Online adaption of milling parameters for a stable and productive process
Benjamin Bergmann, Svenja Reimer
Abstract
On the way to fully autonomous machine tools it is essential to independently select suitable process parameters and adapt them on-the-fly to the appropriate process conditions in a self-controlled manner. Such systems require complex physical process models and are usually limited to feed and spindle speed adaption during the milling process. This paper introduces a new approach enabling machines during the milling process to learn which parameters lead to a stable process with maximum productivity and to adjust them autonomously. It is shown that this approach enables the machine tool to independently find stable process parameters with maximum productivity.
Topics & Concepts
Process (computing)Machine toolProductivityStable processControl engineeringComputer scienceEngineeringProcess engineeringMechanical engineeringMathematicsStochastic processOperating systemStatisticsMacroeconomicsEconomicsAdvanced machining processes and optimizationAdvanced Surface Polishing TechniquesInjection Molding Process and Properties