Asosiy kontentga oʻtish
AkademIndex

Mahsulotlar

Ishlab chiquvchilar uchun

AkademBaseEkotizim uchun ochiq API
Maqola

Sarlavhasiz

Mohamed Amine ArfaouiConcordia Institute for Information Systems Engineering (CIISE), Concordia University, Montreal, QC, CanadaMohammad SoltaniSchool of Engineering, Institute for Digital Communications (IDCOM), The University of Edinburgh, Edinburgh, U.KIman TavakkolniaLiFi Research and Development Centre, University of Strathclyde, Glasgow, U.KAli GhrayebTexas A&M University at Qatar, Doha, QatarChadi AssiConcordia Institute for Information Systems Engineering (CIISE), Concordia University, Montreal, QC, CanadaMajid SafariSchool of Engineering, Institute for Digital Communications (IDCOM), The University of Edinburgh, Edinburgh, U.KHarald HaasLiFi Research and Development Centre, University of Strathclyde, Glasgow, U.KJ AndrewsS BuzziW ChoiS HanlyA LozanoA SoongJ ZhangM ShafiM PalattellaM DohlerA GriecoG RizzoJ TorsnerT EngelL LadidA Al-FuqahaM GuizaniM MohammadiM AledhariM AyyashA YassinE KaplanC HegartyH LanC YuY ZhuangY LiN El-SheimyZ SyedJ YangL QiP YangW WuS.-H FangC.-H WangT.-Y HuangC.-H YangY.-S ChenA PouloseO EyobuD HanJ KimF YaoA KellerM AhmadB AhmadR HarrisonA ColomboC EppnerS HferR JonschkowskiR Martn-MartnA SieverlingV WallO BrockB ZhouQ ChenH HaasI TavakkolniaC ChenR BianM ArfaouiM SoltaniA GhrayebM SafariC AssiQualcommA PurwitaZ ZengN HassanA NaeemM PashaT JadoonC YuenS.-H YangH.-S KimY.-H SonS.-K HanH SharifiA KumarF AlamK ArifW ZhangM ChowdhuryM KavehradZ ZhouP DengL YinK QiuF ZhangM LiuA LiuV Lau
ABI

Annotatsiya

Light-fidelity (LiFi) is a fully-networked bidirectional optical wireless communication (OWC) technology that is considered as a promising solution for high-speed indoor connectivity. In this paper, the joint estimation of user 3D position and user equipment (UE) orientation in indoor LiFi systems with unknown emission power is investigated. Existing solutions for this problem assume either ideal LiFi system settings or perfect knowledge of the UE states, rendering them unsuitable for realistic LiFi systems. In addition, these solutions consider the non-line-of-sight (NLOS) links of the LiFi channel gain as a source of deterioration for the estimation performance instead of harnessing these components in improving the position and the orientation estimation performance. This is mainly due to the lack of appropriate estimation techniques that can extract the position and orientation information hidden in these components. In this paper, and against the above limitations, the UE is assumed to be connected with at least one access point (AP), i.e., at least one active LiFi link. Fingerprinting is employed as an estimation technique and the received signal-to-noise ratio (SNR) is used as an estimation metric, where both the line-of-sight (LOS) and NLOS components of the LiFi channel are considered. Motivated by the success of deep learning techniques in solving several complex estimation and prediction problems, we employ two deep artificial neural network (ANN) models, one based on the multilayer perceptron (MLP) and the second on the convolutional neural network (CNN), that can map efficiently the instantaneous received SNR with the user 3D position and the UE orientation. Through numerous examples, we investigate the performance of the proposed schemes in terms of the average estimation error, precision, computational time, and the bit error rate. We also compare this performance to that of the k-nearest neighbours (KNN) scheme, which is widely used in solving wireless localization problems. It is demonstrated that the proposed schemes achieve significant gains and are superior to the KNN scheme.

Hali tarjima qilinmagan

Iqtiboslar va manbalar

2 ta iqtibos0 ta foydalanilgan manba