Author:
Zhao Yuhong,Wang Naiqiang,Liu Zhansheng,Mu Enyi
Abstract
The operation and maintenance (O&M) of buildings plays an important role in ensuring that the buildings work normally, as well as reducing the damage caused by functional errors. There are obvious problems in the traditional O&M modality, and an effective way to solve them is to make the model smarter. In this paper, a digital twin framework for building operation is proposed, which consists of two key components: a digital twin O&M model and a machine learning algorithm. The process of establishing the digital twin model is introduced in detail, and the method is explained according to the structure, equipment, and energy consumption characteristics of the model. A mechanism of fusing the digital twin and machine learning algorithm is proposed and the prediction process based on an artificial neural network (ANN) is shown. Finally, based on a systematic summary of the modeling process and fusion mechanism, the development path and overall structure of the intelligent O&M system utilizing digital twins is proposed.
Funder
The Deep Learning Based Lifting Safety Risk Prediction and Control Method of Assemblies Building of Beijing Natural Science Foundation.
Subject
Building and Construction,Civil and Structural Engineering,Architecture
Cited by
41 articles.
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