2020
DOI: 10.1108/gs-01-2020-0008
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Parametric optimization of EDD using RSM-Grey-TLBO-based MCDM approach for commercially pure titanium

Abstract: PurposeElectric discharge drilling (EDD) is used to drill quality microholes on any conductive materials. EDD process parameters play a crucial role in the drilling. Depending upon the material characteristics, the cost of drilling also changes. Therefore, a suitable method is required to control the process parameters and drill quality microholes.Design/methodology/approachThe input process parameters in the present work are peak current (Ip), pulse on-time (Ton) and pulse off-time (Toff). The trials were int… Show more

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Cited by 11 publications
(10 citation statements)
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“…Similarly, three optimization goals to be attained by abrasive water jet machining of C360 brass (i.e., minimum surface roughness, maximization of material removal rate and hardness) are represented as a single objective function in [33] and solved using classical TLBO. Two response variables of electrode wear ratio and drilling rate for electric discharge drilling process of titanium in [34] were obtained using the response surface methodology and converted into a single objective function with grey relational analysis before searching for the best combinations of machining parameters (i.e., peak current, pulse-off and pulse-on time) using TLBO. A preference-based multiobjective TLBO (PBMOO-TLBO) was proposed in [35] to attain the sustainable machining of Ti-6Al-4V alloy with wire-cut EDM via the minimization of surface roughness and maximization of material removal rate.…”
Section: ) Multiobjective Optimizationmentioning
confidence: 99%
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“…Similarly, three optimization goals to be attained by abrasive water jet machining of C360 brass (i.e., minimum surface roughness, maximization of material removal rate and hardness) are represented as a single objective function in [33] and solved using classical TLBO. Two response variables of electrode wear ratio and drilling rate for electric discharge drilling process of titanium in [34] were obtained using the response surface methodology and converted into a single objective function with grey relational analysis before searching for the best combinations of machining parameters (i.e., peak current, pulse-off and pulse-on time) using TLBO. A preference-based multiobjective TLBO (PBMOO-TLBO) was proposed in [35] to attain the sustainable machining of Ti-6Al-4V alloy with wire-cut EDM via the minimization of surface roughness and maximization of material removal rate.…”
Section: ) Multiobjective Optimizationmentioning
confidence: 99%
“…Although numerous works related to TLBO were proposed by different researchers since its inception, some common drawbacks and technical challenges can be observed from these studies. First of all, it is noteworthy that the related works of [1][2][3][4][5][31][32][33][34][35] focused on applying the original TLBO to solve different real-world applications, particularly on the machining optimization problems. Despite having relatively good performances in solving these problems, the original TLBO tends to suffer with drastic performance degradation when dealing with more complex optimization problems with explosive numbers of local optima in fitness landscapes.…”
Section: B Challenges Of Existing Workmentioning
confidence: 99%
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“…Several other authors have also focused on different materials as work material for optimization of machining input parameters to acquire optimal out parameters; those that used steel (alloys and grades) are Dave (2019), Patel et al (2018), Upadhyay (2022), Aouici et al (2012), Patil et al (2021, Suresh et al (2002). Some of the authors that employed titanium (alloys and grades) are Sharma et al (2020), Singh et al (2019), Upadhyay et al (2013), Sahu & Andhare (2015), and Zain et al (2010). Inconel was also used by the following authors: Dave (2019), Kumar et al (2020), Gupta et al (2019), Rao & Kalyankar (2011), George et al (2019), and Bhopale et al (2015).…”
Section: Aspects Studiedmentioning
confidence: 99%