应用机器学习概念增强智能电网工程过程

Marcel Otte, S. Rohjans, F. Andrén, T. Strasser
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引用次数: 0

摘要

可再生能源的扩张,作为减少全球变暖和保证可持续能源供应的一项努力,通过新的要求、参与者、技术方法或商业模式,迫使电力能源系统变得更加复杂。在智能电网工程过程中也注意到这种复杂性,导致工作量和成本增加。通过在工程过程中应用机器学习概念,可以减少工作量,并最大限度地减少繁琐和易出错的手动任务。这项工作介绍了三个机器学习概念,并展示了它们如何通过应用聚类方法来提供对已开发用例有用的标准建议,从而改进智能电网工程过程。根据它们的实施可行性,进行了基于最新技术的评价。此外,工具原型表明了机器学习在智能电网工程过程中的当前和未来应用可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Machine Learning Concepts to Enhance the Smart Grid Engineering Process
The expansion of renewable energy sources, as an effort to reduce global warming and to guarantee a sustainable energy supply, forces the electrical energy systems into enhanced complexity through new requirements, actors, technological approaches or business models. This complexity is also noticed in the smart grid engineering process, resulting in increasing effort and costs. By applying machine learning concepts on the engineering process it is possible to decrease the work-effort and minimize tedious and error prone manual tasks. This work introduces three machine learning concepts and shows how they can improve the smart grid engineering process by applying a clustering approach to give recommendations of standards that are useful for the developed use case. According to their implementation-feasibility an evaluation based on the state-of-the-art is pursued. Furthermore, a tool prototype indicates current and future application possibilities of machine learning in the smart grid engineering process.
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