Artigo Revisado por pares

Applications of Artificial Intelligence to Grinding Operations via Neural Networks

2003; Taylor & Francis; Volume: 7; Issue: 3 Linguagem: Inglês

10.1081/mst-120025284

ISSN

1532-2483

Autores

T.M.A. Maksoud, M. R. Atia, M M Koura,

Tópico(s)

Advanced Surface Polishing Techniques

Resumo

In recent years, artificial intelligence played an important role in machine tool automation. Artificial neural networks, as one of the artificial intelligence algorithms, has superiority in representing the relation between the inputs and outputs of the multi‐variable system. Hence, it can be applied to sophisticated operations such as grinding operation. The aim of this research is to use artificial neural networks as the brain of grinding machine controller. The target of this controller was to achieve the desired workpiece surface roughness under grinding wheel surface topography variations. The core of the system consists of two multi‐layers feed forward artificial neural networks based on back error propagation learning algorithm. The first one was used for process design to achieve the desired surface roughness. It extracts suitable process variables such as grinding wheel speed and feed rate. The second one monitors the cutting operation using sensors' readings. It extracts the different controlling decisions; these are accept the process, redesign the process or start dressing operation under automatic control. According to these decisions, a PC master control program generates the appropriate control codes and sends them to the machine controllers to take the required actions.

Referência(s)
Altmetric
PlumX