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Research Article

Study and optimisation of WEDM parameters of AISI P20+Ni using RSM and hybrid deep neural network

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Pages 1299-1327 | Accepted 18 Aug 2022, Published online: 14 Sep 2022
 

ABSTRACT

The main task in Wire Electrical Discharge Machining (WEDM) is to select the proper tool material for machining the workpiece to get better surface finishing and high cutting speed. To overcome these challenges, nowadays, coated electrodes are used. The main objective of this research work is to study the impact of certain input parameters such as pulse off-time, pulse on-time, servo voltage, and peak current in WEDM on Material Removal Rate (MRR), Recast Layer Thickness (RLT), and Surface Roughness (SR) output parameters by using zinc-coated brass wire as an electrode and AISI P20+Ni (DIN 1.2738) as the workpiece. One of the hardest materials used to make die for plastic moulds. The study is carried out experimentally and then compared with the design done by response surface methodology (RSM) using ANOVA and hybrid deep neural network (DNN) predicted values, which are optimised based on Manta ray foraging optimisation (MRFO) to obtain more precise outputs. The developed RSM and hybrid DNN+MRFO were designed in Design Expert 12 and MATLAB R2020a platforms and achieved 90% average prediction accuracy in the DNN+MRFO method. The experimentally obtained maximum MRR and minimum RLT and SR are 2.657 mm3/min, 7.9 µm, and 0.351 µm, respectively. The regression results showed that DNN+MRFO outperforms the RSM model. The achieved desirability at confirmatory analysis for RSM and DNN+MRFO are 0.844 and 0.921, respectively.

Abbreviation

AISI=

American Iron and Steel Institute

ANN=

Artificial Neural Network

ANOVA=

Analysis of Variance

BBD=

Box-Behnken Design

DNN=

Deep Neural Network

MRFO=

Manta Ray Foraging Optimisation

MRR=

Material Removal Rate

RLT=

Recast Layer Thickness

RSM=

Response Surface Method

SEM=

Scanning Electron Microscope

SMA=

Shape Memory Alloy

SR=

Surface Roughness

TWR=

Tool Wear Rate

WEDM=

Wire Electrical Discharge Machining

Nomenclature

Cu=

Copper

Zn=

Zinc

Ni=

Nickel

µm=

Micro meter

µs=

Micro second

mm=

Millimetre

A=

Ampere

V=

Volt

R2=

Regression coefficient

Disclosure statement

No potential conflict of interest was reported by the author(s).

Data availability statement

Data sharing is not applicable to this article.

Correction Statement

This article has been corrected with minor changes. These changes do not impact the academic content of the article.

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