A new primary torque control concept for hydrostatics mobile machines was introduced in 2018 [1]. The mentioned concept controls the pressure in a closed circuit by changing the angle of the hydraulic pump to achieve the desired pressure based on a feedback system. Thanks to this concept, a series of advantages are expected [2]. However, while working in a Y cycle, the primary torque controlled wheel loader has worse performance in efficiency compared to secondary controlled earthmover due to lack of recuperation ability. Alternatively, we use deep learning algorithms to improve machines’ regeneration performance. In this paper, we firstly make a potential analysis to show the benefit by utilizing the regeneration process, followed by propo...
Significant research efforts are invested in the quest for solutions that will increase the fuel eco...
The hydro power industry stands for new challenges due to a more fluctuating production fromwind and...
A novel intelligent neural network control scheme which integrates the merits of fuzzy inference, ne...
A new primary torque control concept for hydrostatics mobile machines was introduced in 2018 [1]. Th...
The CRDNN is a combined neural network that can increase the holistic efficiency of torque based mob...
Optimal operation of hydropower reservoir systems is a classical optimization problem of high dimens...
Hydraulic hybrids are a proven and effective alternative to electric hybrids for increasing the fuel...
This paper describes an implementation of a deep learning-based predictive maintenance (PdM) system ...
The combination of hydrostatics and mechanical gearboxes cannot only improve system efficiency but a...
There is a remarkable improvement in the engine design and its sensory control over the last three-...
Hydraulic systems represent a crucial part of the drivetrain of mobile machines. The most important ...
The water-energy-carbon nexus elucidates the potential for energy recovery and more sustainable solu...
Mobile machines using a hydrostatic transmission is highly efficient under lower working-speed condi...
Pump failure is a general concerned problem in the hydraulic field. Once happening, it will cause a ...
The present paper describes an innovative electro-hydraulic system developed for automated side load...
Significant research efforts are invested in the quest for solutions that will increase the fuel eco...
The hydro power industry stands for new challenges due to a more fluctuating production fromwind and...
A novel intelligent neural network control scheme which integrates the merits of fuzzy inference, ne...
A new primary torque control concept for hydrostatics mobile machines was introduced in 2018 [1]. Th...
The CRDNN is a combined neural network that can increase the holistic efficiency of torque based mob...
Optimal operation of hydropower reservoir systems is a classical optimization problem of high dimens...
Hydraulic hybrids are a proven and effective alternative to electric hybrids for increasing the fuel...
This paper describes an implementation of a deep learning-based predictive maintenance (PdM) system ...
The combination of hydrostatics and mechanical gearboxes cannot only improve system efficiency but a...
There is a remarkable improvement in the engine design and its sensory control over the last three-...
Hydraulic systems represent a crucial part of the drivetrain of mobile machines. The most important ...
The water-energy-carbon nexus elucidates the potential for energy recovery and more sustainable solu...
Mobile machines using a hydrostatic transmission is highly efficient under lower working-speed condi...
Pump failure is a general concerned problem in the hydraulic field. Once happening, it will cause a ...
The present paper describes an innovative electro-hydraulic system developed for automated side load...
Significant research efforts are invested in the quest for solutions that will increase the fuel eco...
The hydro power industry stands for new challenges due to a more fluctuating production fromwind and...
A novel intelligent neural network control scheme which integrates the merits of fuzzy inference, ne...