计算机科学
随机森林
医学诊断
断层(地质)
贝叶斯概率
故障检测与隔离
推论
贝叶斯推理
实时计算
数据挖掘
人工智能
医学
地质学
病理
地震学
执行机构
作者
Jiaqiang Wang,Yaoyue Tian,Zhaohui Qi,Liping Zeng,Peng Wang,Sungmin Yoon
标识
DOI:10.1016/j.buildenv.2023.111124
摘要
The measurement biases in working sensors significantly hampers the effective operation and control of cooling systems in the data center. However, previous studies only focus on sensor fault diagnosis or sensor bias correction, neglecting the simultaneous detection, diagnosis and correction of sensor faults. This study proposed a novel method, combining Multi-Label Random Forest and Bayesian Inference (HMLRF-BI), to simultaneously detect, diagnose and correct sensor faults. Case studies were conducted involving eight single sensors and six multiple sensor fault cases in the Computer Room Air Handler (CRAH) to comprehensively evaluate the diagnostic and correction performance of the proposed method. Simulation results demonstrate that the method accurately diagnoses sensor fault types with a diagnostic accuracy of 97.42 % and an F1 score exceeding 97.90 %. Moreover, the proposed method also performs well in single/multiple sensor bias correction scenarios, with a correction accuracy exceeding 96.81 % and 97.10 %, respectively. Furthermore, a novel cycle mechanism is proposed, which utilized the MLRF fault diagnosis model to re-diagnose the corrected fault sensor to complete the closed-loop cycle of the HMLRF-BI method with an overall accuracy of 96.17 %. This study successfully filled the knowledge gap in the simultaneous detection, diagnosis and correction of sensor faults in data center CRAH, providing a comprehensive solution to restore sensor measurement performance, which is a promising application method.
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