The growth in the number of low-cost narrow band radios such as Bluetooth low energy (BLE) enabled applications such as asset tracking, human behavior monitoring, and keyless entry. The accurate range estimation is a must in such applications. Phase-based ranging has recently gained momentum due to its high accuracy in multipath environment compared to traditional schemes such as ranging based on received signal strength. The phase-based ranging requires tone exchange on multiple frequencies on a uniformly sampled frequency grid. Such tone exchange may not be possible due to some missing tones, e.g., reserved advertisement channels. Furthermore, the IQ values at a given tone may be distorted by interference. In this paper, we proposed two phase-based ranging schemes which deal with the missing/interfered tones. We compare the performance and complexity of the proposed schemes using simulations, complexity analysis, and two measurement setups. In particular, we show that for small number of missing/interfered tones, the proposed system based on employing a trained neural network (NN) performs very close to a reference ranging system where there is no missing/interference tones. Interestingly, this high performance is at the cost of negligible additional computational complexity and up to 60.5 Kbytes of additional required memory compared to the reference system, making it an attractive solution for ranging using hardware-limited radios such as BLE.
翻译:低温低能(Blue牙低能)等低成本窄带收音机数量的增长,使得资产追踪、人类行为监测和无关键输入等低价窄带式应用得以应用。准确的测距估计是这种应用中必须具备的。基于阶段的测距最近由于在多路环境中的高度精度,与基于接收信号强度的测距等传统办法相比,在多路环境中的测距最近增加了动力。基于阶段的测距要求在一个统一的抽样频率网上对多个频率进行音调交换。由于缺少一些调子,例如保留广告频道,这种调子交换可能是不可能的。此外,某个音调的IQ值可能被干扰扭曲。在本文中,我们提出了两种基于阶段的测距计划,处理缺失/互换的调。我们利用模拟、复杂度分析以及两个测量设置来比较拟议办法的性能和复杂性。我们特别表明,对于少量的缺失/互换频率网(NNN)来说,拟议的系统与一个没有缺失/干扰的参照系统非常接近。有趣的是,这一高度的测距系统比了60级的模型,它所需的高度是用来进行更多的存储的计算。