A Systematic Disturbance Analysis Method for Resilience Evaluation: A Case Study in Material Handling Systems
Abstract
:1. Introduction
2. Problem Description
- The equipment and caches in the system have a limited capacity.
- Disturbances that occur to the MHS are independent.
3. Disturbance Analysis Method: DMEA
- Function and structure analysis of the system. The indenture levels of the system are specified on the basis of a function and structure analysis. Here, the indenture levels are used to identify or describe the relative complexity of the system. Typical indenture levels include the system level, subsystem level, unit level, and part level. We need to choose the indenture levels appropriately because an insufficient analysis may result in missing some critical disturbance modes, and an excessive analysis may cause resource waste.
- Disturbance identification and effects analysis. As a bottom-up method, the analysis begins at the lowest indenture level and continues upward. At each indenture level, all possible disturbances, their occurrence probabilities, the performances that may be affected, and the degradation and recovery behaviors are identified, as shown in Table 1. The information obtained from a lower level can be used further during the analysis of a higher level.
- Continuous curve
- Linear model. System performance linearly declines from the normal value to the lowest value after the disturbance, or the performance linearly recovers from back to by taking some recovery actions, as shown in Figure 2a.
- Nonlinear model. As shown in Figure 2b, system performance continuously declines from normal to the degraded state or restores to its normal state, and the speed of the performance degradation or recovery is not constant.
- Discrete curve
- In this model, system performance is defined within a limited number of states. After the disturbance, system performance is gradually reduced and then gradually restored, as shown in Figure 2c.
4. Resilience Evaluation Based on DMEA
4.1. MHS Modeling
- System configuration data, such as system composition, equipment layout parameters (e.g., the position, length, width, and height of the equipment), and equipment functional parameters (e.g., velocity, acceleration, operation time, and transport time of the equipment).
- Simulation-related data, such as the iteration number, time duration, and granularity of the simulation.
- Disturbance-related data, such as the minimum acceptable value of the resilience, the disturbance probability, the performance degradation curve, and the recovery curve. See Section 4.3 for details.
4.2. Key Performance Index Determination
4.3. DMEA
- For a continuous linear curve, the following data are required:
- the system’s lowest performance value after the disturbance () and its distribution;
- the time duration of the performance degradation () and its distribution;
- the performance after recovery () and its distribution;
- the time duration of the performance recovery () and its distribution.
- For a continuous nonlinear curve, data are required as follows:
- the system’s lowest performance value after the disturbance () and its distribution;
- the performance function of the degradation process;
- the performance after recovery () and its distribution;
- the performance function of the recovery process.
- For a discrete curve, the following data are needed:
- performance values of all possible states;
- the system’s lowest performance value after the disturbance () and its distribution;
- the time duration and its distribution at each state during system degradation and recovery, respectively.
4.4. Simulation Run without/with Disturbance
4.4.1. Disturbance Injection
4.4.2. Simulation Run and KPI Data Collection
4.4.3. Performance Normalization
4.5. MHS Resilience Evaluation
5. Case Study
5.1. Case Overview
5.2. Disturbance Analysis and Resilience Evaluation
5.2.1. DMEA
5.2.2. Resilience Evaluation
5.3. Error Analysis
5.4. Results and Discussion
5.4.1. System Resilience Enhancement Methods
5.4.2. Sustainability Analysis
- (1)
- A more resilient tire tread handling system represents more advanced technology. The trade-off between cost and production can be better determined by adding resilience as an additional constraint. Resilience can effectively describe the continuous performance change process of the system after the disturbance and is more advanced than the previous two-state (i.e., the system is either normal or faulty) or discrete multistate methods.
- (2)
- As resilience can describe the feature of continuous changes in system performance, it is very useful in performance management. The deterministic resilience measure in Equation (2) characterizes the average performance of the system over a period of time after the disturbance. For a given disturbance, a resilient strategy can be generated according to the performance level of the system after the disturbance, and then the average performance of the system when responding to the disturbance can be improved. For random disturbances, we can analyze the resilience behavior of the system with different disturbances according to the DMEA method in this paper, and we can then find a way to improve the average resilience of the system to these disturbances.
- (3)
- Under a given disturbance, a resilient system can be restored faster. Fast recovery increases system production by consuming maintenance resources. In Table 8, one can see that a more resilient recovery strategy significantly decreases the total expense (i.e., the sum of the maintenance cost and the economic loss caused by the decrease in production). For example, Case 1 has a total expense of 24,070 Yuan at a resilience level of 0.9099, while the total expense in Case 2 decreases to 10,903 Yuan at a high resilience level of 0.9958. A highly resilient manufacturing process realizes global economic savings, avoids overtime work, and prevents additional resource consumption, thus promoting sustainable manufacturing. Exceptions may exist when the failure is so severe that only an overhaul or even replacement can bring the broken component back into use, as in Case 8. In this case, high resilience is obtained by direct replacement of a part.
- (4)
- The recovery strategy, which is determined with the consideration of resilience, helps increase the average production of the tire tread handling system after the disturbance. This means that the factory emissions per product can be reduced and that the resilient system is environmentally friendly. Moreover, the recovery strategy for multi-failure conditions affects production continuity a lot and determines the additional effort hours and resources, and this topic is closely linked with resource consumption and environmental pressure, on which sustainability has primarily focused [51]. Research concentrating on the optimal recovery strategy will be conducted in the future.
- (5)
- Because the resilience can improve the average performance of the system after the disturbance, it is beneficial to manufacture more products facing the same situation. The richness of commodities attracts customers and is conducive to improvement in social well-being.
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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No. | Part Name | Function | Disturbance Modes | Disturbance Causes | Occurrence Probability | Disturbance Effects | |
---|---|---|---|---|---|---|---|
Performance Affected | Performance Degradation and Recovery | ||||||
Parameter | Value | Parameter | Value | ||
---|---|---|---|---|---|
Discharge time interval of the extruder | 221.4 s/pallet | Hoister | Material pick-up duration () | 8 s | |
Maximum allowable recovery time | 4 h | Material drop-off duration () | 1 s | ||
Transport duration from extruder to the AGV pick-up location () | 45 s | Transport duration from the AGV drop off location to hoister cache () | 17.5 s | ||
AGV | Forward velocity () | 1.33 m/s | RGV | Duration of vehicle go () | 12 s |
Turn velocity () | 0.5 m/s | Duration of vehicle return () | 11 s | ||
Acceleration () | 0.2 m/s | Material drop-off duration () | 2 s | ||
U-turn duration () | 25 s | Stacker | Material pick-up/drop-off duration () | 22 s | |
Material pick-up/drop-off duration () | 15 s | Lift velocity () | 0.67 m/s | ||
Straight path length of AGV go | 35.6 m | Walk velocity () | 2.67 m/s | ||
Straight path length of AGV return | 36.9 m | Acceleration () | 0.5 m/s | ||
Turning path length of AGV go | 7.4 m | Shelving | Number of floors | 7 | |
Turning path length of AGV return | 10.3 m | Number of upper horizontal storage units | 24 | ||
U-turn times of AGV go | 0 | Number of lower horizontal storage units | 25 | ||
Turn times of AGV go | 1 | Width of the storage unit | 1.47 m | ||
U-turn times of AGV return | 1 | Height of the storage unit | 2.325∼2.425 m | ||
Turn times of AGV return | 1 |
No. | Part Name | Function | Disturbance Modes | Disturbance Causes | Occurrence Probability | Disturbance Effects | ||||
---|---|---|---|---|---|---|---|---|---|---|
Performance Affected | ||||||||||
1 | AGV | take tire treads | drive unit fails | drive unit design | ∼ | 1,0.8,1 | 0 | 1,10,10 | ||
2 | to the warehouse | circuit connection fails | process problem | ∼ | 6,[0.5,0.8],[0.2,0.8] | 0 | 1,20,20 | |||
3 | entrance | control system fails | external interference | ∼ | 6,[0.5,0.8],[0.2,0.8] | 0 | 1,30,30 | |||
… | … | … | … | … | … | … | … | … | … | … |
84 | stacker | carry tire | tire treads exceed on the left | bias of the pallet | ∼ | 6,[0,0.5,0.8],[0.5,0.3,0.2] | 0 | 4,2.678,0.265 | ||
85 | treads to the | tire treads exceed on the right | bias of the pallet | ∼ | 6,[0,0.5,0.8],[0.5,0.3,0.2] | 0 | 4,2.632,0.248 | |||
86 | storage unit | task execution timeout | network interruption | ∼ | 6,[0,0.5,0.8],[0.5,0.3,0.2] | 0 | 4,2.732,0.314 |
Distribution Type | Distribution Type No. | Characteristic Parameters | |
---|---|---|---|
1 | 2 | ||
Uniform distribution | 1 | a | b |
Exponential distribution | 2 | - | |
Normal distribution | 3 | ||
Log–normal distribution | 4 | ||
Log-logistic distribution | 5 | s | |
Discrete distribution | 6 |
No. | Number of Iterations | Error | Duration (s) |
---|---|---|---|
1 | 500 | 0.006131 | 52.6959 |
2 | 1000 | 0.003437 | 89.2595 |
3 | 1500 | 0.003306 | 127.169 |
4 | 2000 | 0.003197 | 178.013 |
5 | 2500 | 0.002938 | 200.445 |
6 | 3000 | 0.002747 | 279.122 |
7 | 3500 | 0.002564 | 283.232 |
8 | 4000 | 0.002430 | 327.458 |
9 | 4500 | 0.002291 | 368.282 |
10 | 5000 | 0.002077 | 509.328 |
Equipment | Acquisition Cost (Yuan/Unit) | Operation Cost (Yuan/Unit Year) | Maintenance Cost | |
---|---|---|---|---|
Hardware | Manpower (Yuan/Hour) | |||
AGV | 900,000 | 10,000 | Determined by the disturbance mode | 500 |
Hoister | 150,000 | 1000 | ||
RGV | 200,000 | 1000 | ||
Stacker | 1,000,000 | 10,000 | ||
Cache | 100,000 | - | - | - |
Storage Unit | 2700 | - | - | - |
Case No. | Number of | Cost (Yuan) | Daily Production (Pallet) | Resilience | ||||||
---|---|---|---|---|---|---|---|---|---|---|
AGV | Hoister | RGV | Cache | Acquisition | Operation | Maintenance | Total | |||
1 | 1 | 1 | 1 | 1 | 3,276,100 | 22,000 | 95,000 | 3,393,100 | 390 | 0.9565 |
2 | 2 | 1 | 1 | 1 | 4,176,100 | 32,000 | 173,000 | 4,381,100 | 390 | 0.9867 |
3 | 1 | 2 | 1 | 1 | 3,426,100 | 23,000 | 102,000 | 3,551,100 | 390 | 0.9716 |
4 | 1 | 1 | 2 | 1 | 3,476,100 | 23,000 | 107,000 | 3,606,100 | 390 | 0.9700 |
5 | 1 | 1 | 1 | 2 | 3,376,100 | 22,000 | 95,000 | 3,493,100 | 390 | 0.9720 |
Case No. | Disrupted Equipment | Maintenance Cost (Yuan) | Resilience | Production Loss (Pallets) | Economic Loss (Yuan) | ||
---|---|---|---|---|---|---|---|
Manpower | Hardware | Total | |||||
1 | AGV | 500 | 6000 | 6500 | 0.9099 | 35.14 | 17,570 |
2 | 83 | 10,000 | 10,083 | 0.9958 | 1.64 | 820 | |
3 | Hoister | 750 | 10,000 | 10,750 | 0.9792 | 8.11 | 4055 |
4 | 750 | 10,000 | 10,750 | 0.9968 | 1.25 | 625 | |
5 | RGV | 500 | 600 | 1100 | 0.976 | 9.36 | 4680 |
6 | 83 | 1000 | 1083 | 0.9919 | 3.16 | 1580 | |
7 | Stacker | 103.7 | 3000 | 3103.7 | 0.9792 | 8.11 | 4055 |
8 | 70 | 20,000 | 20,070 | 0.9932 | 2.65 | 1325 |
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Li, R.; Tian, X.; Yu, L.; Kang, R. A Systematic Disturbance Analysis Method for Resilience Evaluation: A Case Study in Material Handling Systems. Sustainability 2019, 11, 1447. https://doi.org/10.3390/su11051447
Li R, Tian X, Yu L, Kang R. A Systematic Disturbance Analysis Method for Resilience Evaluation: A Case Study in Material Handling Systems. Sustainability. 2019; 11(5):1447. https://doi.org/10.3390/su11051447
Chicago/Turabian StyleLi, Ruiying, Xiaoyu Tian, Li Yu, and Rui Kang. 2019. "A Systematic Disturbance Analysis Method for Resilience Evaluation: A Case Study in Material Handling Systems" Sustainability 11, no. 5: 1447. https://doi.org/10.3390/su11051447
APA StyleLi, R., Tian, X., Yu, L., & Kang, R. (2019). A Systematic Disturbance Analysis Method for Resilience Evaluation: A Case Study in Material Handling Systems. Sustainability, 11(5), 1447. https://doi.org/10.3390/su11051447