Investigation on the quality assurance procedure and evaluation methodology of machine learning building energy model systems

Zhongxuan Gu, Jianghua Wang, Shuxiang Luo
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引用次数: 4

Abstract

Data-driven approach is important for a wide variety of building energy applications including prediction, management, optimization, and predictive control. Due to the large-scale deployment of smart meters in buildings and the technology advance in machine learning techniques, machine learning models are becoming an integral part of building energy management platforms. The development and deployment of machine learning models is of utter importance to the efficient operation of buildings. The study found that there are deficiencies in the quality evaluation methods of machine learning model systems. From a software engineering perspective, the deployment process can be divided into requirements, design and validation. This paper proposed a quality model for machine learning building energy systems which can be used in the quality assurance of development of the system.
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机器学习建筑能源模型系统质量保证程序与评价方法研究
数据驱动的方法对于各种建筑能源应用非常重要,包括预测、管理、优化和预测控制。由于智能电表在建筑中的大规模部署和机器学习技术的进步,机器学习模型正在成为建筑能源管理平台不可或缺的一部分。机器学习模型的开发和部署对于建筑物的高效运行至关重要。研究发现,机器学习模型系统的质量评价方法存在不足。从软件工程的角度来看,部署过程可以分为需求、设计和验证。本文提出了一种机器学习建筑能源系统的质量模型,可用于系统开发的质量保证。
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