Building high-quality parts is still a key challenge for Selective Laser Sintering machines today due to a lack of sufficient process control. In order to improve process control, a Predictive Iterative Learning Control (PILC) controller is introduced that minimizes the deviation of the post-sintering temperature profile of a newly scanned part from a desired temperature. The controller achieves this by finding a near-optimal laser power profile and applying it to the plant in a feedforward manner. The PILC controller leverages machine learning models that capture the process’ temperature dynamics based on simulated data while still guaranteeing low computational cost. The controller’s performance is evaluated in regards to the control obje...
Heat input regulation is crucial for deposition quality in laser metal deposition (LMD) processes. T...
Metal Additive Manufacturing has earned significant industrial and research inclination in the recen...
Machine learning algorithms make predictions by fitting highly parameterized nonlinear functions to ...
Building high-quality parts is still a key challenge for Selective Laser Sintering machines today du...
Building high quality parts is still a key challenge for Selective Laser Sintering machines today d...
Selective laser melting is a promising additive manufacturing technology enabling the fabrication of...
Selective Laser Sintering makes up a significant portion of the polymer additive manufacturing marke...
Selective Laser Sintering (SLS) is a popular industrial additive manufacturing technique for creati...
This thesis investigates a method for designing, implementing, and testing a Position Based Laser Po...
A control scheme for laser sintering has been developed which maintains sintering powder at constan...
For the polymer laser sintering process, achieving optimum mechanical properties requires that ever...
Selective laser sintering (SLS) of Nylon is a significant portion of the Additive Manufacturing (AM...
Selective laser sintering (SLS) is an additive manufacturing technique that involves using a laser t...
Error avoidance in high-precision manufacturing processes becomes more important for numerous state-...
Since its inception in 1986 Selective Laser Sintering (SLS) has been a predominant force within Addi...
Heat input regulation is crucial for deposition quality in laser metal deposition (LMD) processes. T...
Metal Additive Manufacturing has earned significant industrial and research inclination in the recen...
Machine learning algorithms make predictions by fitting highly parameterized nonlinear functions to ...
Building high-quality parts is still a key challenge for Selective Laser Sintering machines today du...
Building high quality parts is still a key challenge for Selective Laser Sintering machines today d...
Selective laser melting is a promising additive manufacturing technology enabling the fabrication of...
Selective Laser Sintering makes up a significant portion of the polymer additive manufacturing marke...
Selective Laser Sintering (SLS) is a popular industrial additive manufacturing technique for creati...
This thesis investigates a method for designing, implementing, and testing a Position Based Laser Po...
A control scheme for laser sintering has been developed which maintains sintering powder at constan...
For the polymer laser sintering process, achieving optimum mechanical properties requires that ever...
Selective laser sintering (SLS) of Nylon is a significant portion of the Additive Manufacturing (AM...
Selective laser sintering (SLS) is an additive manufacturing technique that involves using a laser t...
Error avoidance in high-precision manufacturing processes becomes more important for numerous state-...
Since its inception in 1986 Selective Laser Sintering (SLS) has been a predominant force within Addi...
Heat input regulation is crucial for deposition quality in laser metal deposition (LMD) processes. T...
Metal Additive Manufacturing has earned significant industrial and research inclination in the recen...
Machine learning algorithms make predictions by fitting highly parameterized nonlinear functions to ...