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Combining Machine Learning and Simulation to a Hybrid Modelling Approach: Current and Future Directions

机译:将机器学习和仿真结合到混合模拟方法:当前和未来方向

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In this paper, we describe the combination of machine learning and simulation towards a hybrid modelling approach. Such a combination of data-based and knowledge-based modelling is motivated by applications that are partly based on causal relationships, while other effects result from hidden dependencies that are represented in huge amounts of data. Our aim is to bridge the knowledge gap between the two individual communities from machine learning and simulation to promote the development of hybrid systems. We present a conceptual framework that helps to identify potential combined approaches and employ it to give a structured overview of different types of combinations using exemplary approaches of simulation-assisted machine learning and machine-learning assisted simulation. We also discuss an advanced pairing in the context of Industry 4.0 where we see particular further potential for hybrid systems.
机译:在本文中,我们描述了机器学习和模拟朝向混合建模方法的组合。 基于数据和基于知识的建模的这种组合是由部分基于因果关系的应用程序的激励,而其他效果来自隐藏的依赖关系,这些效果在大量数据中表示。 我们的目标是从机器学习和模拟中介绍两个个人社区之间的知识差距,以促进混合动力系统的发展。 我们提出了一个概念框架,有助于识别潜在的组合方法,并采用使用模拟辅助机器学习和机器学习辅助模拟的示例性方法来提供不同类型的组合的结构化概述。 我们还在行业4.0的背景下讨论了一个先进的配对,我们看到了混合系统的特定进一步的潜力。

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