基于RSM-ANN和灰色关联分析的DSS-2205加工特性研究

4区 工程技术 Q1 Mathematics Mathematical Problems in Engineering Pub Date : 2023-12-05 DOI:10.1155/2023/6124793
Endalkachew Mosisa Gutema, Mahesh Gopal
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引用次数: 0

摘要

DSS由于强度高,具有加工性低的特点,加工复杂,在选择加工参数时需要慎重注意。本文讨论的主要准则是关于作为工作材料的dss2205的车削优化参数和减少加工时间。输入参数为切削速度、进给量、切削深度和刀具刀尖半径。实验设计方法采用design - expert V12软件进行实验设计。建立二阶数学模型,通过方差分析分析性能特征,识别影响输出参数的关键变量。利用MATLAB软件,采用人工神经网络(ANN)反向传播算法建立数学模型并对输出进行优化。建立模型,并利用MATLAB软件的神经网络反向传播方法对结果进行优化,寻找最优可能解。方差分析和r平方值分析表明,切削速度是最关键的影响因素。对于低加工时间,切削速度应在100 ~ 140 m/min之间,刀尖半径应在2.8 mm。通过灰色关联分析(GRA)进行“越低越好”的确认测试,验证了最优参数设置。当切削速度为140 m/min,进给速度为0.5 mm/rev,切削深度为0.5 mm,刀尖半径为2.4 mm时,GRA显示较低的加工时间。预测值与实验值接近,结果表明了加工变量最高GRA等级的最优水平。
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Machining Characteristics Investigations of DSS-2205 Using RSM–ANN and Gray Relational Analysis
DSS has low machinability characteristics due to its high strength, machining is complicated, and careful attention is required when selecting machining parameters. The main criteria discussed in this paper concern the turning optimization parameters and machining time reduction of DSS 2205 as the work material. The input parameters are cutting velocity, feeds, cutting depth, and tooltip nose radius of the cutting tool. The design of experiments methodology is employed to design the experiments using Design-Expert V12 software. The second-order mathematical model was developed, and analysis of variance was performed to analyze the performance characteristics to recognize the critical variables influencing the output parameter. An artificial neural network (ANN) backpropagation algorithm using MATLAB software was used to develop the mathematical model and optimize the output. The model was developed, and the results were optimized using MATLAB software’s ANN back propagation method to find the best possible solutions. The generated models were significant based on the analysis of variance and the R-squared value, and these results indicate that the cutting velocity is the most critical factor. For a low machining time, the cutting velocity should be between 100 and 140 m/min, and the tooltip nose radius should be 2.8 mm. The optimal parameter settings are validated by performing a lower is better confirmation test using gray relational analysis (GRA). The GRA exposed the lower machining time at a cutting velocity of 140 m/min, rate of feed of 0.5 mm/rev, cutting depth of 0.5 mm, and tooltip nose radius of 2.4 mm. The predicted values were close to the experimental values, and the result indicates the optimal level of the highest GRA grade of the machining variable.
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来源期刊
Mathematical Problems in Engineering
Mathematical Problems in Engineering 工程技术-工程:综合
CiteScore
4.00
自引率
0.00%
发文量
2853
审稿时长
4.2 months
期刊介绍: Mathematical Problems in Engineering is a broad-based journal which publishes articles of interest in all engineering disciplines. Mathematical Problems in Engineering publishes results of rigorous engineering research carried out using mathematical tools. Contributions containing formulations or results related to applications are also encouraged. The primary aim of Mathematical Problems in Engineering is rapid publication and dissemination of important mathematical work which has relevance to engineering. All areas of engineering are within the scope of the journal. In particular, aerospace engineering, bioengineering, chemical engineering, computer engineering, electrical engineering, industrial engineering and manufacturing systems, and mechanical engineering are of interest. Mathematical work of interest includes, but is not limited to, ordinary and partial differential equations, stochastic processes, calculus of variations, and nonlinear analysis.
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