A Velocity-Adaptive MPC-Based Path Tracking Method for Heavy-Duty Forklift AGVs
Yajun Wang,
Kezheng Sun,
Wei Zhang
et al.
Abstract:In warehouses with vast quantities of heavy goods, heavy-duty forklift Automated Guided Vehicles (AGVs) play a key role in facilitating efficient warehouse automation. Due to their large load capacity and high inertia, heavy-duty forklift AGVs struggle to automatically navigate optimized routes. Additionally, rapid acceleration and deceleration can pose safety hazards. This paper proposes a velocity-adaptive model predictive control (MPC)-based path tracking method for heavy-duty forklift AGVs. The movement of… Show more
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