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首页> 外文期刊>Journal of computer sciences >A New Approach of Adaptive Network-Based Fuzzy Inference System Modeling in Laser Processing-A Graphical User Interface (GUI) Based
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A New Approach of Adaptive Network-Based Fuzzy Inference System Modeling in Laser Processing-A Graphical User Interface (GUI) Based

机译:激光加工中基于自适应网络的模糊推理系统建模的新方法-基于图形用户界面(GUI)

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Problem statement: The power of Artificial Intelligent (AI) becomes more authoritative when the system is programmed to cater the need of complex applications. MATLAB 2007B, integrating artificial intelligent system and Graphical User Interface (GUI) has reduced researchers' fear-to-model factor due to unfamiliarity and phobia to produce program codes. Approach: In this study, how GUI was developed on Matlab to model laser machining process using Adaptive Network-based Fuzzy Inference System (ANFIS) was presented. Laser cutting machine is widely known for having the most number of controllable parameters among the advanced machine tools, hence become more difficult to engineer the process into desired responses; surface roughness and kerf width. Mastering both laser processing and ANFIS programming are difficult task for most researchers, especially for the difficult to model processes. Therefore, a new approach was ventured, where GUI was developed using MATLAB integrating ANFIS variables to model the laser processing phenomenon, in which the numeric and graphical output can be easily printed to interpret the results. Results: To investigate ANFIS variables' characteristic and effect, error was analyzed via Root Mean Square Error (RMSE) and Average Percentage Error (APE). The RMSE values were then compared among various trained variables and settings to finalize best ANFIS predictive model. The results found was very promising and proved that, even a person with shallow knowledge in both artificial intelligence and laser processing can actually train the experimental data sets loaded into GUI, test and optimize ANFIS variables to make comparative analysis. Conclusion: The details of modeled work with prediction accuracy according to variable combinations were premeditated on another paper. The findings were expected to benefit precision machining industries in reducing their down time and cost as compared to the traditional way of trial and error method.
机译:问题陈述:对系统进行编程以满足复杂应用的需求时,人工智能(AI)的功能变得更加权威。集成了人工智能系统和图形用户界面(GUI)的MATLAB 2007B减少了研究人员因不熟悉程序代码和恐惧症而产生的建模恐惧。方法:在这项研究中,介绍了如何在Matlab上开发GUI以使用基于自适应网络的模糊推理系统(ANFIS)对激光加工过程进行建模。激光切割机在先进的机床中具有最多数量的可控制参数,因此众所周知,因此将过程设计成所需的响应变得更加困难;表面粗糙度和切缝宽度。掌握激光加工和ANFIS编程对大多数研究人员而言都是艰巨的任务,尤其是对于难以建模的过程而言。因此,冒险了一种新方法,其中使用集成了ANFIS变量的MATLAB开发了GUI来对激光加工现象进行建模,其中可以轻松地打印数字和图形输出以解释结果。结果:为了研究ANFIS变量的特征和影响,通过均方根误差(RMSE)和平均百分比误差(APE)分析了误差。然后在各种训练变量和设置之间比较RMSE值,以最终确定最佳ANFIS预测模型。所发现的结果非常有希望,并证明,即使是对人工智能和激光处理都具有较浅知识的人,也可以实际训练加载到GUI中的实验数据集,测试和优化ANFIS变量以进行比较分析。结论:根据变量组合具有预测准确性的建模工作的详细信息已在另一篇文章中作了预谋。与传统的试错法相比,该发现有望使精密加工行业受益,减少停机时间和成本。

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