학술논문

KF-Loc: A Kalman Filter and Machine Learning Integrated Localization System Using Consumer-Grade Millimeter-Wave Hardware
Document Type
Periodical
Source
IEEE Consumer Electronics Magazine IEEE Consumer Electron. Mag. Consumer Electronics Magazine, IEEE. 11(4):65-77 Jul, 2022
Subject
Power, Energy and Industry Applications
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Location awareness
Wireless communication
Wireless sensor networks
Warehouses
Robots
Signal to noise ratio
Robot kinematics
Antenna arrays
Kalman filters
Machine learning
Language
ISSN
2162-2248
2162-2256
Abstract
With the ever-increasing demands of e-commerce, the need for smarter warehousing is increasing exponentially. Such warehouses require industry automation beyond Industry 4.0. In this work, we use consumer-grade millimeter-wave (mmWave) equipment to enable fast, and low-cost implementation of our localization system. However, the consumer-grade mmWave routers suffer from coarse-grained channel state information due to cost-effective antenna array design limiting the accuracy of localization systems. To address these challenges, we present a machine learning (ML) and Kalman filter (KF) integrated localization system (KF-Loc). The ML model learns the complex wireless features for predicting the static position of the robot. When in dynamic motion, the static ML estimates suffer from position mispredictions, resulting in loss of accuracy. To overcome the loss in accuracy, we design and integrate a KF that learns the dynamics of the robot motion to provide highly accurate tracking. Our system achieves centimeter-level accuracy for the two aisles with RMSE of 0.35 m and 0.37 m, respectively. Further, compared with ML only localization systems, we achieve a significant reduction in RMSE by 28.5% and 54.3% within the two aisles.