基于混合深度神经网络的纳米颗粒添加电解质淬硬模型钢ECMM特性研究与预测

IF 0.7 4区 工程技术 Q4 CHEMISTRY, APPLIED
Vijayakumar Kanniyappan, Sekar Tamilperuvalathan
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引用次数: 0

摘要

摘要在我们的工作中,应该通过使用纳米颗粒和添加电解质的不同组合来提高ECMM的工艺效率。本工作的主要目的是改进和预测模具硬化钢的ECMM加工特性,即材料去除率(MRR)、刀具磨损率(TWR)和表面粗糙度(Ra)。采用基于Box-Behnken设计的响应曲面法对加工条件进行了优化。基于加工结果,使用Deer Hunting Optimization(DHO)对更好的纳米电解质进行了优化,并使用基于混合深度神经网络(DNN)的DHO对其性能进行了预测。基于混合DNN-DHO的MRR预测结果为0.361 mg/min,TWR为0.272 mg/min,Ra为2.511μm。验证结果表明,我们提出的DNN-DHO模型表现良好,在DNN-DHO的训练和验证中都获得了0.99以上的回归,其中均方根误差在0.018和0.024之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation and Prediction of ECMM characteristics of Hardened Die Steel with Nanoparticle Added Electrolytes Using Hybrid Deep Neural Network
Abstract In our work, the process efficiency of the ECMM should be improved by using different combinations of nano-particles and added electrolytes. The superior aim of this work is to improve and predict the ECMM machining characteristics of die hardened steel, namely material removal rate (MRR), Tool wear rate (TWR) and Surface Roughness (Ra). The machining conditions are optimized using Response Surface Methodology (RSM) based on Box Behnken Design. The better Nano electrolyte is optimized using Deer Hunting Optimization (DHO) based on the machined outcomes, and the performances are predicted using a hybrid Deep Neural Network (DNN) based DHO. The hybrid DNN-DHO based predicted outcome of MRR is 0.361 mg/min, TWR is 0.272 mg/min and Ra is 2.511 μm. The validation results show that our proposed DNN-DHO model performed well and obtained above 0.99 regression for both training and validation of DNN-DHO, where the root mean square error ranges between 0.018 and 0.024.
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来源期刊
Polish Journal of Chemical Technology
Polish Journal of Chemical Technology CHEMISTRY, APPLIED-ENGINEERING, CHEMICAL
CiteScore
1.70
自引率
10.00%
发文量
22
审稿时长
4.5 months
期刊介绍: Polish Journal of Chemical Technology is a peer-reviewed, international journal devoted to fundamental and applied chemistry, as well as chemical engineering and biotechnology research. It has a very broad scope but favors interdisciplinary research that bring chemical technology together with other disciplines. All authors receive very fast and comprehensive peer-review. Additionally, every published article is promoted to researchers working in the same field.
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