1. Introduction
In recent years, the security of spare parts has become a key challenge in the research on military equipment security. Spare parts provide a material basis for the effective implementation of equipment maintenance and activities of a ship. Therefore, the accurate estimation of spare parts demand is critical for ensuring the normal operation of ship equipment, enhancing the ship readiness rate, and improving the combat readiness level of the troops [
1].
To address this, several studies have developed methods for determining and forecasting spare parts requirements. Some researchers have employed historical data on spare part utilization to build forecasting models for spare parts demand, such as the exponential smoothing model, which is commonly used [
2,
3]. In 1972, Croston proposed Croston’s model based on the exponential smoothing model and demonstrated its superiority [
4]. Syntetos et al. [
5] and Teunter et al. [
6] found that Croston’s method was inadequate for some cases, resulting in high demand forecasts for spare parts. Subsequently, Syntetos modified Croston’s method and developed the Syntetos–Boylan approximation method (SBA). Amirkolaii [
7] utilized neural networks and the mean squared error metric in conjunction with the data from Dassault Aviation to forecast the demand for aircraft spares and showed that the demand forecasting accuracy exceeded those of Croston’s method and the exponential smoothing method. As the Markov process has the advantage of memorylessness and the ability to handle stochasticity and uncertainty in spare part demand based on a probabilistic framework, it has been widely used for demand forecasting of spares. Treharne et al. [
8] demonstrated that spare parts demand can be viewed as a Markov decision process and developed a demand model. Sun et al. [
9] focused on the optimal inspection/replacement Condition-Based Maintenance (CBM) strategy, employing the Markov decision framework to derive maintenance decisions that minimize maintenance costs. Using limited historical data on spare parts consumption, Cai et al. [
10] developed an improved gray Markov model by fusing the gray and Markov models and used it to forecast spare parts demand. The Markov method assumes that the failure interval time and repair time of spare parts obey the exponential distribution, which is typically inconsistent with the actual patterns of spare parts usage. Moreover, establishing the state transfer probability matrix with incomplete data proves a challenge [
11].
Due to the highly stochastic nature of spare parts demand, demand forecasting methods that consider historical data are typically inadequate. In the last two decades, the number of models for assessing spare parts demand based on safeguard indicator parameters of spare parts, such as reliability, repairability, safeguard probability, life, and failure rate, has significantly increased [
12]. These models typically use a safeguard indicator as a quantitative metric and estimate the spare parts demand for the desired level of the safeguard indicator by analyzing the relationship between spare parts and the safeguard indicator. Nouri et al. [
13] used a covariate-based reliability model to estimate spare parts demand using the reliability characteristics of the equipment. Their results showed that the covariates had a significant impact on the spare parts demand. Rodrigues and Yoneyyama [
14] optimized a spare parts allocation scheme based on the equipment health management data using acquisition cost as the optimization objective and the spare parts fill rate as the constraint. Wang et al. [
15] developed a spares allocation model with the single spares fill rate and system fill rate as the constraints and system utilization rate as the objective function. They used this model to determine the initial number of spares for torpedo base level and base level maintenance. Ma et al. [
16] investigated the spares problem with multi-product, multi-cycle, and multi-stage assemblies with on-demand requirements considering the cost structure of spares, assembly time, and other factors. Turrini et al. [
17] used the Kolmogorov–Smirnov fitting test and obtained the best-fit distribution of spares consumption based on industrial and air force spares consumption data to predict spares allocation. Liu et al. [
18] developed a spare parts demand prediction model for the k/n(G) system using an exponential distribution for the spare parts and determined the spare parts demand characteristics.
Due to the complexity of these mathematical models, it is difficult to solve them using analytical mathematical methods. Conventionally, researchers utilize simulation methods such as the Monte Carlo method. Pankaj et al. [
19] proposed a simulation method to model troop equipment failures using genetic algorithms (GAs) and predict spare parts requirements before and during the mission. Boutselis et al. [
20] generated safeguard base data via a simulation and predicted spare parts demand for different safeguard scenarios using a Bayesian network model. Bai et al. [
21] proposed a simulation-based spare parts consumption prediction model and compared the prediction results with those of other models. Their results demonstrated the effectiveness of predicting spare parts demand using simulation-based methods. Johannsmann et al. [
22] addressed the issue of optimizing the utilization of spare parts warehouse space by developing a two-stage stochastic programming model. They implemented a scenario-based approach in which failures are simulated using a Monte Carlo method, ultimately determining the optimal spare parts portfolio.
A review of the existing literature reveals that most of the existing techniques for forecasting spare parts requirements are based on a replacement–repair strategy. The replacement–repair strategy involves determining the type of spare parts based on the smallest replaceable unit of the equipment. When equipment failure occurs, the failed unit is first identified, and the failure is then rectified by replacing this unit. Larbi et al. [
23] proposed a methodology for numerically comparing three maintenance strategies: repair upon failure, replacement only at the first occurrence of failure, and replacement at every failure. They introduced a novel simulation algorithm to estimate the number of replacements, and ultimately demonstrated through empirical evidence that the third strategy is the most effective in reducing maintenance costs to a lower level. Li et al. [
24] developed optimization models for Scheduled Maintenance (SM) at the unit level and Condition-Based Maintenance (CBM). Based on these, they established an optimization model for a preventive opportunistic maintenance strategy under a hybrid unit-level maintenance policy, which was solved using an optimization algorithm based on Monte Carlo simulation. Su et al. [
25] simulated a joint preventive maintenance strategy combining Condition-Based Maintenance (CBM) and Time-Based Maintenance (TBM), introducing a novel approach termed Time-Incomplete Maintenance (TBIM) based on TBM and imperfect repairs. They further proposed a new joint preventive maintenance strategy integrating TBIM and CBM, ultimately demonstrating the superiority and effectiveness of the proposed maintenance methodology. Chen et al. [
26] considered the practical factors of maintenance costs under various maintenance strategies and proposed a new significant metric based on two types of maintenance costs. This metric includes a failure-triggered replacement strategy (replacing damaged components), a life-based component preventive replacement, and a strategy for replacing components that have been in use for a period of time, as well as a hybrid strategy combining the first two. They also provided methods for calculating the importance measures of series and parallel systems based on maintenance costs.
However, the demand for spare parts is not only influenced by the ship’s equipment lifespan and mission but also by the repair strategy when the equipment fails. Studies have shown that although the conventional replacement repair strategy of using the smallest replaceable unit as spare parts minimizes the repair time for faults, when the fault is difficult to locate, disassembling and assembling the components proves challenging. In addition, the equipment debugging requirements after replacement are higher, and the replacement repair may take 60 days or longer, which severely affects equipment availability and the onboarding rate of the ship. Therefore, the estimation of spare parts demand must consider the impact of the mission requirements, spare parts specifications, and maintenance methods of a ship [
27,
28].
Therefore, this paper addresses equipment failures that entail lengthy component replacement times by first proposing a maintenance strategy based on the rotation repair of whole parts of the ship. Under the condition of an exponential distribution, a model for evaluating the capability of spare parts support probability and fill rates is established. Utilizing Monte Carlo simulation algorithms, the strategy simulates commonly employed naval maintenance tactics, including failure-triggered replacement and Scheduled Maintenance (SM). It calculates the required quantity of spare parts under given capability evaluation indices and further analyzes the differences in spare parts demand and equipment availability compared to traditional component replacement strategies, thereby assessing the advantages and disadvantages of the proposed maintenance strategy.
The remaining parts of this paper are organized as follows:
Section 2 introduces the whole parts rotation repair strategy, including the definition of whole parts and the rotation repair process, as well as the maintenance strategy.
Section 3 establishes models for spare parts support probability and fulfillment rates based on two capability evaluation indices. In
Section 4, Monte Carlo methods are employed to generate failure information, simulating failure-triggered replacement and Scheduled Maintenance (SM) strategies using these models.
Section 5 validates the proposed methods with a case study and analyzes the results. Finally,
Section 6 summarizes the entire work and discusses potential future research directions.
2. Maintenance Strategy Based on Rotational Repair of Whole Parts
2.1. Definition of Whole Parts of the Entire Machine
The whole parts of a ship compose its functional equipment and are an important part of any ship. Typically, they include several parts and components in relatively independent modules. Common whole parts include the inertial platform, antenna base, and equipment chassis.
Determining the whole parts of a machine is based on the following two principles.
First, for maintenance projects that are difficult to carry out on-site and have a long maintenance cycle, it is appropriate to follow the composition of the equipment structure upwards to seek combinations that can be readily repaired and identify them as whole parts of the entire machine. For instance, when equipment failure occurs, it takes at least 30 days to replace a component and complete the parameter calibration, whereas it takes only 5 days to directly replace the combination of components that are a level above it. Therefore, this combination can be identified as a whole part of the machine corresponding to the failure.
Second, for maintenance projects with long fault localization times, it is appropriate to seek combinations that can be readily repaired in accordance with the composition and structure of the equipment and identify them as whole parts of the entire machine. For example, when equipment failure occurs, it takes about seven days to locate the failure on site, whereas it takes only one day to directly replace the corresponding component. In such a case, this component can be identified as a whole part of the machine corresponding to the failure.
2.2. Repair Process for the Rotation of Whole Parts of the Machine
As mentioned in
Section 2.1, the repair strategy for whole parts of a machine is designed for equipment failures that are time-consuming to repair using the conventional changeover repair strategy. The exchange repair process can be divided into the following three segments.
First, the typical faults of the equipment and its corresponding machine parts are identified, and these parts are stocked as spare parts in the warehouse.
Next, when this fault occurs, the corresponding machine parts are directly removed and replaced with the stocked machine parts to ensure a quick repair.
Finally, the replaced machine with faulty parts is sent for repair and then returned to the warehouse for storage until further use after the repair is complete.
2.3. Repair Strategy for the Whole Parts of the Machine
The maintenance strategies commonly used for ships include the following two strategies:
- (1)
Fault-Triggered Replacement: This strategy is inherently reactive, focusing on monitoring equipment until a failure occurs, at which point immediate action is taken. The central principle is to replace or repair a component solely upon its failure. Although this method minimizes downtime prior to actual failure, it may result in unexpected breakdowns. These breakdowns can be disruptive and expensive, particularly if they impact critical systems.
- (2)
Scheduled Maintenance: Also known as preventative maintenance, this approach involves systematic, planned maintenance activities executed according to a predefined schedule. These schedules are typically based on time intervals, usage cycles, or specific performance metrics. The objective of Scheduled Maintenance is to preempt failures by maintaining equipment in an optimal working condition. This strategy helps mitigate the unpredictability and potential severity associated with fault-triggered scenarios but may inadvertently lead to over-maintenance. Over-maintenance entails replacing parts more frequently than necessary, which can escalate costs.
This study evaluates these two prevalent maintenance strategies, weighing the pros and cons of each to formulate an optimized maintenance plan that maximizes both efficiency and reliability.
4. Spare Parts Requirement Algorithm Based on the Rotation Repair Strategy for Whole Components
In the demand model for whole component spare parts, two scenarios must be considered—first, the ship fails to perform spare parts replacement and repair during the mission, and second, the ship carries out regular repairs [
32]. The spare parts supply system is appropriately simplified. When a component failure occurs, if the component is stocked with spare parts for replacement, the faulty parts are immediately sent for repair, and the repair time is not tracked. If there are no spare parts, the equipment is shut down while waiting for the faulty parts to be repaired and returned before restarting the operation. This principle is depicted in
Figure 1.
The simulation principle for the whole spare parts demand of the ship is presented in
Figure 2.
To ensure the estimation accuracy of support probability
in the Monte Carlo simulation method, the number of simulations must be maximized. According to the central limit theorem, when the number of simulations
is large enough, the distribution of the simulation error
converges to a normal distribution with the parameters
. According to the characteristics of the normal distribution, the 95% probability range is within ±1.96 times the standard deviation from the mean, i.e.,
The relationship between the standard deviation
and the number of simulations
is
, where
is the overall standard deviation. Substituting this into Equation (14), the number of simulations
must satisfy
This accuracy requirement can be guaranteed. Most of the equipment in the ship are combined electromechanical systems, and the Chinese national standard stipulates that the value of
for electromechanical equipment is generally in the range of (0.5, 1.3) [
33]. If
, the range of
is
.
Equipment availability is the ratio of the time duration in which a particular piece of equipment can be used normally to the total time duration. It can be calculated based on its definition as [
34]
where
and
are the mean time between failures and the mean time to repair the equipment, respectively.
4.1. Equipment Failure Simulation
In the rotational repair strategy for whole parts of the entire machine, the ship fails to perform spare parts replacement and repair during the mission. This principle is depicted in
Figure 3. A simulation is performed according to the law of equipment failure to predict the consumption of spare parts.
The simulation method comprises the following steps.
Step 1: The parameters, mean time between failures MTBF, replacement repair time , and ship service life are specified.
Step 2: Fault moments
that obey the exponential distribution are generated. The fault moments
and the number of faults
are recorded. Next, the different distribution laws are simulated by changing the
. For exponential spares whose distribution function is expressed in Equation (8), simulated fault time random data are generated such that they obey the exponential distribution, as follows:
Here, and . The algorithm generates a random number in the range of . Substituting this into Equation (17) yields fault moment data that obey the exponential distribution.
Step 3: The current mission time is updated. If the current mission time is less than the service life of the ship , Step 2 is repeated; if not, the simulation ends.
This simulation algorithm is depicted in
Figure 4.
In the case of a base-level repair facility, spare parts are stocked to meet the requirements of multiple ships at the base. That is, the spares requirement for a whole component is the sum of the requirements for the component for multiple ships in the base.
4.2. Grade Repair Simulation
Class repairs currently utilize a regular repair model based on calendar time repair requirements. The regular repair model involves the following: first, the different types of ship repair are carried out according to predetermined repair intervals expressed in calendar time; second, the basic repair intervals and the probability of class repair are determined primarily based on the type of the ship. The existing ship repair categories are mainly divided into three categories—first-class, second-class, and third-class repair. A schematic of grade repair is shown in
Figure 5.
The following steps are involved in this process.
Step 1: The parameters, equipment class repair schedule , , and probability of repair requirements for Classes I, II, and III of the ship type are specified.
Step 2: If the equipment must be repaired at the instant , the number of failures and the repair time are recorded; if not, Step 3 begins.
Step 3: If the maximum number of level repairs has been reached, the simulation is terminated; if not, Step 2 is repeated.
This simulation algorithm is summarized in
Figure 6.
For a whole component, two statuses exist for level repair—needing repair and not needing repair. That is, for the part
, there are two states, namely
or
. If
, the component
does not need to be repaired; if
, the component
must be repaired. Therefore, the binomial distribution
can be used to represent the state of the whole part at the repair level. Assuming that the probability of demand for a major component at a certain level of repair moment is
, the probability distribution law of whether the component needs to be repaired at this level of repair moment is
Subsequently, the random number function is used to generate a random number such that the probability of generating 0 is and the probability of generating 1 is .
4.3. Statistics of Spare Parts Requirements
Obtaining the statistics of spare parts requirements involves the following steps.
Step 1: The parameters, number of spare parts , and total number of times a fault occurs that requires replacement are specified. For part , the moment of failure of the part and the time of the level repair are merged. Next, the list is sorted to form a new fault sequence list .
Step 2: The spare parts requirement based on the fault sequence list and the number of times a component fails and needs replacement are calculated.
Step 3: For each replacement, if there are available spare parts, the number of spare parts is reduced by 1 to indicate a replacement. Conversely, if there is no replaceable spare part, the spare part fulfillment fails. This algorithm is depicted in
Figure 7.
Step 4: If after traversing all the faults, the number of repairs must be changed, the simulation is terminated; if not, Step 2 is repeated.
When the interval between two failures of part
is greater than the equipment workshop repair time
, i.e.,
, the defective part exchanged in the last failure can be considered as repaired and used as a spare part, as shown in
Figure 8.
These steps are repeated
times, and the number of times the spare parts requirement is less than or equal to the number of spare parts
is counted. The number of instances of successful fulfillment for each time
and the total number of failures requiring replacement
are then calculated. According to the law of large numbers, for a sufficiently large number of trials, the spare parts support probability can be expressed as
The spare parts fill rate can be expressed as
The equipment availability can be expressed as
The pseudo code for the key part of the simulation algorithm is found in
Appendix B.
6. Qualitative Analysis of Maintenance Strategy Costs
The cost differences between whole part replacement and normal repair can be analyzed from several perspectives:
Whole part Replacement: Requires the procurement of entire components or assemblies, which typically incurs higher costs as purchasing complete units is often more expensive than buying individual parts.
Normal Repair: Usually only requires the replacement of faulty parts, resulting in lower procurement costs.
- 2.
Inventory Costs:
Whole part Replacement: Necessitates a larger inventory of whole parts, leading to higher inventory costs, including storage fees and potential obsolescence.
Normal Repair: Involves a diverse range of parts with smaller quantities per part, potentially resulting in lower overall inventory costs.
- 3.
Repair Time and Labor Costs:
Whole part Replacement: Offers faster replacement times with lower labor costs, reducing equipment downtime.
Normal Repair: May require longer repair times with higher labor costs, resulting in extended equipment downtime.
- 4.
Equipment Downtime Costs:
Whole part Replacement: Due to quicker repair times, downtime is minimized, thereby reducing production losses or service interruptions.
Normal Repair: ** Longer downtime can lead to higher production or service interruption costs.
- 5.
Skills and Training Costs:
Whole part Replacement: Requires relatively lower skill levels, leading to reduced training costs.
Normal Repair: Demands higher technical skills, resulting in higher training costs for specialized expertise.
- 6.
Long-Term Economic Benefits:
Whole part Replacement: Although it may increase costs in the short term, it can potentially reduce overall operational costs in the long term by minimizing downtime and enhancing equipment availability.
7. Discussion and Conclusions
7.1. Discussion
This study presents a comprehensive analysis of the maintenance strategy based on the rotational repair of whole parts for shipboard equipment. Through the application of Monte Carlo simulations and a systematic evaluation of spare parts requirements, the research provides valuable insights into the operational readiness and maintenance efficiency of naval vessels.
The findings indicate that the whole parts replacement strategy significantly influences the demand for spare parts. This strategy, compared to traditional repair methods, not only expedites the repair process but also leads to a moderate increase in the number of spare parts required. This increase is justified by the enhanced equipment availability and reduced downtime, which are critical for maintaining operational readiness.
- 2.
Simulation Accuracy and Practical Implications:
The Monte Carlo simulation method employed in this study demonstrates high accuracy in predicting spare parts demand and equipment availability. This method’s effectiveness is particularly evident in scenarios where traditional forecasting models fall short due to the stochastic nature of equipment failures. The practical application of these findings can lead to more informed decision-making in inventory management and maintenance planning.
- 3.
Equipment Availability and Operational Readiness:
The research underscores the importance of equipment availability in determining the operational readiness of ships. The whole parts replacement strategy, despite requiring a higher initial investment in spare parts, results in superior availability rates. This outcome is crucial for military and commercial fleets where downtime can have significant operational and financial implications.
- 4.
Economic Considerations:
While the whole parts replacement strategy may incur higher procurement and inventory costs initially, the long-term economic benefits in terms of reduced downtime and maintenance costs are substantial. This strategy aligns with the shift towards proactive maintenance practices that prioritize system reliability and longevity over immediate cost savings.
7.2. Conclusions
The study concludes that the whole parts replacement strategy is superior in enhancing equipment availability and reducing downtime compared to traditional repair methods. This strategy aligns with modern maintenance practices that focus on system efficiency and operational readiness.
- 2.
Validation of Simulation Methodology:
The Monte Carlo simulation methodology used in this research proves to be a reliable tool for predicting spare parts demand and evaluating maintenance strategies. Its accuracy and flexibility in handling stochastic variables make it a valuable asset in maintenance planning and resource allocation.
- 3.
Economic Benefits of Proactive Maintenance:
The economic analysis suggests that despite the higher upfront costs associated with the whole parts replacement strategy, the long-term benefits in terms of operational efficiency and reduced maintenance overheads justify its implementation. This conclusion supports the adoption of proactive maintenance strategies that prioritize long-term system health over immediate cost considerations.
- 4.
Recommendations for Future Research:
Future research should explore the integration of advanced predictive analytics and machine learning algorithms to further refine spare parts demand forecasting. Additionally, studies on the environmental impact and lifecycle costs associated with different maintenance strategies could provide a more comprehensive evaluation framework for maintenance decision-making.
In conclusion, this research presents a robust analytical framework for evaluating maintenance strategies and spare parts management in naval applications. The findings advocate for a shift towards more proactive and system-oriented maintenance practices that enhance operational readiness and long-term economic viability.