首页> 外文会议>ASME International Mechanical Engineering Congress and Exposition >GAME THEORETIC MODELLING APPROACH FOR OPTIMIZING DIRECT METAL LASER SINTERING PROCESS PARAMETERS USING ARTIFICIAL NEURAL NETWORK
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GAME THEORETIC MODELLING APPROACH FOR OPTIMIZING DIRECT METAL LASER SINTERING PROCESS PARAMETERS USING ARTIFICIAL NEURAL NETWORK

机译:游戏理论模型方法,用于使用人工神经网络优化直接金属激光烧结工艺参数

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Additive Manufacturing, also known as Rapid Prototyping and 3D Printing is a three-dimensional fabrication process, executed by adding materials in layers. Among many different classes of AM processes, Direct Metal Laser Sintering is a widely used metal part manufacturing method. The design, planning and implementation of overall DMLS process and its process parameters are yet to be optimized. To be able to render minimum defects as well as higher quantity of production, it is essential to apply ever developing computer technologies, data storage capabilities and optimization techniques. Typically, the defects on any 3D printed part can alter mechanical properties and shorten its durability. To minimize the defects and produce good quality parts at a mass level, has been a challenge in additive manufacturing industry. In this paper, a framework is presented to utilize game theoretic modelling approach to optimize DMLS process parameters. Online monitoring of DMLS process can identify defects of printed layers and correlate them with temperature signatures. An Artificial Neural Network is trained to predict printing defects and process parameters, predicted model can be further used in a game theoretic playoff matrix to identify the most optimal combination or configuration of DMLS process parameters to minimize defects and maximize the production quantity. The proposed method can also be applied in different domains of additive and advanced manufacturing.
机译:添加剂制造,也称为快速原型制作和3D打印是一种三维制造过程,通过在层中添加材料来执行。在许多不同的AM过程中,直接金属激光烧结是一种广泛使用的金属部件制造方法。整体DMLS进程的设计,规划和实现及其进程参数尚未优化。为了能够呈现最低缺陷以及更高的生产量,必须应用曾经开发的计算机技术,数据存储能力和优化技术。通常,任何3D印刷部分上的缺陷都可以改变机械性能并缩短其耐久性。为了最大限度地减少质量水平的缺陷并产生良好的质量零件,在添加剂制造业方面是一项挑战。本文提出了一种框架,利用游戏理论建模方法来优化DMLS过程参数。 DMLS进程的在线监控可以识别印刷层的缺陷并将它们与温度签名相关联。培训人工神经网络以预测印刷缺陷和过程参数,可以进一步用于游戏理论季后赛矩阵以识别DMLS工艺参数的最佳组合或配置,以最大限度地减少缺陷并最大化生产量。所提出的方法也可以应用于添加剂和先进制造的不同领域。

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