Abstract

Wire electrical discharge machining (WEDM), widely used to fabricate micro and precision parts in manufacturing industry, is a nontraditional machining method using discharge energy which is transformed into thermal energy to efficiently remove materials. A great amount of research has been conducted based on pulse characteristics. However, the spark image-based approach has little research reported. This paper proposes a discharge spark image-based approach. A model is introduced to predict the discharge status using spark image features through a synchronous high-speed image and waveform acquisition system. First, the relationship between the spark image features (e.g., area, energy, energy density, distribution, etc.) and discharge status is explored by a set of experiments). Traditional methods have claimed that pulse waveform of “short” status is related to the status of non-machining while through our research, it is concluded that this is not always true by conducting experiments based on the spark images. Second, a deep learning model based on Convolution neural network (CNN) and Gated recurrent unit (GRU) is proposed to predict the discharge status. A time series of spark image features extracted by CNN form a 3D feature space is used to predict the discharge status through GRU. Moreover, a quantitative labeling method of machining state is proposed to improve the stability of the model. Due the effective features and the quantitative labeling method, the proposed approach achieves better predict result comparing with the single GRU model.

Highlights

  • Wire electrical discharge machining (WEDM) is a non-conventional machining method used to remove material through the high temperature produced by a series of repetitive electrical discharge of small duration and huge current density between the wire tool and work piece [1,2,3,4]

  • Considering the essential phenomena of spark during the process of WEDM and the advantages of new methods of image processing and deep learning, this paper proposes a new spark image identification method based on convolution neural network (CNN) and Gated recurrent unit (GRU) to predict the discharge status

  • The relationship between spark images and discharge status is studied by image feature extraction through traditional algorithms

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Summary

Introduction

Wire electrical discharge machining (WEDM) is a non-conventional machining method used to remove material through the high temperature produced by a series of repetitive electrical discharge of small duration and huge current density between the wire tool and work piece [1,2,3,4]. In the investigation of MRR and SR in WEDM process for cementation alloy steel, Shakeri et al [26] formulated comparison of experimental tests with regression and ANN models in order to determine the settings of pulse current, frequency of pulse, wire speed, and servo speed for estimation of MRR and SR Based on their results, BPNN yielded better prediction. Considering the essential phenomena of spark during the process of WEDM and the advantages of new methods of image processing and deep learning, this paper proposes a new spark image identification method based on convolution neural network (CNN) and GRU to predict the discharge status.

Spark Feature
HU Moment
Dynamic Time Warping
Sequence to Sequence Model
Software trigger timing:
Waveform Data
Image Data
Experiments and Analytics
Analysis of Statistical of Experimental Data
Conclusions
Full Text
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