Health Management Decision of Sensor System Based on Health Reliability Degree and Grey Group Decision-Making
Abstract
:1. Introduction
- (1)
- (2)
- Take high redundancy gas sensor array for data acquisition to minimize the impact of fault sensor on the detection and analysis effect of pattern recognition methods subsequently [4].
- (3)
2. Health Management Decision
2.1. Implementation Framework of Health Management and Maintenance Decision
- Health: The whole system is very healthy. All of the sensors are also healthy. Their measurements are close to the expected value. There is no need to repair the system.
- Subhealth: The system is working at subhealthy status. The output of the system is within a normal range. All of the parameters may fluctuate near their expected value. It is essential to execute preventive maintenance regularly. Failure detection and failure isolation methods should be used in this situation.
- Failure Edge: The system is nearly failure. Their actual measurements have deviated from the expected value, but they have not deviated completely. In this status some sensors may be faulty, but the system can work effectively when fault recovery is performed. Corrective maintenance is needed after experiment [25]. Failure recovery method will be applied in this status to improve the work status sometimes.
- Failure: The system is failure. Most of sensors are failure. The actual output has completely deviated from its expected results. Immediate repaired the failure components or replacement failure components immediately may be the best choice.
2.2. Health Reliability Degree (HRD)
2.3. Grey Group Decision-Making
2.3.1. Grey Risk Decision-Making
2.3.2. Grey Group Decision Model for Decision-Making
2.4. The Process of Health Management Decision Method Based on Grey Group Decision
3. Experimental Setup and Analytical Discussion
3.1. Sensor System Experimental System
3.2. Experiment Data
4. Results and Analysis
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Solution Set | Health Status Level | Health Description | Maintenance Level |
---|---|---|---|
A1 | Health (HS) | healthy condition | No maintenance |
A2 | Subhealth (SHS) | normal range | Preventive maintenance |
A3 | failure edge (FES) | fault edge | Corrective maintenance |
A4 | Failure (FS) | fault condition | Immediate maintenance |
Solution Set | Range of Health Reliability Degree | Health Status Level |
---|---|---|
A1 | 0.9 ≤ HRD ≤ 1 | Healthy |
A2 | 0.6 ≤ HRD < 0.9 | Subhealthy |
A3 | 0.2 ≤ HRD < 0.6 | Failure edge |
A4 | 0 ≤ HRD < 0.2 | Failure |
HRD Based on Grey Theory |
---|
Input: Output of the sensor system Output: Health Reliability Degree Procedure: Step 1: Establish the grey evaluating criterions, which is shown as (HS, SHS, FES, FS). Step 2: Determine the whitening function of the grey model according to Equations (1)–(4). Step 3: Compute decision weights by using information entropy method. Step 4: Compute Grey Sample Evaluating (GSE) Matrix by (5). Step 5: Calculate the CGAV under evaluating criterion sets. Step 6: Calculate HRD by RVM. |
Grey Group Decision-Making Algorithm |
---|
Input: Historical Health Reliability Degree (HHRD): The parameter is composed of the last n HRDs. Maintenance Probability (MP): Maintenance probability is equal to history maintenance times/total test times. Overhaul Rate (OR): Overhaul rate is equal to the next inspection time/overhaul cycle. Output: Decision Result: The parameter is the level of the maintenance decision-making. The size of the framework is four: {no maintenance, preventive maintenance, corrective maintenance, immediate maintenance} Confidence: The parameter is output vector of the maintenance decision-making confidence. Procedure: Step 1: Calculate the interval grey numbers of each decision result for each evidence in the decision framework under each decision method. The interval grey number is expressed as , . represents the grey number lower limit and is the grey number upper limit (i = 1, 2, 3, 4, j = 1, 2, 3, s = 1, 2, 3). Step 2: According to the upper-lower limit in the interval grey number in Step 1, establish the comprehensive decision matrix (CDM) of each decision method as shown in Table 5. Step 3: By utilizing the interval grey number weakening transformation, the decision matrix of three decision methods is initialized and transformed to obtain the standardized decision matrix. Step 4: Calculate the weight of each decision method. First, determine the effect vector of the three decision methods for all decision frameworks according to the standardized decision matrix in Step 3. The matrix elements are the effect vectors of the three decision methods for each decision result in the decision framework. Then, according to the interval grey number vector distance formula and the weight of each evidence attribute ωj(j = 1, 2, 3), the space projector distance of each effect vector is calculated. Finally, the ratio between the vector distance of a decision method and the sum of effect vector distance for the other decision methods is the weight coefficient λs(s = 1, 2, 3, 4) of the decision method. Step 5: Calculate the comprehensive decision results. According to the maintenance decision result of the experts, the confidence of each decision result corresponding to the four decision frames can be obtained. Finally, according to the weight coefficients of each decision method that were obtained in Step 4, the final decision result is obtained by applying weighted averaging to the confidence. |
Health Status Level |
---|
Step 1: to calculate the health level of the decision framework and the confidence of every evidence. Step 2: In grey group decision, the weight vector of each evidence attribute is ω = (ω1, ω2, ω3) Step 3: calculate the decision confidence for the expert set by . Step 4: the weight vector for each experts ωe = (ωe1, ωe2, ωe3) is obtained by entropy weight method. Step 5: calculate the confidence of the final health status level by . |
Failure | Name | Failure Feature and Form | Failure Place | Failure Prevention and Control Measures |
---|---|---|---|---|
F1 | Sensor disconnect | Step Response. Lower than lower threshold | Target gas sensor | Check the sensor pin, change the target sensor |
F2 | Sensor overload | Step Response. Above upper threshold | Target gas sensor | Check the sensor pin, change the target sensor |
F3 | Sensor poisoned | No response or irregular fluctuation | Target gas sensor | Change the target sensor |
F4 | Sensor drift | Slowly varying. Baseline offset | Target gas sensor | Increase the preheating time, change the target sensor |
F5 | Abnormal changed | Output fluctuation | Target gas sensor | Check and replace the filter capacitor, check and replace the power supply module, change the target sensor |
F6 | Heater circuit failure | Sensor has no response. Heater has no input. | Target gas sensor circuit | Circuit connection check, change the chips |
Sensor | Range | Unit | Sensor | Range | Unit |
---|---|---|---|---|---|
CO-1 | 1–4 | V | O3-1 | 0.15–1.8 | V |
CO-2 | 1–4 | V | O3-2 | 0.15–0.9 | V |
CO-3 | 0.3–1.8 | V | O3-3 | 0.15–0.4 | V |
NO2-1 | 0.3–5 | V | SO2-1 | 2–5 | V |
NO2-2 | 0.3–5 | V | SO2-2 | 1.3–5 | V |
NO2-3 | 0.1–1.5 | V | SO2-3 | 1.3–3.7 | V |
T | 15–50 | °C | H | 20–65 | %RH |
P | 0.09–0.12 | Kpa |
Evidence | A1 | A2 | A3 | A4 |
---|---|---|---|---|
1 | 0.8150 | 0.3930 | 0.0039 | 0 |
2 | 0.8648 | 0.3357 | 0.0029 | 0 |
3 | 0.8568 | 0.3447 | 0.0029 | 0 |
4 | 0.8556 | 0.3457 | 0.0031 | 0 |
5 | 0.7337 | 0.4792 | 0.0057 | 0 |
6 | 0.9388 | 0.2373 | 0.0014 | 0 |
7 | 0.9393 | 0.2449 | 0.0014 | 0 |
u1 | u2 | u3 | ||||
---|---|---|---|---|---|---|
Grey Interval | Whitening Degree | Grey Interval | Whitening Degree | Grey Interval | Whitening Degree | |
A1 | [0.8562, 0.8617] | 0.8589 | [0.8690, 0.8707] | 0.8698 | [1, 1] | 1 |
A2 | [0.1383, 0.1438] | 0.1411 | [0.5853, 0.5920] | 0.5937 | [0.1650, 0.1683] | 0.1667 |
A3 | [0, 0] | 0 | [0, 0] | 0 | [0, 0] | 0 |
A4 | [0, 0] | 0 | [0, 0] | 0 | [0, 0] | 0 |
weight | 0.7719 | 0.05 | 0.1781 |
u1 | u2 | u3 | ||||
---|---|---|---|---|---|---|
Grey Interval | Whitening Degree | Grey Interval | Whitening Degree | Grey Interval | Whitening Degree | |
A1 | [0.8860, 0.9026] | 0.8943 | [0.8690, 0.8707] | 0.8698 | [1, 1] | 1 |
A2 | [0.0974, 0.1140] | 0.1057 | [0.5853, 0.5920] | 0.5937 | [0.1650, 0.1683] | 0.1667 |
A3 | [0, 0] | 0 | [0, 0] | 0 | [0, 0] | 0 |
A4 | [0, 0] | 0 | [0, 0] | 0 | [0, 0] | 0 |
weight | 0.7719 | 0.05 | 0.1781 |
u1 | u2 | u3 | ||||
---|---|---|---|---|---|---|
Grey Interval | Whitening Degree | Grey Interval | Whitening Degree | Grey Interval | Whitening Degree | |
A1 | [0.6579, 0.6611] | 0.6595 | [0.8690, 0.8707] | 0.8698 | [1, 1] | 1 |
A2 | [0.3348, 0.3381] | 0.3364 | [0.5853, 0.5920] | 0.5937 | [0.1650, 0.1683] | 0.1667 |
A3 | [0.0040, 0.0041] | 0.0040 | [0, 0] | 0 | [0, 0] | 0 |
A4 | [0, 0] | 0 | [0, 0] | 0 | [0, 0] | 0 |
weight | 0.7719 | 0.05 | 0.1781 |
Method | Rank | Maintenance Suggestion |
---|---|---|
Grey Group Decision | A1 > A2 > A3 > A4 | A1: No Maintenance |
D-S evidence Theory | A1 > A2 > A3 > A4 | A1: No Maintenance |
Bayes Theory | A1 > A2 > A3 > A4 | A1: No Maintenance |
Fuzzy Set Theory | A1 > A2 > A3 > A4 | A1: No Maintenance |
Health Status Level | Grey Group Decision | D-S Evidence Theory | Bayes Theory | Fuzzy Set Theory |
---|---|---|---|---|
A1 | 100% | 100% | 94% | 100% |
A2 | 100% | 93% | 100% | 94% |
A3 | 95% | 40% | 95% | 60% |
A4 | 98% | 49% | 98% | 93% |
average | 98.25% | 65.5% | 96.75% | 85.75% |
Method | Rank | Maintenance Suggestion |
---|---|---|
Grey Group Decision | A4 > A3 > A2 > A1 | A4: Immediate Maintenance |
D-S evidence Theory | A4 > A3 > A2 > A1 | A4: Immediate Maintenance |
Bayes Theory | A4 > A3 > A2 = A1 | A4: Immediate Maintenance |
Fuzzy Set Theory | A3 > A4 > A2 > A1 | A3: Collective Maintenance |
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Song, K.; Xu, P.; Wei, G.; Chen, Y.; Wang, Q. Health Management Decision of Sensor System Based on Health Reliability Degree and Grey Group Decision-Making. Sensors 2018, 18, 2316. https://doi.org/10.3390/s18072316
Song K, Xu P, Wei G, Chen Y, Wang Q. Health Management Decision of Sensor System Based on Health Reliability Degree and Grey Group Decision-Making. Sensors. 2018; 18(7):2316. https://doi.org/10.3390/s18072316
Chicago/Turabian StyleSong, Kai, Peng Xu, Guo Wei, Yinsheng Chen, and Qi Wang. 2018. "Health Management Decision of Sensor System Based on Health Reliability Degree and Grey Group Decision-Making" Sensors 18, no. 7: 2316. https://doi.org/10.3390/s18072316
APA StyleSong, K., Xu, P., Wei, G., Chen, Y., & Wang, Q. (2018). Health Management Decision of Sensor System Based on Health Reliability Degree and Grey Group Decision-Making. Sensors, 18(7), 2316. https://doi.org/10.3390/s18072316