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Machine Learning Applications in Facility Life-Cycle Cost Analysis: A Review

机译:机器学习在设施生命周期成本分析中的应用:回顾

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A large amount of resources are spent on constructing new facilities and maintaining the existing ones. The total cost of facility ownership can be minimized by focusing on reducing the facilities life-cycle costs (LCCs) rather than the initial design and construction costs. With the developments of machine learning in predictive analytics and the utilizing building systems that provide ubiquitous sensing and metering devices, new opportunities have emerged for architecture, engineering, construction, and operation (AECO) professionals to obtain a deeper level of knowledge on buildings' LCCs. This paper provides a state-of-the-art overview of the various machine learning applications in the facility LCC analysis field. This paper aims to present current machine learning for LCC research developments, analyze research trends, and identify promising future research directions.
机译:大量资源用于建设新设施和维护现有设施。通过专注于减少设施的生命周期成本(LCC)而不是最初的设计和建造成本,可以使设施拥有的总成本最小化。随着预测分析中机器学习的发展以及利用提供无处不在的传感和计量设备的建筑系统,建筑,工程,建造和运营(AECO)专业人员出现了新的机会,以获取有关建筑LCC的更深层次的知识。 。本文提供了设施LCC分析领域中各种机器学习应用程序的最新概述。本文旨在介绍LCC研究发展的当前机器学习,分析研究趋势以及确定有前途的未来研究方向。

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