期刊论文详细信息
Environmental and Climate Technologies
Applicable Predictive Maintenance Diagnosis Methods in Service-Life Prediction of District Heating Pipes
Langroudi Pakdad Pourbozorgi1  Weidlich Ingo1 
[1] HafenCity University Hamburg,Überseeallee 16, 20457Hamburg, Germany;
关键词: artificial neural networks;    asset management;    condition-based maintenance;    machine learning;    proactive maintenance;    system reliability;   
DOI  :  10.2478/rtuect-2020-0104
来源: DOAJ
【 摘 要 】

Maintaining the supply chain in every industry is an important concern for the operators. The negative impacts of inappropriate maintenance could be discussed from different perspectives as well as capital loss, reputation loss, hazard and risk for lives, etc. In recent years, District heating (DH) in the countries that employing this technology broadly, turned to a vital energy infrastructure for delivering heat from suppliers to the consumers. Therefore, the reliability of the system is of high importance for the public interest. The transition from reactive maintenance to proactive maintenance have improved a lot the reliability to the system. Currently, many industries are exploiting different forms of artificial intelligence (AI) to predict the failures and plan for interventions to increase the system efficiency. In this paper the different methods of predictive maintenance have been reviewed and the compatibility to apply on a DH network has been discussed.

【 授权许可】

Unknown   

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