首页> 外文会议>Powertrain and Fluid Systems Conference and Exhibition >Statistical process control and design of experiment process improvement methods for the powertrain laboratory
【24h】

Statistical process control and design of experiment process improvement methods for the powertrain laboratory

机译:动力总成实验室实验过程改进方法的统计过程控制与设计

获取原文

摘要

The application of Statistical Process Control and Design of Experiment methods in the research laboratory can lead to significant gains in the Powertrain development process. Empirical methods such as Design of Experiments, Regression, and Neural Network techniques can be applied to help researchers gain better understanding of the cause and effect relationships of emission, alternative fuel source, performance, fuel economy, and engine management system - calibration studies. The use of these empirical modelling techniques along with model-based Genetic Algorithm, Gradient, or Constraint-based solution search methods will help identify the "process settings" that improve fuel economy, improve performance, and reduce pollutants. Since empirical methods are fundamentally based on the acquired test data, it is vitally important that the laboratory measurements are repeatable, consistent, and void of sources of variance that have a significant effect on the acquired test data. If significant sources of variance are "contained" within the acquired data, then the subsequent data analysis, solution results, and final conclusions of the study may be jeopardized. With Statistical Process Control and Design of Experiments, "Out of Control" or systemic process problems in the Powertrain Laboratory can be identified and eliminated. Thus, Statistical Process Control and Design of Experiments are invaluable methods and essential elements of a variance reduction program. This paper will discuss how these methods can be an integral part of powertrain development. Ultimately, Design of Experiments and Statistical Process Control methods are the key ingredients of a successful powertrain research program.
机译:在研究实验室中的统计过程控制和实验方法的应用可以导致动力系统开发过程中的显着提升。诸如实验,回归和神经网络技术的设计的经验方法,可以帮助研究人员更好地了解发射,替代燃料源,性能,燃料经济性和发动机管理系统 - 校准研究的原因和效果关系。使用这些经验建模技术以及基于模型的遗传算法,梯度或基于约束的解决方案搜索方法将有助于识别改善燃油经济性,提高性能和减少污染物的“过程设置”。由于经验方法基于所获得的测试数据,因此重要的是,实验室测量是可重复的,一致的,并且缺口源的差异对所获得的测试数据有显着影响。如果在所获取的数据内“包含”的重大方差来源,则随后的数据分析,解决方案结果和该研究的最终结论可能会受到危害。通过统计过程控制和实验的设计,可以识别和消除动力总成实验室中的“失控”或系统过程问题。因此,统计过程控制和实验的设计是无数的方法和方差减少计划的基本要素。本文将讨论这些方法如何成为动力系统开发的组成部分。最终,实验和统计过程控制方法的设计是成功动力总成研究计划的关键成分。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号