Failure Prediction of the Rotating Machinery Based on CEEMDAN-ApEn Feature and AR-UKF Model
Abstract
:1. Introduction
- (1)
- The complete ensemble empirical mode decom-posetion with adaptive noise (CEEMDAN), which can overcome shortages of EMD and EEMD on modal aliasing and calculation efficiency, is adopted to decompose the original vibration signals of the rotating machinery into a number of IMFs and a residual.
- (2)
- The maximal information coefficient (MIC), which can reveal the degree of association between two variables, is utilized to select eligible IMFs and get the reconstructed signals.
- (3)
- The approximate entropy (ApEn) is employed to achieve fault features of the reconstructed signals and track the degradation process of the rotating machinery.
- (4)
- A remaining useful life (RUL) prediction model by combing the auto regress (AR) model and the unscented Kalman filter (UKF) algorithm is developed to achieve the RUL of the rotating machinery accurately.
2. Methodology
2.1. Overview
2.2. Fault Feature Extraction Stage
2.2.1. Complete Ensemble Empirical Mode Decomposition with Adaptive Noise
- (1)
- Add to the original signals X:
- (2)
- Use EMD to obtain the local mean of to get the first residual :
- (3)
- Calculate the first IMF:
- (4)
- Decompose and delimit the second IMF:
- (5)
- Calculate the k-th residual :
- (6)
- Get k-th IMF:
- (7)
2.2.2. Maximal Information Coefficient
- (1)
- Denote as a joint probability distribution function of two variables and , and mutual information of and is defined as:
- (2)
- Suppose Y is consisted of a number of elements which are ordered value pairs of and , and N is the amount of pairs. A grid G is defined as a partition on Y, which can partition the values of in Y into a number of bins and that of in Y into a number of bins, respectively. Denote as the mutual information of and on grid G with rows and columns. The feature matrix of Y is defined as:
- (3)
- Furthermore, MIC of and in set Y with N samples is defines as follows.
2.2.3. Approximate Entropy
- (1)
- The sequence is sequentially composed into an m-dimensional vector :
- (2)
- Calculate the distance between the vector and the remaining vectors for each i.
- (3)
- Given a threshold , for each value of i, count the number n of and calculate the ratio of n to the total number .
- (4)
- Calculate the logarithm of and get it average value :
- (5)
- Add the dimension to , and repeat steps (1)–(4) to get .
- (6)
- The value of ApEn for this sequence is:
2.3. Initial and Final Failure Prediction Stage
2.4. RUL Prediction
2.4.1. Unscented Kalman Filter
2.4.2. AR-UKF Prediction Model
- (1)
- Calculate the proposed CEEMDAN-ApEn feature according to the method proposed in Section 2.2. Obtain the prediction starting time (PST) and the threshold of the final failure using the method proposed in Section 2.3.
- (2)
- Start RUL prediction by setting .
- (3)
- At the time T, select n data samples of the CEEMDAN-ApEn feature on time slots to construct the AR model.
- (4)
- Use UKF to perform multiple steps prediction on time slots until the predicted value is greater than the threshold of final failure . Suppose the time corresponding to above predicted value is ; thus, m is the predicted RUL at the time T.
- (5)
- (6)
- Finally, the predicted RUL value obtained at each time is used to plot a RUL curve.
3. Experiment and Results
3.1. Experimental Setup
3.2. Fault Feature Extraction and Selection
- (1)
- The feature should vary with degradation process gradually, thus maintaining a certain correlation with time.
- (2)
- The feature should show a consistent increasing or decreasing characteristics throughout the life cycle.
- (3)
- The feature should be robust to outliers.
3.3. Initial and Final Failure Prediction
3.4. RUL Prediction
4. Conclusions
Author Contributions
Acknowledgments
Conflicts of Interest
References
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IMFs | 1 | 2 | 3 | 4 | 5 | 6 | 7 |
MIC | 0.2939 | 0.1643 | 0.1767 | 0.0987 | 0.0574 | 0.0502 | 0.0576 |
IMFs | 8 | 9 | 10 | 11 | 12 | 13 | |
MIC | 0.0610 | 0.0514 | 0.0535 | 0.0587 | 0.0688 | 0.0685 |
Features | J | |||
---|---|---|---|---|
Kurtosis | 0.5589 | 0.0356 | 0.9573 | 0.4221 |
RMS | 0.6596 | 0.0945 | 0.9837 | 0.4743 |
EEMD-EMTR | 0.7266 | 0.0193 | 0.9748 | 0.4474 |
ENTR | 0.7431 | 0.0051 | 0.8315 | 0.4006 |
ApEn | 0.7509 | 0.0234 | 0.9666 | 0.4518 |
CEEMDAN-ApEn | 0.8321 | 0.0641 | 0.9802 | 0.4925 |
Metrics | AR-PF | AR-UKF |
---|---|---|
(unit: hour) | 0.2240 | 0.0093 |
(unit: hour) | 0.2959 | 0.0394 |
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Yang, J.; Chang, Y.; Gao, T.; Wang, J. Failure Prediction of the Rotating Machinery Based on CEEMDAN-ApEn Feature and AR-UKF Model. Appl. Sci. 2020, 10, 2056. https://doi.org/10.3390/app10062056
Yang J, Chang Y, Gao T, Wang J. Failure Prediction of the Rotating Machinery Based on CEEMDAN-ApEn Feature and AR-UKF Model. Applied Sciences. 2020; 10(6):2056. https://doi.org/10.3390/app10062056
Chicago/Turabian StyleYang, Jingli, Yongqi Chang, Tianyu Gao, and Jianfeng Wang. 2020. "Failure Prediction of the Rotating Machinery Based on CEEMDAN-ApEn Feature and AR-UKF Model" Applied Sciences 10, no. 6: 2056. https://doi.org/10.3390/app10062056
APA StyleYang, J., Chang, Y., Gao, T., & Wang, J. (2020). Failure Prediction of the Rotating Machinery Based on CEEMDAN-ApEn Feature and AR-UKF Model. Applied Sciences, 10(6), 2056. https://doi.org/10.3390/app10062056