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A high-resolution AUV navigation framework with integrated communication and tracking for under-ice deployments
Authors:Supun Randeni  Toby Schneider  EeShan C Bhatt  Oscar A Víquez  Henrik Schmidt
Affiliation:1. Department of Mechanical Engineering, Massachusetts Institute of Technology, Massachusetts, Cambridge, USA;2. GobySoft LLC, Woods Hole, Massachusetts, USA;3. Department of Mechanical Engineering, Massachusetts Institute of Technology, Massachusetts, Cambridge, USA

Applied Ocean Physics & Engineering, Woods Hole Oceanographic Institution, Massachusetts, Woods Hole, USA

Abstract:We developed an environmentally adaptive under-ice navigation framework that was deployed in the Arctic Beaufort Sea during the United States Navy Ice Exercise in March 2020 (ICEX20). This navigation framework contained two subsystems developed from the ground up: (1) an on-board hydrodynamic model-aided navigation (HydroMAN) engine, and (2) an environmentally and acoustically adaptive integrated communication and navigation network (ICNN) that provided acoustic navigation aiding to the former. The HydroMAN synthesized measurements from an inertial navigation system (INS), ice-tracking Doppler velocity log (DVL), ICNN and pressure sensor into its self-calibrating vehicle flight dynamic model to compute the navigation solution. The ICNN system, which consisted of four ice buoys outfitted with acoustic modems, trilaterated the vehicle position using the one-way-travel-times (OWTT) of acoustic datagrams transmitted by the autonomous underwater vehicle (AUV) and received by the ice buoy network. The ICNN digested salinity and temperature information to provide model-assisted real-time OWTT range conversion to deliver accurate acoustic navigation updates to the HydroMAN. To decouple the contributions from the HydroMAN and ICNN subsystems towards a stable navigation solution, this article evaluates them separately: (1) HydroMAN was compared against DVL bottom-track aided INS during pre-ICEX20 engineering trials where both systems provided similar accuracy; (2) ICNN was evaluated by conducting a static experiment in the Arctic where the ICNN navigation updates were compared against GPS with ICNN error within low tens of meters. The joint HydroMAN-ICNN framework was tested during ICEX20, which provided a nondiverging high-resolution navigation solution—with the majority of error below 15 m—that facilitated a successful AUV recovery through a small ice hole after an 11 km untethered run in the upper and mid-water column.
Keywords:acoustic communication  autonomous underwater vehicles  extended Kalman filter  real-time model-aided navigation  sensor fusion
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