摘要:Summary This paper aims to develop a method that optimize the multi-performance characteristics (MPCs), i.e. micro-hardness (μ-H) and surface roughness (SR) for the powder mixed electrical discharge machining (PMEDM) of Tungsten Carbide (WC-Co) alloy. Initially, authors successfully achieved the optimal parameter selection for PM-EDM of WC alloy by using grey relational analysis (Sharma and Singh, 2014a). There is a still chance of presence of uncertainty/fuzziness in GRA results as it has “higher-the-better” and “lower-the-better” characteristics. Therefore, authors established the grey-fuzzy and grey-ANFIS approach to handle that uncertainty and discreteness present in the data, this study also shows the comparison between these methods. Theoretical prediction of grey-fuzzy approach shows that the proposed approaches can prove useful for optimizing MPCs. It is observed that experiment no. 24 with pulse-on time, 100μs (A3); pulse-off, 50μs (B2); current, 9Å (C3) and powder, C (D1) factor combination provides best MPC'S amongst 27 experiments. This study shows that the use of graphite powder is found to be more suitable for improvement in surface characteristics of WC-Co. Results shows that pulse-on time is the dominating factor comparative to others factors which affect the study.
关键词:Electrical discharge machining; Surface roughness; Micro-hardness; Fuzzy and ANFIS;