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Zhigang Tian

Researcher at University of Alberta

Publications -  102
Citations -  3991

Zhigang Tian is an academic researcher from University of Alberta. The author has contributed to research in topics: Condition monitoring & Condition-based maintenance. The author has an hindex of 30, co-authored 85 publications receiving 3203 citations. Previous affiliations of Zhigang Tian include Concordia University Wisconsin & Dalian University of Technology.

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Condition based maintenance optimization for wind power generation systems under continuous monitoring

TL;DR: In this paper, an optimal condition-based maintenance (CBM) strategy for wind power generation systems is proposed, which is defined by two failure probability threshold values at the wind turbine level.
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An artificial neural network method for remaining useful life prediction of equipment subject to condition monitoring

TL;DR: An artificial neural network (ANN) based method is developed for achieving more accurate remaining useful life prediction of equipment subject to condition monitoring and is validated using real-world vibration monitoring data collected from pump bearings in the field.
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An efficient method for reliability evaluation of multistate networks given all minimal path vectors

TL;DR: RSDP provides an efficient, systematic and simple approach for evaluating multistate network reliability given all d-MPs and is found that RSDP is more efficient than the existing algorithm when the number of components of a system is not too small.
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Condition based maintenance optimization for multi-component systems using proportional hazards model

TL;DR: A numerical algorithm is developed in this paper for the exact cost evaluation of the PHM based multi-component CBM policy, which is extended from a single unit to a multi- component system.
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A neural network approach for remaining useful life prediction utilizing both failure and suspension histories

TL;DR: In this article, the authors developed an ANN approach utilizing both failure and suspension condition monitoring histories, which can be used for remaining useful life prediction of other equipments, and validated using vibration monitoring data collected from pump bearings in the field.