• No se han encontrado resultados

Adaptive control optimization in micro milling of hardened steels evaluation of optimization approaches

N/A
N/A
Protected

Academic year: 2020

Share "Adaptive control optimization in micro milling of hardened steels evaluation of optimization approaches"

Copied!
48
0
0

Texto completo

Loading

Figure

Table 2. Kistler 9256C Mini-dynamometer specifications.
Figure 2. Stereoscopic microscope photography of tool wear in micro end mills.
Figure 5. Examples of geometric errors generated on the workpiece by a worn tool.
Figure  7  shows  the  elements  that  integrate  the  estimation  module  and  how  they are interconnected
+7

Referencias

Documento similar

A new method was developed to position the tool in a micromachine system based on a camera-LCD screen positioning system that also provided information on the angular deviations of

The forth chapter, in order to increase the safe operation of the DFIG system a novel strategy is proposed for current sensor fault diagnosis based just on the measured current,

The coupling matrix is defined in order to best accommodate the acoustic resonators models, based on NRNs, and a smart optimization of its elements based on the

As a target reliability model we have considered the one presented in [12], that is a model that expresses the reliability on demand of a component-based system as a func- tion of:

For this evaluation process, a preliminary vertical scaling system for this Monitoring platform is proposed, based on the results obtained in the previous tests as training data,

In our PIORT (Probabilistic Integrated Object Recognition and Tracking) framework, the static recognition module is based on the use of a classifier that is trained from examples

For doing it, we use a new version of the TANGOW (Task-based Adaptive learNer Guidance On the Web) system that allows us to include and adapt collaborative activities in

The whole system architecture is depicted in Fig. It consists of three dif- ferent modules: i) The Speech Recognition module converts the input acoustic signal into the most