Abstract:The traditional multivariate statistical methods could not detect the fault effectively under the non-steady condition of complex system. For these problems above,the concept of the dynamic limit and the same peak-valley are given in this paper. And,the paper proves that the T2 statistics of the multivariable parameters is periodic if the system is under the periodic non-steady condition. Then,this paper proposes a model of real-time fault detection under the periodic non-steady condition and gives the real time and the feasibility analysis of the model. At last,the model is applied to the periodic non-steady conditions in real time.
王天真,吴昊,刘萍,张健,汤天浩,杨鸣. 基于动态限的周期非稳定工况的实时故障检测模型[J]. 电工技术学报, 2014, 29(12): 95-101.
Wang Tianzhen,Wu Hao,Liu Ping,Zhang Jian,Tang Tianhao,Yang Ming. Real-Time Fault Detection Model Based on Dynamic Limit under Periodic Non-Steady Condition. Transactions of China Electrotechnical Society, 2014, 29(12): 95-101.
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