Maintenance planning is important in the automotive industry as it allows fleet owners or regular customers to avoid unexpected failures of the components. One cause of unplanned stops of heavy-duty trucks is failure in the lead-acid starter battery. High availability of the vehicles can be achieved by changing the battery frequently, but such an approach is expensive both due to the frequent visits to a workshop and also due to the component cost. Here, a data-driven method based on random survival forest (RSF) is proposed for predicting the reliability of the batteries. The dataset available for the study, covering more than 50 000 trucks, has two important properties. First, it does not contain measurements related directly to the batter...
Lithium-ion batteries (LIBs) are considered the optimum solution for electric automobiles today. Bat...
Remaining useful life (RUL) prediction of lithium-ion batteries plays an important role in intellige...
The market share of electric vehicles (EVs) has grown exponentially in recent years to reduce air po...
Maintenance planning is important in the automotive industry as it allows fleet owners or regular cu...
Problems with starter batteries in heavy-duty trucks can cause costly unplanned stops along the road...
Prognostics and health management is a useful tool for more flexible maintenance planning and increa...
Predictive maintenance aims to predict failures in components of a system, a heavy-duty vehicle in t...
The amount of goods produced and transported around the world each year increases and heavy-duty tru...
| openaire: EC/H2020/856602/EU//FINEST TWINSIt is of extreme importance to monitor and manage the ba...
Since emission issues have sounded the alarm bell, energy security and environmental protection issu...
With the growing EV market, predictive maintenance of batteries is one of the key challenges faced b...
This paper aims to study the use of various data-driven techniques for estimating the remaining usef...
Online prognostics of the battery capacity is a major chal-lenge as ageing process is a complex phen...
Machine-learning based methods have been widely used for battery health state monitoring. However, t...
A key aspect for the forklifts is the state-of-health (SoH) assessment to ensure the safety and the ...
Lithium-ion batteries (LIBs) are considered the optimum solution for electric automobiles today. Bat...
Remaining useful life (RUL) prediction of lithium-ion batteries plays an important role in intellige...
The market share of electric vehicles (EVs) has grown exponentially in recent years to reduce air po...
Maintenance planning is important in the automotive industry as it allows fleet owners or regular cu...
Problems with starter batteries in heavy-duty trucks can cause costly unplanned stops along the road...
Prognostics and health management is a useful tool for more flexible maintenance planning and increa...
Predictive maintenance aims to predict failures in components of a system, a heavy-duty vehicle in t...
The amount of goods produced and transported around the world each year increases and heavy-duty tru...
| openaire: EC/H2020/856602/EU//FINEST TWINSIt is of extreme importance to monitor and manage the ba...
Since emission issues have sounded the alarm bell, energy security and environmental protection issu...
With the growing EV market, predictive maintenance of batteries is one of the key challenges faced b...
This paper aims to study the use of various data-driven techniques for estimating the remaining usef...
Online prognostics of the battery capacity is a major chal-lenge as ageing process is a complex phen...
Machine-learning based methods have been widely used for battery health state monitoring. However, t...
A key aspect for the forklifts is the state-of-health (SoH) assessment to ensure the safety and the ...
Lithium-ion batteries (LIBs) are considered the optimum solution for electric automobiles today. Bat...
Remaining useful life (RUL) prediction of lithium-ion batteries plays an important role in intellige...
The market share of electric vehicles (EVs) has grown exponentially in recent years to reduce air po...