Physics-Informed LSTM-Based Delay Compensation Framework for Teleoperated UGVs
Ahmad Abubakar, Yahya Zweiri, AbdelGafoor Haddad, Mubarak Yakubu,, Ruqayya Alhammadi, and Lakmal Seneviratne

TL;DR
This paper introduces a physics-informed LSTM predictor framework to effectively compensate for network delays in teleoperated UGVs on soft terrains, enhancing control fidelity and command-tracking performance.
Contribution
It presents a novel PiLSTM-based delay compensation framework that outperforms conventional predictors by integrating physical constraints with LSTM for better generalization.
Findings
26.1% improvement in delay compensation over traditional predictors
Effective in restoring closed-loop control fidelity
Enhanced command-tracking performance in experiments
Abstract
Bilateral teleoperation of low-speed Unmanned Ground Vehicles (UGVs) on soft terrains is crucial for applications like lunar exploration, offering effective control of terrain-induced longitudinal slippage. However, latency arising from transmission delays over a network presents a challenge in maintaining high-fidelity closed-loop integration, potentially hindering UGV controls and leading to poor command-tracking performance. To address this challenge, this paper proposes a novel predictor framework that employs a Physics-informed Long Short-Term Memory (PiLSTM) network for designing bilateral teleoperator controls that effectively compensate for large delays. Contrasting with conventional model-free predictor frameworks, which are limited by their linear nature in capturing nonlinear and temporal dynamic behaviors, our approach integrates the LSTM structure with physical constraints…
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Taxonomy
TopicsAdvanced Wireless Network Optimization · Advanced MIMO Systems Optimization · Telecommunications and Broadcasting Technologies
MethodsTanh Activation · Sigmoid Activation · Long Short-Term Memory
