'signatures' from the extracted location-dependent features of the measured channel impulse responses for line of sight (LOS) and non-line of sight (NLOS) situations. It then matches on-line the observation received from a mobile station against the learned set of 'signatures' to accurately locate its position. The location accuracy of the proposed system, applied in an underground mine, has been found to be 2 meters for 90% and 80% of trained and untrained data, respectively. Moreover, the proposed system may also be applicable to any other indoor situation and particularly in confined environments with characteristics similar to those of a mine (e.g. rough sidewalls surface).
机译:人员,移动终端和设备的位置对于提高采矿业的运营水平非常必要。在诸如矿井的室内环境中,主要是由于粗糙侧壁表面上的反射,衍射和扩散以及由于发射器和接收器之间的最短直接路径受阻而导致的非视线(NLOS)造成的多路径。范围测量误差的来源。诸如接收信号强度(RSS),到达角度(AOA)和到达时间(TOA)或到达时间差(TDOA)等位置度量的不可靠测量会导致定位性能下降。因此,必须考虑替代传统参数地理定位技术。在本文中,我们提出了一种将宽带信道测量结果应用于人工神经网络(ANN)的移动台定位的新方法。所提出的系统,宽带神经网络定位(WBNN-locate),从视线(LOS)和非线性视线的通道冲激响应的已提取位置相关特征中脱机学习位置“签名”视线(NLOS)情况。然后,它将从移动台接收到的观测结果与所学的“签名”集进行在线匹配,以准确定位其位置。发现该提议系统在地下矿井中的定位精度,对于90%和80%的经过训练和未经训练的数据分别为2米。而且,所提出的系统还可以适用于任何其他室内情况,特别是在具有类似于矿井的特征(例如,粗糙的侧壁表面)的受限环境中。

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