1. Introduction
Data mining methods are tools that combine the techniques of artificial intelligence, statistical analysis, and computer science, namely, databases and graphic visualizations, in order to extract and obtain information that is not explicitly represented in the original data that can be more profitable and interesting. Indeed, the purpose of data mining is to extract the relevant information from a large amount of data and, thus, build models of information and knowledge based on fixed criteria. Additionally, to be able to detect standard profiles, recurring behaviors, rules, links, unknown trends (not fixed a priori), and particular structures concisely give the essence of the useful information to assist the decision [
1]. It is, therefore, a filtering process that extracts the relevant information from a large amount of information. According to MIT (Massachusetts Institute of Technology), this is one of 10 emerging technologies that will “change the world” in the 21st century.
Data Mining is based on two types of methods; Descriptive methods and Predictive methods. The descriptive approach (Patterns) [
2] highlights the information present but hidden by the volume of data. This type of method makes it possible to reduce and synthesize the data and does not require a variable to explain it. However, the predictive method (Modeling) aims to extrapolate new information from the present information (this is, the case of scoring) and, unlike descriptive methods, predictive methods require the explanation of the variables [
3].
In the presented industrial case, data mining methods are used as a tool that allows the production of added value by improving productivity, maximizing revenue, minimizing costs, and also ensuring the availability of the equipment based on algorithms and statistical and historical data. This enables real-time results to facilitate the interventions and control over time. Data Mining can also optimize quality and reduce the scrap by up to 30% [
4]. It ensures the sequencing of the maintenance activities with the support of information on the spare parts at the base of the history of the maintenance actions. In addition, the data mining also ensures the determination of the optimal supply of spare parts; in maintenance activities, the availability and good management of spare parts remain an indisputable need that varies according to the severity of the system maintained. In a maintenance intervention, it is often used to act on a set of spare parts, hence, the concept of dependence [
5]. Moreover, it is often found that in the case of lacking spare parts, the cost of storage of one or more other spare parts increases.
In the work of Moharana and Sarmah [
6], the authors proposed an approach to incorporate the dependence of the elements in the periodic review policy in order to determine the optimal stock of the dependent spare parts by considering the common cycle time and the filling rate of each spare part. At first, a dependency calculation was made for the associated spare parts from the consumption history. Next, the stock management policy was applied in a standard way.
In the last few years, companies have expressed concern on improving the dynamic globalized market where we have seen remarkable improvements in performance in the industrial sector. These changes are transversal to all of the company’s processes, which also affect its maintenance functions.
To reduce defects and keep the systems and equipment running, companies have incorporated tools into their Information and Communication Technology (ICT) systems. The benefits are evident in terms of the quality and cost savings, especially those related to the data processing time and the accuracy of the knowledge obtained. In their daily work, companies produce and store huge amounts of data of different natures, increasing the difficulty of the use and processing of the data in real time. In this context, given the relevance of the data collected in industrial facilities, we seek to propose a forecast model of predictive maintenance activities using data mining techniques by means of this topic. This data mining will identify the dependencies between the spare parts and then predict the occurrence of each maintenance sequence.
Manufacturers are still confronted with an immense downtime and have to bear additional costs for transporting spare parts [
7]. Consequently, there is a need to learn the maintenance activity sequences performed on the equipment and the way to approximately use the spare parts. This process will reduce the downtime activities by determining the occurrence of the next maintenance activity and the real need for related spare parts. A Sequential pattern mining technique (i.e., one of the data mining techniques) will be a better approach for deducing the sequences and predicting the number of spare parts to be used. The sequential pattern mining approach tracks the relationships or patterns among the data objects over the time periods that are reported in the database. The records of the daily maintenance activities are captured in the maintenance database of the company with timestamp information. The usual maintenance transaction has important attributes such as the maintenance number, the date of maintenance, the equipment number, the equipment sub-section number, the maintenance type, the spare parts used, the quantity of the spare parts, the cost of the spare parts, the labor cost, etc. Using this information, one can find out the relationship between the activities conducted relating to a particular day’s maintenance and the actions required to be performed for the next day’s maintenance period. Sometimes this process is also useful for unearthing the lowest time gap between the same maintenance activities due to faulty maintenance work done initially.
In this work, the sequential pattern mining algorithm [
8] is used on a maintenance dataset which is collected from a large maintenance database of a mining company. Initially, the frequent sequential patterns of the time interval are extracted by using the support or threshold values. Next, the sequential rules are generated from the frequent patterns and a proposed rule based on the classification approach is applied to predict the occurrence of the next maintenance activities. Finally, the spare part codes are mapped on to the discovered sequential maintenance activities.
The rest of the paper is organized as follows. In
Section 2, we summarize the research methods presented in the literature and the procedure for mining sequential patterns and discovering sequential rules. The proposed framework for mining sequential maintenance activities and spare parts mapping are described in
Section 3. In
Section 4, an industrial case study is presented to illustrate the performance of the proposed method. The results and analysis of the case study are also made in the same section. Finally, the conclusions and perspectives are provided in
Section 5.
2. Background
The frequent patterns present a considerable advantage for performing other data mining activity processes, e.g., clustering, association-rule mining, classification, etc. In the work by Agrawal et al. [
7,
8], one can find frequent items from a large database. Discovering itemset/frequent patterns is an important process for performing other data mining activity processes such as association rule mining, classification, prediction, clustering [
7,
8]. These approaches are called Apriori-like algorithms and pattern growth methods; the apriori-like algorithms follow a basic property like downward closing or anti-monotone, which means that any subset of the frequent itemsets is also frequent. This property is used to eliminate the non-frequent itemset with the given support or threshold support values. The presented approach assumes that all items are binary variables and considers whether they are consumed or not. Not many researchers have proposed an extension of the itemset mining, called itemset mining, with quantities that consider the consumption of the item along with the quantity [
9]. Other researchers have investigated the weighted itemset mining considering the occurrence of the item along with its weight or importance [
10].
In the work of Huang et al. [
11], the authors have introduced different algorithms that describe sequential pattern mining problems for determination of the frequent sequences of the items which should qualify a user-specified minimum support. Then, Bayardo and Agrawal [
12] proposed a novel methodology for ranking the association rules and introduced an algorithm for extracting the best rules using rule support and confidence from the large datasets. In Reference [
13], the authors developed a new algorithm called PrefixSpan where the global database is projected into a set of smaller (local) databases and sequential patterns that are constructed by exploring frequently occurring datasets of the local databases.
In the recent scientific research, the sequential pattern mining technique is extensively used by researchers in various directions, such as incremental sequence mining, biological sequence mining, multi-dimensional sequence pattern mining, and approximate sequence mining in noisy environments [
14]. For example, when a customer buys a computer, he/she is likely to buy a printer, and then a storage disk at a later point in time. For this retail information, managers can do suitable shelf replacements and promotional activities. Several works proposed different algorithms for mining sequential patterns from a large database. The problem of performance is the main issue for sequential pattern mining. Thus, over time, researchers have improved performance by adding some constraints to the mining process. There are many works which contribute to constrained sequential mining. In the work by Masseglia et al. [
15], the author used weight constraints to reduce the number of unimportant patterns. In addition, in Reference [
16], the authors proposed a mining model by incorporating user-defined constraints for discovering the knowledge that would satisfy the user’s needs in a better way. In Reference [
17], a Generalized Sequential Models (GSP) algorithm was used for discovering sequential patterns with time constraints. In addition, a new algorithm called the Graph Time Constraints (GTC) algorithm [
17] was proposed for mining patterns in large databases. In Reference [
18], a new methodology for extracting weighted sequential patterns by considering the time interval weight was developed.
Many research works have applied data mining techniques to achieve various objectives such as detecting faults, predicting failure probabilities, predicting maintenance intervals, prioritizing equipment, determining fault trends, identifying the cause of failures, etc. In Reference [
19], the author presented a text mining method by using the abstract and keywords of 150 research papers and revealed that only 8% of data mining studies cover the area of maintenance. In addition, Betanov et al. [
20] proposed a rule-based system for the maintenance management of diagnosing maintenance model selection. The model studied historical failure data and recommended an appropriate policy with optimal preventive maintenance intervals. The aircraft maintenance data are analyzed in Reference [
21], which discovered that the parameters link failures, diagnoses, and repair actions in order to enhance the maintenance practices. In Reference [
22], the authors suggested a neural-network-based prediction model for assessing the risk priority of medical equipment. Their model was capable of predicting the risk factor assessment for the service departments in large hospitals. From the above literature review, it is remarkable that the sequential pattern mining technique has not been applied by any researchers in the context of maintenance activities for the subsequent management of spare parts up to date. In this work, we have made an attempt to bridge this gap in the literature.
A sequence database consists of sequences of ordered elements or events recorded with or without time-stamped information. Let
be the set of all items and
be the sequence which can be written as
and represents the set of all events. For example, in this sequence,
is performed before
, and
after
. An event can be linked to one or more articles. In
Table 1 below, if
and
then
is called the super-sequence of
[
23]. Thus, it is noted that in a data sequence
which is a set of then-tuple
, where
is the sequence id and
s is the sequence, if
contains a sequence
α, then
α is a subsequence of
s. The support value of the
α sequence is given as follows:
.
To better understand this, we take the following example.
The supported value of some sequences is given in
Table 2 below.
From
Table 2, it is clear that the 8 sequential models (<(a)>, <(a,b)>, <(b)>, <(b,c)>, <(c)>, <(d)>, <(e)> and <(f)>) are generated from 17 possible models.
However, the above example is not taken into account because the timestamp information is important in order to identify the intervals between the events in the sequential crawl. For example, suppose a customer buys a computer today and, just after a month, the same customer visits a store to buy a printer. A model was proposed by considering the time constraints from the time-stretched sequences. An example is given here to illustrate the sequential process with a time interval (i.e., see
Table 3). The same sequence data are used, including the time-stamped information. The authors defined the following constraints for extended sequences in the mining time [
24]: Minsup: The minimum number of sequences that a sequential model must contain; MinInterval: the minimum allowed interval between two successive events; MaxInterval: the maximum allowed interval between two successive events; MinWholeInterval: the minimum interval allowed between the first event and the last event; MaxWholeInterval: intervalle maximal autorisé entre le premier événement et le dernier événement.
This work sheds a new light on in the literature with regards to the application of the sequential data mining technique for the prediction of the maintenance sequence and the management of spare parts and, thereby, this research contributes to the body of knowledge.
4. Concrete Industrial Example
In this example, the data were collected from a mining company in southern India. The company has implemented integrated materials management since 2004 by integrating indentation, supplier sourcing, purchasing, and warehousing (inventory). Thus, all the spare parts consumption information is stored in a central database. The company has three large mining units that use a variety of special mining equipment, such as 28-wheel bucket wheel excavators, 12-wheel belt conveyors, 16-wheel spreaders, and 9-car trippers. The company manages nearly 150,000 items, of which 105,217 are spare parts that are mainly consumed by the mines and power generation equipment.
In this study, the equipment belt conveyor and the proposed model are considered to be applied to seven different belt conveyor related maintenance activities which consume approximately 2643 spare parts at various mining sites. We collected the spare parts from the consumption history. Regarding the maintenance activities of the 1800 conveyors in Mine-I (
Table 5 below), the data show the seven maintenance activities and the few related spare parts used during the maintenance activities. We collected the maintenance data and spare part consumption data from April 2006 to February 2012. We used binary transaction data for the spare parts consumption. The number ‘1’indicatedthat the spare part is consumed and ‘0’indicatedthat the spare part was not consumed during the maintenance activity.
Table 6 shows the steps of our solving method.
Discussion of Results
We considered the seven maintenance activities of the mobile transport conveyor such as power section maintenance, loose fixings and noise reduction, idler maintenance, conveyor frame maintenance, belt maintenance, hydraulic system maintenance and bearing, and lubrication for our analysis. In
Table 6, the maintenance activities related to spare parts codes and descriptions are given.
For computational simplicity, we used 40% support values for demonstrating the rule-based classification approach. Sequences having a single maintenance activity are ignored from our model as they do not indicate the next maintenance activity information. This will only be used while computing the confidence value of the sequential association rules. In this analysis, we assumed that there are no occurrences of parallel maintenance activities performed for the conveyor belt. In our analysis, the symbol ‘--->’ indicates the sequence direction and the symbol ‘==>’ indicates the rule direction.
• Collection of maintenance data:
Using the GSP algorithm, 58 sequential models were generated with a 30% support threshold value and, likewise, 27 models were generated with 40% support threshold. The results are given in
Table 7.
One can remark that the sequences have the maximum support values as follows:
- -
For a combination of 2: M04M03
- -
For a combination of 3:
| Support | Average interval |
M06M03M02 | 48.29 | 1(0–1–2) |
M05M06M03 | 49.29 | 1.5(0–2–3) |
One can note that the second sequence has the maximum support value, however, the chosen sequence is M06M03M02 because of its lower average interval.
- -
Generation of sequential rules
Since the sequences are identified, one can calculate the following 4 measures: rule support, rule confidence, lift, and Chi-square measure. From these 4 measurements, one can deduce if the sequences are significant.
- -
Classification by rules of maintenance activities
After determining the rules, it was necessary to test them and calculate the coverage and accuracy rates. The results are as follows (i.e., see
Table 8).
- -
Generation of frequent spare parts groups
The last step is to link the set of spare parts groups for each type of maintenance based on the history. Then, for each group, we calculated its support value in order to choose the maximum value (see
Figure 1).
After the generation of the sequential rules for classification, we tested these rules with the test data of 225 maintenance transactions for validation. The results of the rule coverage and accuracy are given in
Table 8. It is observed that the rules showed accurate predictions with the test data. The next step of the model was to find out the frequent spare parts group for each maintenance activity separately. In
Table 9, we have shown the 350 records of spare parts consumption for Belt maintenance (
M03). The spare parts group is determined by using the procedure mentioned in
Section 3 and the result sare given in
Table 10 by considering a support value of 50%.
5. Conclusions and Perspectives
In this work, an attempt was made to suggest a list of sequential maintenance activities based on the historical records of maintenance data. Our sequential mining approach gave a better way of analyzing the sequences compared to the traditional statistical analyses used, particularly when the volume of the maintenance data is large. Generally, maintenance managers suggest maintenance activities on a rule of thumb basis or as derived from their experience and they physically control the equipment at regular intervals. The suggested method tries to avoid these manual efforts. Thus, one can generate a longer sequence which covers a higher number of maintenance activities based on the threshold value. Next, the frequent spare parts group is mapped to the maintenance activity of the generated sequence based on the threshold support values set by the decision-makers. If the managers want to cover a higher number of spares, they can reduce the threshold values. This helps the maintenance managers carry these spare parts directly to the maintenance location and the number of trips from the stores to the maintenance location will be reduced, thereby decreasing the transport costs. Finally, the proposed approach for suggesting maintenance activities is dynamic in nature as it is directly connected to the maintenance database. The generated sequential patterns may change periodically depending on the actual changes or personalizations to the maintenance activities.
The developed model analyses the past preventive maintenance records of a given piece of equipment and tries to determine the sequential activities of different maintenance activities, including the time stamp information. In addition, the timestamp information can be used to prioritize a maintenance activity that has been ignored in a particular piece of equipment. In future studies, one can try to weigh the time intervals to determine the sequences. Our model can be extended for analyzing the failure maintenance activities and to perform root cause analyses which can give suggestions that are more valuable to maintenance managers in order for them to take corrective actions prior to the next occurrence of a failure.