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An experimentally derived hybrid intelligent tool for analysing and optimising the clad height and melt-pool depth in laser solid freeform fabrication process

机译:一种实验派生的混合智能工具,用于分析和优化激光固体自由成形制造过程中的包层高度和熔池深度

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摘要

In this investigation, a comparative experimental study is conducted to obtain an efficient hybrid intelligent framework for analysing and optimising the operating parameters of the laser solid freeform fabrication (LSFF) process. Here, the experimental studies are conducted in two different stages. In the first stage, different concepts of machine learning systems are taken into account to find a simple yet accurate intelligent model for identifying the LSFF process. To do so, multi-layered neural network with different types of analytical, gradient-based and heuristic learning strategies, i.e. extreme learning machine, back-propagation and steepest descend gradient-based learning and Nelder-Mead simplex heuristic, respectively, are adopted and applied to the LSFF process. In the second stage, different types of swarm- and evolutionary-based metaheuristics, i.e. differential evolutionary algorithm, particle swarm optimisation, the great salmon run, firefly algorithm, bee algorithm, are used to simultaneously find the optimal values of melt-pool depth and clad height during the LSFF process. The statistical results of the simulation indicate that the conducted experiments can result in a fast, robust and accurate hybrid intelligent system which can easily cope with the nonlinearities and uncertainties of the resulting optimisation problem.
机译:在这项研究中,进行了一项对比实验研究,以获得一个有效的混合智能框架,用于分析和优化激光固体自由成形制造(LSFF)工艺的操作参数。在这里,实验研究分两个不同阶段进行。在第一阶段,要考虑机器学习系统的不同概念,以找到一个简单而准确的智能模型来识别LSFF过程。为此,分别采用具有不同类型的分析,基于梯度和启发式学习策略的多层神经网络,即极限学习机,基于反向传播和最陡下降梯度的学习以及Nelder-Mead单纯形启发式。应用于LSFF流程。在第二阶段,使用不同类型的基于群体和进化的元启发法,即差分进化算法,粒子群优化,大鲑鱼运行,萤火虫算法,蜂算法,来同时找到熔池深度的最佳值和LSFF过程中的包层高度。仿真的统计结果表明,所进行的实验可以产生快速,鲁棒和准确的混合智能系统,该系统可以轻松应对所产生的优化问题的非线性和不确定性。

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