Publication | Open Access
Investigating the Impact of Energy Source Level on the Self-Guided Vehicle System Performances, in the Industry 4.0 Context
15
Citations
39
References
2020
Year
Automotive EngineeringEngineeringEnergy EfficiencyGlobal PlanningField RoboticsAutonomous Vehicle NavigationAutonomous SystemsBattery LevelTrajectory PlanningCommercial Vehicle OperationAutonomous VehiclesSpace VehiclesGreen VehicleSystems EngineeringIndustry 4.0Energy Source LevelAutomated Guided VehicleEnergy-efficient TransportationVehicle TechnologyAutonomous DrivingAutonomous NavigationEnergy Efficient DriveEnergy ManagementAerospace EngineeringIndustrial VehiclesRobotics
Automated industrial vehicles are taking an imposing place by transforming the industrial operations, and contributing to an efficient in-house transportation of goods. They are expected to bring a variety of benefits towards the Industry 4.0 transition. However, Self-Guided Vehicles (SGVs) are battery-powered, unmanned autonomous vehicles. While the operating durability depends on self-path design, planning energy-efficient paths become crucial. Thus, this paper has no concrete contribution but highlights the lack of energy consideration of SGV-system design in literature by presenting a review of energy-constrained global path planning. Then, an experimental investigation explores the long-term effect of battery level on navigation performance of a single vehicle. This experiment was conducted for several hours, a deviation between the global trajectory and the ground-true path executed by the SGV was observed as the battery depleted. The results show that the mean square error (MSE) increases significantly as the battery’s state-of-charge decreases below a certain value.
| Year | Citations | |
|---|---|---|
Page 1
Page 1