Integration of Machine Learning Task Definition in Model-Based Systems Engineering using SysML

S. Rädler, E. Rigger, Juergen Mangler, S. Rinderle-Ma
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引用次数: 1

Abstract

In order to allow Systems Engineers to utilize data produced in cyber-physical systems (CPS), they have to cooperate with data-scientists for custom data-extraction, data-preparation, and/or data-transformation mechanisms. While interfaces in CPS systems might be generic, the data that is produced for custom application needs has to be transformed and merged in very specific ways, to allow systems engineers proper interpretation and insight-extraction. In order to enable efficient cooperation between systems engineers and data scientists, the systems engineers have to provide a fine-grained specification that (a) describes all parts of the CPS, (b) how they might interact, (c) what data is exchanged between them, and (d) how the data inter-relates. A data scientists can then iteratively (including further refinements of the specification) prepare the necessary custom machine-learning models and components. Therefore, this work introduces a method supporting the collaborative definition of machine learning tasks by leveraging model-based systems engineering in the formalization of the systems modeling language SysML. The method supports the identification and integration of various data sources, the required definition of semantic connections between data attributes and the definition of the data processing steps within the machine learning support. Integrating machine learning-specific properties in systems engineering techniques allows non-data scientists to define a machine learning problem, document knowledge on the data, and further supports data scientists to use the formalized knowledge as input for an implementation.
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基于模型的系统工程中基于SysML的机器学习任务定义集成
为了让系统工程师能够利用网络物理系统(CPS)中产生的数据,他们必须与数据科学家合作,定制数据提取、数据准备和/或数据转换机制。虽然CPS系统中的接口可能是通用的,但为定制应用程序需求生成的数据必须以非常特定的方式进行转换和合并,以允许系统工程师进行适当的解释和洞察提取。为了实现系统工程师和数据科学家之间的有效合作,系统工程师必须提供一个细粒度的规范(a)描述CPS的所有部分,(b)它们如何交互,(c)它们之间交换什么数据,以及(d)数据如何相互关联。然后,数据科学家可以迭代地(包括对规范的进一步细化)准备必要的定制机器学习模型和组件。因此,这项工作引入了一种方法,通过在系统建模语言SysML的形式化中利用基于模型的系统工程来支持机器学习任务的协作定义。该方法支持各种数据源的识别和集成、数据属性之间语义连接的必要定义以及机器学习支持中的数据处理步骤的定义。在系统工程技术中集成特定于机器学习的属性允许非数据科学家定义机器学习问题,记录数据上的知识,并进一步支持数据科学家使用形式化知识作为实现的输入。
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