4.6 Article

Recast layer removal after electrical discharge machining via Taguchi analysis: A feasibility study

期刊

JOURNAL OF MATERIALS PROCESSING TECHNOLOGY
卷 209, 期 8, 页码 4134-4140

出版社

ELSEVIER SCIENCE SA
DOI: 10.1016/j.jmatprotec.2008.10.012

关键词

Electrical discharge machining; Ni-based superalloy; Taguchi method; Recast layer

资金

  1. National Science Council of the Republic of China [NSC 93-2212-E-252-002]

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This study explores the feasibility of removing the recast layer (RCL) using etching and mechanical grinding for Ni-based superalloy materials by means of electrical discharge machining (EDM). The EDM process is widely used for machining hard metals and performing specific tasks that cannot be achieved using conventional techniques. The sparks produced during the EDM process melt the metal's surface, which then undergo Ultra rapid quenching. A layer forms on the workpiece surface defined as a recast layer after solidification. Molds and dies desire to remove the RCL even though it is hard and has good matrix adherence. This experiment is divided into three stages. The first stage acquires a thick recast layer by using EDM with a larger discharging energy. A thick recast layer is essential for verification of the EDM technique for observing the recast process. Thus, this work applies the Taguchi L-18 analytical method to acquire the thick recast layer. The second stage optimizes the recast layer removal technique. Therefore, the thick recast layer is intentionally made in the first stage. This work determines the second stage setting using Taguchi's recommendation. Thus, the U.) orthogonal array sets up the etching and mechanical grinding parameters and observes the recast layer removal quantity analysis. Finally, an experiment studies the surface characteristics of Ni-based superalloys, such as composition and micro-hardness after removing the recast layer. (c) 2008 Elsevier B.V. All rights reserved.

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