Abstract

The surface roughness of the ground parts is an essential factor in the assessment of the grinding process, and a crucial criterion in choosing the dressing and grinding tools and parameters. Additionally, the surface roughness directly influences the functionality of the workpiece. The application of artificial intelligence in the prediction of complex results of machining processes, such as surface roughness and cutting forces has increasingly become popular. This paper deals with the design of the appropriate artificial neural network for the prediction of the ground surface roughness and grinding forces, through an individual integrated acoustic emission (AE) sensor in the machine tool. Two models were trained and tested. Once using only the grinding parameters, and another with both acoustic emission signals and grinding parameters as input data. The recorded AE-signal was pre-processed, amplified and denoised. The feedforward neural network was chosen for the modeling with Bayesian backpropagation, and the model was tested by various experiments with different grinding and neural network parameters. It was found that the predictions presented by the achieved network parameters model agreed well with the experimental results with a superb accuracy of 99 percent. The results also showed that the AE signals act as an additional input parameter in addition to the grinding parameters, and could significantly increase the efficiency of the neural network in predicting the grinding forces and the surface roughness.

Highlights

  • The importance of the acoustic emission (AE) sensor has been shown for the monitoring, controlling, and predicting of the machining process [1]

  • Artificial neural networks (ANNs) are computing systems that are stimulated by biological neural networks (NNs)

  • In the ANN modeling, 80 percent of the data were chosen for the training, 10 percent for validation, and 10 percent for testing of the network

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Summary

Introduction

The importance of the acoustic emission (AE) sensor has been shown for the monitoring, controlling, and predicting of the machining process [1]. They developed and tested a neural network that was able to predict the drill flank wear in order to prevent anomalies occurring on the machined surface as and a neural network that can predict surface roughness They showed that it is possible to model and monitor a complex non-linear relationship between process performance parameters and process variables in machining. Their modeling had a good generalization ability, and appears to be a useful tool in the cutting tool wear condition monitoring when drilling. The effect of the training rate on the prediction of surface roughness is investigated

Experimental Procedure
Results and Discussion
Surface Roughness
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