Abstract

The turning process has various factors, which affecting machinability and should be investigated. These are surface roughness, tool life, power consumption, cutting temperature, machining force components, tool wear, and chip thickness ratio. These factors made the process nonlinear and complicated. This work aims to build neural network models to correlate the cutting parameters, namely cutting speed, depth of cut and feed rate, to the machining force and chip thickness ratio. The turning process was performed on high strength aluminum alloy 7075-T6. Three radial basis neural networks are constructed for cutting force, passive force, and feed force. In addition, a radial basis network is constructed to model the chip thickness ratio. The inputs to all networks are cutting speed, depth of cut, and feed rate. All networks performances (outputs) for all machining force components (cutting force, passive force and feed force) showed perfect match with the experimental data and the calculated correlation coefficients were equal to one. The built network for the chip thickness ratio is giving correlation coefficient equal one too, when its output compared with the experimental results. These networks (models) are used to optimize the cutting parameters that produce the lowest machining force and chip thickness ratio. The models showed that the optimum machining force was (240.46 N) which can be produced when the cutting speed (683 m/min), depth of cut (3.18 mm) and feed rate (0.27 mm/rev). The proposed network for the chip thickness ratio showed that the minimum chip thickness is (1.21), which is at cutting speed (683 m/min), depth of cut (3.18 mm) and feed rate (0.17 mm/rev).

Highlights

  • The turning process is among the most significant cutting operation

  • This paper aims to build neural network model to correlate the cutting variables, cutting speed ( ), depth of cut ( ), and feed rate ( ), to the machining force ( ) and the chip thickness ratio during machining aluminum alloy 7075-T6

  • This study provided an experimental investigation, via radial basis function RBF network modeling, to estimate the affect of cutting parameters. on machining force (Fu) and chip thickness ratio (CTR) during turning of high strength aluminum alloy 7075-T6

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Summary

Introduction

The turning process is among the most significant cutting operation. It would once generate a variety of cylindrical products like solid, hollow, profile shafts and threads, etc. A lot of scientists considered the parameter which impacting the process either to generate a good finished product, improve tool life or both. They examined the power usage reduction and the production time [1]. The machining force in turning operation is a three-dimensional vector. The cutting force ) which is in the direction of cutting axis, the passive force in the direction of radial axis and feed force in the direction of feed axis as shown in Mohanned Mohammed H

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