Recent advancements in Internet of Things (IoTs) have brought about a surge of interest in indoor positioning for the purpose of providing reliable, accurate, and energy-efficient indoor navigation/localization systems. Ultra Wide Band (UWB) technology has been emerged as a potential candidate to satisfy the aforementioned requirements. Although UWB technology can enhance the accuracy of indoor positioning due to the use of a wide-frequency spectrum, there are key challenges ahead for its efficient implementation. On the one hand, achieving high precision in positioning relies on the identification/mitigation Non Line of Sight (NLoS) links, leading to a significant increase in the complexity of the localization framework. On the other hand, UWB beacons have a limited battery life, which is especially problematic in practical circumstances with certain beacons located in strategic positions. To address these challenges, we introduce an efficient node selection framework to enhance the location accuracy without using complex NLoS mitigation methods, while maintaining a balance between the remaining battery life of UWB beacons. Referred to as the Deep Q-Learning Energy-optimized LoS/NLoS (DQLEL) UWB node selection framework, the mobile user is autonomously trained to determine the optimal set of UWB beacons to be localized based on the 2-D Time Difference of Arrival (TDoA) framework. The effectiveness of the proposed DQLEL framework is evaluated in terms of the link condition, the deviation of the remaining battery life of UWB beacons, location error, and cumulative rewards. Based on the simulation results, the proposed DQLEL framework significantly outperformed its counterparts across the aforementioned aspects.
翻译:最近互联网“事物互联网”的进步导致人们对室内定位的兴趣激增,目的是提供可靠、准确和节能的室内导航/本地化系统。超宽频(UWB)技术已成为满足上述要求的潜在候选者。尽管由于使用宽频频谱,UWB技术可以提高室内定位的准确性,但在高效实施方面仍面临重大挑战。一方面,定位的高度精确取决于识别/缓解“视觉非线(NLOS)链接的识别/缓解,导致本地化框架的复杂程度大幅提高。另一方面,UWB信标的电池寿命有限,在实际情况下,与某些位于战略位置的灯塔特别成问题。为了应对这些挑战,我们引入高效的节点选择框架,以提高定位的准确性,而不使用复杂的NLOS减缓方法,同时保持UWB信标的剩余电池寿命之间的平衡。 将UBWB的高级能源优化LOS/NLOS的准确度框架,在UBALLLL值框架(D)下,对UWB的升级值框架进行了大幅升级,在UWB的升级标准值框架上对UBLLLLA值的升级框架进行了测试。