%0 Journal Article %T A telemetry data based diagnostic health monitoring strategy for in %A Bin Jiang %A Cunsong Wang %A Ningyun Lu %A Yuehua Cheng %J Advances in Mechanical Engineering %@ 1687-8140 %D 2019 %R 10.1177/1687814019839599 %X Diagnostic health monitoring without prior knowledge is still a hard problem in the prognostic and health management field. A multivariate diagnostic health monitoring strategy is proposed based on telemetry data for in-orbit spacecrafts with component degradation. Compared with the existing univariate or direct diagnostic health monitoring methods, multivariate diagnostic health monitoring methods can avoid constructing one-dimensional synthesized health index and setting empirical thresholds for different health states. In our developed strategy, a deep forest algorithm combined with an effective feature extraction approach and fuzzy C-means clustering algorithm is proposed to achieve more accurate assessment of the current health state. First, a partitioning window is utilized to deal with the raw telemetry data and then features which have high monotonicity and trends are extracted for diagnostic health monitoring. Then, a fuzzy C-means algorithm is used to handle unlabeled telemetry data and determine states of degrading component. Finally, a deep forest classifier is adopted to obtain the prognostic model for online probabilistic diagnostic health monitoring. Verification results on a simulated spacecraft attitude control system can demonstrate the effectiveness and feasibility of the proposed multivariate diagnostic health monitoring strategy %K Diagnostic health monitoring %K feature extraction %K deep forest %K fuzzy C-means clustering %K spacecraft attitude control system %U https://journals.sagepub.com/doi/full/10.1177/1687814019839599