论文标题
基于激光的材料处理中的预测建模方法
Predictive modeling approaches in laser-based material processing
论文作者
论文摘要
预测建模代表了一个新兴领域,该领域结合了旨在快速理解物理机制并同时开发新材料,过程和结构的现有方法和新颖方法。在当前的研究中,基于激光器的制造业以前未探索的预测建模,旨在自动化和预测激光处理对材料结构的影响。重点集中于代表性统计和机器学习算法的性能,以预测一系列材料的激光处理结果。实验数据的结果表明,预测模型能够令人满意地学习激光输入变量与观察到的材料结构之间的映射。这些结果与旨在在激光材料相互作用时阐明多尺理过程的模拟数据进一步集成。结果,由于采样点数量增加,我们将调整后的模拟数据扩大到实验中,并显着提高了预测性能。同时,提出了一个识别和量化高预测性不确定性区域的度量,表明在过渡边界周围发生了高不确定性。我们的结果可以为减少材料设计,测试和生产成本的系统方法奠定基础,该方法通过使用精确的预制预测工具更换昂贵的基于试用和错误的制造程序。
Predictive modelling represents an emerging field that combines existing and novel methodologies aimed to rapidly understand physical mechanisms and concurrently develop new materials, processes and structures. In the current study, previously-unexplored predictive modelling in a key-enabled technology, the laser-based manufacturing, aims to automate and forecast the effect of laser processing on material structures. The focus is centred on the performance of representative statistical and machine learning algorithms in predicting the outcome of laser processing on a range of materials. Results on experimental data showed that predictive models were able to satisfactorily learn the mapping between the laser input variables and the observed material structure. These results are further integrated with simulation data aiming to elucidate the multiscale physical processes upon laser-material interaction. As a consequence, we augmented the adjusted simulated data to the experimental and substantially improved the predictive performance, due to the availability of increased number of sampling points. In parallel, a metric to identify and quantify the regions with high predictive uncertainty, is presented, revealing that high uncertainty occurs around the transition boundaries. Our results can set the basis for a systematic methodology towards reducing material design, testing and production cost via the replacement of expensive trial-and-error based manufacturing procedure with a precise pre-fabrication predictive tool.