Joint Optimization of Maintenance and Spare Parts Inventory Strategies for Emergency Engineering Equipment Considering Demand Priorities
Abstract
:1. Introduction
- (1)
- Construct a joint optimization model of spare parts inventory and maintenance strategies for the service system comprising two types of emergency engineering equipment;
- (2)
- Consider the diverse priorities of the demands needed to be accomplished by emergency engineering equipment in accordance with the real situation;
- (3)
- Employ the Markov process imbedding approach efficiently to formulate a group of system reliability indexes, including the availability of spare parts, maintenance engineer and entire service system;
- (4)
- Apply the branch-and-bound method successfully to address the joint optimization model and derive the joint optimum decisions of spare part inventory strategy and maintenance engineer allocation.
2. Model Descriptions and Assumptions
2.1. System Description
- (1)
- If the urgent demands reach the service system, the operation situations are described as follows. Customers with urgent demands automatically choose the type-I emergency engineering systems to acquire the express service. If there is no available type-I emergency engineering equipment, the customer may leave the service system directly with a probability , or wait in the queue of type-I emergency engineering equipment with a probability , satisfying .
- (2)
- When the non-urgent demands arrive at the service system, the operation scenarios are introduced as follows. The primary choice of customers with non-urgent demands is the type-II emergency engineering systems, owing to the less pressure of time. If no available type-II emergency engineering equipment exists upon the arrival of the demands, the customers may leave the system directly with a probability . Alternatively, they may continue waiting in the queue for the type-II emergency engineering equipment with a probability . Another possible choice is switching to the queue of type-I emergency engineering equipment with a probability , while the unsatisfied non-urgent demands may still wait to be served due to the fully occupied type-I emergency engineering equipment. Particularly, in the queue of type-I emergency engineering equipment, the customers with urgent demands take priority for service over those with non-urgent demands. It is obvious that .
2.2. Maintenance and Spare Parts Inventory Strategies
2.3. Basic Assumptions
- (1)
- The arrival of urgent and non-urgent demands follows the Poisson process with rates and , respectively.
- (2)
- Each piece of emergency engineering equipment functions independently. The service time of type-I and type-II emergency engineering equipment fulfilling the demands follows the exponential distribution with rates and , respectively. Obviously, .
- (3)
- The lifetimes of type-I and type-II emergency engineering equipment are exponentially distributed with rates and , respectively.
- (4)
- The maintenance times of type-I and type-II emergency engineering equipment follow exponential distributions with parameters and , respectively.
- (5)
- The lead time of spare parts replenishment obeys an exponential distribution with a replenishment rate .
3. Markov Process Descriptions
- (1)
- Condition: and ;Transition: ;Transition rate: .
- (2)
- Condition: and ;Transition: ;Transition rate: .
- (3)
- Condition: and ;Transition: ;Transition rate: .
- (4)
- Condition: and ;Transition: ;Transition rate: .
- (5)
- Condition: and ;Transition: ;Transition rate: .
- (6)
- Condition: and ;Transition: ;Transition rate: .
- (7)
- Condition: and ;Transition: ;Transition rate: .
- (8)
- Condition: and ;Transition: ;Transition rate: .
- (9)
- Condition: and ;Transition: ;Transition rate: .
- (10)
- Condition: and ;Transition: ;Transition rate: .
- (11)
- Condition: and ;Transition: ;Transition rate: .
- (12)
- Condition: and ;Transition: ;Transition rate: .
- (13)
- Condition: and ;Transition: ;Transition rate: .
- (14)
- Condition: and ;Transition: ;Transition rate: .
- (15)
- Condition: and ;Transition: ;Transition rate: .
- (16)
- Condition: and ;Transition: ;Transition rate: .
- (17)
- Condition: and ;Transition: ;Transition rate: .
- (18)
- Condition: and ;Transition: ;Transition rate: .
- (19)
- Condition: and ;Transition: ;Transition rate: .
4. Formulation of the Joint Optimization Model
4.1. Derivation of Reliability Indexes
4.2. Cost Analysis
4.3. Joint Optimization Model
5. Numerical Examples
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Study | System Structure | Optimized Policy | Methodology | Demand Priority |
---|---|---|---|---|
Ref. [16] | Series system with identical units | Preventive maintenance (PM) and inventory | Stochastic dynamic programming and simulation | None |
Ref. [17] | Single-unit system | Condition-based maintenance (CBM) and threshold of ordering spares | Enumeration algorithm | None |
Ref. [18] | Standby system | PM and inventory | Simulation | None |
Ref. [19] | Multi-component system | CBM and inventory | Genetic algorithm | None |
Refs. [20,21,22] | Parallel or series-parallel system | PM and inventory [20,21]; Opportunistic maintenance and inventory [22] | Simulation [20]; Particle swarm optimization [21]; Hierarchical optimization [22] | None |
Refs. [23,24,25,26] | k-out-of-n: F system [23,24]; Onshore Wind Farm [25]; Two-unit series system [26] | CBM and inventory | Markov decision process (MDP) and dynamic programming [23]; MDP and value iteration [24]; Clustering and simulation [25]; Semi-MDP [26] | None |
Ref. [27] | Use-oriented product service system | CBM and inventory | MDP and sequential heuristic solution | None |
This paper | Service system with two types of equipment | Corrective maintenance engineer allocation and inventory | Markov process imbedding and branch-and-bound method | Urgent demands given higher priority |
Rule | Common Trigger | Distinctive Condition | Transition | Rate |
---|---|---|---|---|
(1) | An urgent demand arrives | (1) Type-I equip. is available. | ||
(2) | (2) Demand waits in type-I queue due to the unavailability of type-I equip. | |||
(3) | A non-urgent demand arrives | (3) Type-II equip. is available. | ||
(4) | (4) Type-II and type-I equip. is unavailable and available, respectively. | |||
(5) | (5) Demand waits in type-I queue due to the unavailability of type-I and type-II equip. | |||
(6) | (6) Demand waits in type-II queue due to the unavailability of type-II equip. |
Rule | Common Trigger | Distinctive Condition | Transition | Rate |
---|---|---|---|---|
(7) | A piece of equip. fails | (7) A piece of type-I equip. fails. | ||
(8) | (8) A piece of type-II equip. fails. | |||
(9) | A piece of type-I equip. completes the service | (9) There is no waiting demand. | ||
(10) | (10) There exists at least one waiting urgent demand. | |||
(11) | (11) There is no waiting urgent demand but at least one waiting non-urgent demand. | |||
(12) | A piece of type-II equip. completes the service | (12) There is no waiting demand. | ||
(13) | (13) There exists at least one waiting non-urgent demand. |
Rule | Common Trigger | Distinctive Condition | Transition | Rate |
---|---|---|---|---|
(14) | A piece of type-I equip. is completely repaired | (14) There is no waiting demand. | ||
(15) | (15) There exists at least one waiting urgent demand. | |||
(16) | (16) There is no waiting urgent demand but at least one waiting non-urgent demand. | |||
(17) | A piece of type-II equip. is completely repaired | (17) There is no waiting demand. | ||
(18) | (18) There exists at least one waiting non-urgent demand. |
5 | 4 | 0.5 | 0.5 | 0.5 | 0.25 | 0.25 | 9 | 7 | 1.5 | 1 | 12 | 10 | 9 |
No. | Joint Optimization Policy | Reliability Indexes | ||||
---|---|---|---|---|---|---|
1 | 7 | 3 | 8 | 23.8372 | ||
2 | 1 | 3 | 8 | 24.4232 | ||
3 | 15 | 3 | 8 | 24.6996 | ||
4 | 7 | 1 | 8 | 22.9336 | ||
5 | 7 | 10 | 8 | 21.9344 | ||
6 | 7 | 3 | 1 | 18.0879 | ||
7 | 7 | 3 | 17 | 24.7137 |
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Wang, X.; Wang, J.; Ning, R.; Chen, X. Joint Optimization of Maintenance and Spare Parts Inventory Strategies for Emergency Engineering Equipment Considering Demand Priorities. Mathematics 2023, 11, 3688. https://doi.org/10.3390/math11173688
Wang X, Wang J, Ning R, Chen X. Joint Optimization of Maintenance and Spare Parts Inventory Strategies for Emergency Engineering Equipment Considering Demand Priorities. Mathematics. 2023; 11(17):3688. https://doi.org/10.3390/math11173688
Chicago/Turabian StyleWang, Xiaoyue, Jingxuan Wang, Ru Ning, and Xi Chen. 2023. "Joint Optimization of Maintenance and Spare Parts Inventory Strategies for Emergency Engineering Equipment Considering Demand Priorities" Mathematics 11, no. 17: 3688. https://doi.org/10.3390/math11173688
APA StyleWang, X., Wang, J., Ning, R., & Chen, X. (2023). Joint Optimization of Maintenance and Spare Parts Inventory Strategies for Emergency Engineering Equipment Considering Demand Priorities. Mathematics, 11(17), 3688. https://doi.org/10.3390/math11173688