Investigation on Wire Electro Discharge Machining Characteristics of TiNiCu Shape Memory Alloys
Date
2020
Authors
Roy, Abhinaba.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Shape memory alloys are well known across academia and industries due to their unique
functional capabilities, such as shape memory effect and superelasticity besides other useful
properties. They are also known for their toughness, resistance to corrosion, improved fatigue
life and damping capabilities. Shape memory effect is exhibited by these group of alloys due
to reverse martensitic phase transformation which transforms de-twinned martensites back to
twinned martensites. This phase transformation of shape memory alloys occurs without any
change in state of the material, which contextually known as diffusionless transformation.
Superelasticity, on the other hand is exhibited by these alloys, when the alloy is handled at an
operating temperature higher than its austenitic temperature. Ni rich NiTi shape memory
alloy for example can be processed to be superelastic at room temperature.
These incredible qualities qualify shape memory alloys as potential materials for smart
applications such as sensors and actuators. A vast majority of these alloys exhibit shape
memory effect due to thermal load and some of them are also influenced by a magnetic field.
Thermally induced shape memory alloys have formed wide applicability due to ease of use
and economic factor. Among these alloys, TiNi based shape memory alloys are most widely
researched and put into applications compared to Cu-based or Fe-based alloys. Phase
transformation temperature of TiNi based shape memory alloys lie within a nominal
operating temperature range (60⁰C-100⁰C) which makes them more suitable for sensing and
actuating applications. However, with addition of a ternary element, phase transformation
temperature of these alloys can be tailored to specific needs. Addition of Cu as ternary
element in TiNi binary alloy system was found to reduce its phase transformation
temperature and narrow transformation hysteresis. Cu addition also facilitates thermal
conductivity making it more sensitive to change in thermal flux. Therefore, TiNiCu ternary
shape memory alloys could be used for much sensitive applications.
Major challenge these alloys impose is poor machinability with conventional machining
techniques. High tool wear, poor machined surface quality and additional post-machining
processes compromise finish quality, accuracy of the end product and increase the cost
involved. This is where non-conventional machining techniques proved as an added
advantage to process these functional alloys and soon became a more popular choice over
conventional machining techniques. Non-conventional machining process like laser beammachining (LBM), water jet machining (WJM), electrochemical machining (ECM) and
electrodischarge machining (EDM) result to better machining characteristics compared to
conventional machining techniques. due to non-contact nature of the tool-workpiece
interface. However, thick recast layer, oxidation, burr formation are some of machining
defects that non-conventional machining techniques exhibit. Wire electrodischarge
machining (WEDM) is a variant of traditional electrodischarge machine (EDM) where
machining is carried out using an wire electrode. Sparking between wire electrode and
workpiece results in removal of workpiece material through local melting. Advantage of WEDM over EDM is that through CNC any desired profile can be cut imposing minimum
damage to workpiece material.
Sensors and actuators incorporating shape memory effect are generally micro shaped
components which undergoes microscopic shape change. Major aim of this study is to
investigate WEDM characteristics of various homologous TiNiCu shape memory alloys and
to optimize machining responses so as to produce components without compromising
accuracy and quality. Six different TiNiCu shape memory alloys were vacuum melted and
characterized in terms of microstructure, phases present, phase transformation temperatures
and microhardness. Optical microscope with image analyzer, X-ray diffractrometer,
differential scanning calorimeter and microhardness tester were used to perform
aforementioned characterization. Further, to determine the quality of machining, the
following output responses namely material removal rate (MRR), surface roughness (SR),
kerf width (KW), recast layer thickness (RLT), machined surface microhardness (MH) and
machined surface morphology were studied and reported. Ti50Ni25Cu25 exhibited least
thermal hysteresis (~6⁰C) which indicates its suitability as ideal material for sensor and
actuator applications. Due to varying thermal conductivity of vacuum melted homologous
TiNiCu shape memory alloys, variation in WEDM responses were observed. Thereafter,
prediction of WEDM responses was carried out using Artificial Neural Network (ANN) and
optimization of WEDM responses was performed using Genetic Algorithm (GA). After a
thorough investigation, WEDM process parameters to machine homologous TiNiCu shape
memory alloys were reported and discussed in detail.
Description
Keywords
Department of Mechanical Engineering, Wire electro discharge machining, Shape memory alloys, Material removal rate, Surface roughness, Kerf width, Recast layer thickness, Microhardness, Machined surface morphology, Artificial Neural Network, Genetic Algorithm