利用机器学习方法的电驱动单元黑箱效率建模

Q3 Economics, Econometrics and Finance
L. Bauer, Leon Stütz, M. Kley
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引用次数: 3

摘要

动力系统电气化程度的提高导致对测试技术的需求增加,以确保所需的功能。特别是对于传统的测试设备,有必要了解可应用于实际测试的测试技术的能力。建模使人们能够尽早了解测试平台的动态能力和计划测试场景的可行性。本文以传输效率为例,通过人工神经网络的实验建模,描述了复杂子系统的建模。对于数据生成,描述了实验设计和执行。生成的数据用合适的方法进行预处理,并针对神经网络进行优化。使用不同的输入变体以及不同的算法来执行建模。这些变体相互比较和竞争。使用统计方法和其他适当的技术来验证最合适的变体。该结果很好地代表了现实,并使测试系统能够以现实的方式进行性能调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BLACK BOX EFFICIENCY MODELLING OF AN ELECTRIC DRIVE UNIT UTILIZING METHODS OF MACHINE LEARNING
The increasing electrification of powertrains leads to increased demands for the test technology to ensure the required functions. For conventional test rigs in particular, it is necessary to have knowledge of the test technology's capabilities that can be applied in practical testing. Modelling enables early knowledge of the test rigs dynamic capabilities and the feasibility of planned testing scenarios. This paper describes the modelling of complex subsystems by experimental modelling with artificial neural networks taking transmission efficiency as an example. For data generation, the experimental design and execution is described. The generated data is pre-processed with suitable methods and optimized for the neural networks. Modelling is executed with different variants of the inputs as well as different algorithms. The variants compare and compete with each other. The most suitable variant is validated using statistical methods and other adequate techniques. The result represents reality well and enables the performance investigation of the test systems in a realistic manner.
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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
8 weeks
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