Investigation and optimization of multiple objectives by hybrid evolutionary algorithms for turning of Nimonic 80A under nano MQL environment.

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Bibliographic Details
Title: Investigation and optimization of multiple objectives by hybrid evolutionary algorithms for turning of Nimonic 80A under nano MQL environment.
Authors: Arunkumar, E., Devendiran, S.
Source: Advances in Materials & Processing Technologies; Mar2025, Vol. 11 Issue 1, p488-522, 35p
Subject Terms: METAHEURISTIC algorithms, PARTICLE swarm optimization, ARTIFICIAL neural networks, EVOLUTIONARY algorithms, CUTTING force, RICE oil, MACHINABILITY of metals
Abstract: Nimonic80A is one of the hard-to-cut superalloy materials. However, machining the same remains difficult. The present study's objective is attained by taking surface quality and tool wear as output core attributes of machining by deploying conventional statistical approaches and meta-heuristic optimisation algorithms to find optimal input attributes. Optimal input parameters were found using ANN hybridised with meta-heuristic optimisation algorithms, considering cutting acceleration as one of the response attributes along with cutting force (Fz), flank wear (Vb) and surface roughness (Ra). In this process, nanofluids were formulated by suspensions of graphene oxide into rice bran oil as the minimum quantity lubrication (MQL). Experiments were conducted based on L27 Taguchi experimental trials, and the experimental results revealed that minimum feed rate and cutting velocity reduced the cutting force, surface roughness, and tool flank wear up to 51% during nano-MQL turning conditions compared to dry machining. Thus, an artificial neural network (ANN) was used to generate the model for each machining response, which was further interfaced with multiobjective particle swarm optimisation (MOPSO) and multiobjective mayfly algorithms (MOMA) as a hybrid algorithm for finding optimal parameters. The optimal results were compared, and ANN-MOMA was found to be better. [ABSTRACT FROM AUTHOR]
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Database: Complementary Index
Description
Abstract:Nimonic80A is one of the hard-to-cut superalloy materials. However, machining the same remains difficult. The present study's objective is attained by taking surface quality and tool wear as output core attributes of machining by deploying conventional statistical approaches and meta-heuristic optimisation algorithms to find optimal input attributes. Optimal input parameters were found using ANN hybridised with meta-heuristic optimisation algorithms, considering cutting acceleration as one of the response attributes along with cutting force (F<subscript>z</subscript>), flank wear (V<subscript>b</subscript>) and surface roughness (R<subscript>a</subscript>). In this process, nanofluids were formulated by suspensions of graphene oxide into rice bran oil as the minimum quantity lubrication (MQL). Experiments were conducted based on L27 Taguchi experimental trials, and the experimental results revealed that minimum feed rate and cutting velocity reduced the cutting force, surface roughness, and tool flank wear up to 51% during nano-MQL turning conditions compared to dry machining. Thus, an artificial neural network (ANN) was used to generate the model for each machining response, which was further interfaced with multiobjective particle swarm optimisation (MOPSO) and multiobjective mayfly algorithms (MOMA) as a hybrid algorithm for finding optimal parameters. The optimal results were compared, and ANN-MOMA was found to be better. [ABSTRACT FROM AUTHOR]
ISSN:2374068X
DOI:10.1080/2374068X.2024.2307152