1. Introduction
In recent years, the issue of risk assessment and management in mine enterprises has attracted global attention, bringing serious safety challenges to the development of the mining industry. To avoid these challenges, mine enterprises must take precautions related to accidents as well as maintain the highest safety standards for all concerned [
1,
2,
3]. In addition, mine accidents have various causes and consequences, but the main concern is the casualties [
4]. At present, the overall technical level of safety production in metal and non-metal mines in China has made great progress, but the issue of safety production is still under great pressure, and the incidence of mine safety risks accidents remains high compared to other industries [
5]. This is because in an OP-UG mine, there are always a variety of hazards (e.g., mine geological condition, floods, mechanical, transportation, landslide, electrical hazards, etc.).
According to relevant information, about 90% of China’s open pit iron ore mines have been converted to deep concave open pit mining, and many deep concave open pit mines are being or have been converted to deep underground mining. During the production stage of the mine, it is widely known that the conversion of a mine from open pit to underground mining usually goes through three stages: a single open pit (OP) mining period, an open pit and underground (OP-UG) synergistic period, and a single underground (UG) mining period. Before the operation of an open pit mine extends to underground mining, mine safety risks are usually accommodated in the above-mentioned three stages of the mine transition period, such as: (i) safety risks in an open pit (OP) mine; (ii) risks encountered during interaction between the open pit–underground (OP-UG) mine; and finally, (iii) risks in the underground (UG) mine. Generally, the existence of risks in a mine may result in a reduction in production as well as leading to major production hazards, damage to the natural environment (e.g., soil, air, and soil pollution, subsidence, noise, etc.), and various social disputes [
6,
7], which seriously affect the smooth operation of mining enterprises. In the current era, the systematic implementation of a risk management approach has contributed to a significant decrease in the frequency of fatalities and injuries in China mines. In the past, safety management was mainly to identify hazards and formulate safety management measures for a single phase of open pit and underground mining separately but not from the perspective of the whole combination of risk assessment of two sites. For this purpose, there is a lack of safety understanding between safety risk identification and safety countermeasures for each phase of open pit to underground operation, which makes it very easy to have problems such as insufficient safety awareness of operators, lack of management measures and high risks. To avoid any further escalation of risks, various accidents should be investigated, and in most circumstances, sufficient information should be collected to prevent accidents prior to occurring [
8].
Because of the enormous economic and psychological burdens of risk taking on various industrial projects, the case of risk assessment and management has received increasing attention in China and globally. Mine enterprises must conduct risk assessments in relation to certain high risks and hazards associated with slope, highwall instability and poor management as well as abide by the regulations issued and as required by the environmental protection agencies, etc. [
9,
10]. In order to keep valid safety records in mine enterprises, there are several evaluation methods needed to evaluate and analyze the safety risks. Currently, the most commonly used methods of safety evaluation include analytic hierarchy process (AHP) and risk index evaluation, among others. The AHP is one of the ways for deciding among the complex criteria structure in different levels [
11]. Despite the flexibility of AHP in combining both the quantitative and qualitative methods to imitate multi-criteria decision-making problems, the existence of fuzziness and vagueness in many decision-making problems may result in the imprecise judgements of the decision making in conventional AHP approaches [
12,
13]. When the fuzziness of the decision makers is taken into consideration, the traditional AHP method is extended in a synthesized manner to create the fuzzy-AHP. One way to look at the fuzzy-AHP technique is as a more advanced analytical method that was created from the classical AHP approach. Several methods have been established to handle the fuzzy-AHP: Van Laarhoven and Pedrycz proposed the first study of the F-AHP method for comparing fuzzy ratios described by triangular fuzzy numbers [
14]. In various related works, Tuzkaya et al. utilized a hybrid fuzzy-analytic network process and fuzzy-preference ranking organization method for the evaluation of the environmental performances of suppliers [
15,
16]. Significantly, there are numerous risk assessment techniques available, each of which may play a great role in a particular circumstance. So far, there is no single risk assessment method which proved the best for assessing safety risks in a combined OP-UG mine or any other particular situation. Therefore, the overall mine management, mine safety production management, and engineers should consider the special conditions of the mines and select the most appropriate techniques to ensure that a comprehensive risk assessment is carried out.
Several contributions have been made about risk assessment and the management of mining enterprises such as studies outlined by Tesfamariam et al. who proposed risk-based environment decision-making using (F-AHP) [
17]. Gul et al. examined the occupational hazards in an underground copper and zinc mine. Their findings indicate that fuzzy approach solutions can be used to classify hazards at various levels [
18]. Skhno et al. analyzed the available approaches which are used to determine risks of injuries of miners and established a new method for assessing risks of roof fall [
19]. Kiani et al. assessed the risks of blasting in open pit mines using the FAHP method [
20].Tripathy et al. investigated the safety hazards in India’s underground coal mines. They established a database that can help to better manage decisions to identify the most important hazards [
21]. Leger analyzed the principle causes of occupational fatalities and disasters in the South African mining industry. His findings indicate that a miner who spent twenty years working underground would face a one in thirty chance of dying in an occupational accident, and the most important cause of fatalities was falls of ground [
22]. You et al. analyzed the comprehensive classification reservoir’s producing conditions during the ultra-high water cut construction phase based on a multilevel FCE evaluation mathematics method for solving the problem of analyzing remaining oil in different kinds of reservoirs [
23]. These studies do not adopt the analyzed AHP-FCE method in their risk evaluation analyses, and consequently, they face some flaws such as subjectivity in determining the weight vector of the evaluation criteria, rigid cutting of the membership degree of the risk evaluation grade, etc. Currently, the use of fuzzy sets is more considered and favored because of the simplification of the decision-making procedures and the fuzzy nature of pairwise comparisons that has led to reduction in decision uncertainty [
24]. However, it is essential to analyze this method further in order to adapt the comprehensive evaluation of safety risks with a diverse evaluation judgment grading set. In comparison with risks in various sectors [
25,
26,
27,
28], this work provides an evaluation approach based on an analyzed AHP-FCE methodology to support the construction of the systematic risk control and evaluation process during the transition or operation of an OP-UG mine and to alleviate the concerns mentioned above. With this approach, the assessment matrix in accordance with the risk can be calculated to determine the risk degree, allowing the risk to be graded and the evaluation accuracy to be achieved. The main objective of this study is to analyze the safety information data of the Panzhihua OP-UG iron ore mine and to identify the main safety risk factors influencing the typology of accidents, which are mostly associated with potential hazards, by considering the application of analyzed AHP-FCE in evaluating them. At the same time, we also intend to propose new control measures. Hence, the evaluation steps and findings presented in this work can be incorporated and applied beyond the field of mining to address the situational concerns.
4. Determining of Weight Vector by AHP
Considering the complex formation of the Panzhihua OP-UG iron mine, the analytic hierarchy process is applied to determine the weight of safety risk factors according to the following process. Firstly, the fuzzy comprehensive evaluation analysis diagram for the mine safety risks evaluation index system is constructed and can be divided into three layers: the target layer, criterion layer (first-layer indexes) and sub-criterion layer (second-layer indexes) (see
Figure 3). Secondly, the judgment matrix of the first-level indices (B1~B6) is obtained according to the 1–9 scale defined in
Table 1. Thirdly, the eigenvalues and eigenvectors of each judgment matrix are determined based on the fuzzy analytic process (F-AHP) method. Then, the weighted sum values of the first-layer indicators (
Bi) and second-layer indicators (
Cij) in the evaluation index system are calculated. Based on the calculation, the weighted values of first-level layer indicators with respect to the target layer (
A) are obtained. The results are then compared and analyzed to achieve the ranking criteria.. Finally, by using the combination of fuzzy comprehensive index evaluation and project risk assessment, the risk evaluation score of the Panzhihua OP-UG iron mine is determined to obtain the overall risk level of the mine; hence, its safety status is judged based on the risk ranking order.
By taking into account the relative importance values assigned to each risk indicator, a comprehensive summary of the scores generated from specific experts for the establishment of a pairwise comparison matrix for various risk criteria is presented (see
Table 2). To avoid redundancy, only the comprehensive pairwise comparison matrix and all steps of the AHP-FCE analysis approach for the “geological factor” as the main sample are presented. The assessment results for other factors are presented in the form of final weights of the parameters to support the safety risk control decision-making process. The weights of the criteria and options in the paired comparison matrix for all criteria are calculated separately.
4.1. Safety Risk Evaluation Index System of Panzhihua OP-UG Iron Mine
In order to achieve the general target of risk control desire in mines, special efforts must be put in place to meet the required risk management objectives. The mine safety evaluation index system established in this research is explained based on the following terms [
29].
(1) Goal-layer index. This is the top layer of the overall mission, which is presented as the risk assessment and management of OP-UG iron ore mine A.
(2) First-layer indexes. These are the major risk-level factors for safety evaluation; they include geological condition B1, mechanical and equipment factor B2, mine personnel risk factor B3, mine face operation factor B4, management factor B5, and environmental factor B6. Each of these factors is categorized into sub-criteria depending on the occurrence of risks.
(3) Second-layer indexes. The classification of these indexes can simplify the process for authorities in charge to identify all potential risks and prioritize them accordingly for the establishment of appropriate control or mitigation strategies. These levels of indexes are established as a result of further breakdown of first-layer indexes as shown in
Figure 3 [
9,
40,
41].
4.2. Establishment of the Corresponding Judgment Matrix
The corresponding judgement matrix is termed as the relative importance of the relevant components in the hierarchy. Assuming that elements in the
B layer are related to element
Cij in the next layer (
C layer), then the weight values in each layer can be obtained accordingly [
42].
Based on the site operation hazards investigation and safety status of the mine, the geological condition factor was selected as the mine guideline layer, while the thirty sub-risk factors were presented as the scheme layer defending on their complexity and control strategies. Apparently, the corresponding judgment matrix
D is established.
where
n indicates the number of risk factors, and
D1k = 1
/Di,
i = 1,
n;
k = 1, …,
n. Kij shows the
decision maker’s choice of the
ith element over the
jth element.
For the modification of the corresponding judgment matrix, the following matrix is considered:
Although the root, sum, and power methods are commonly applied to determine the maximum eigenvalue max and eigenvector W in various fields, other approaches may also be used depending on the project risk safety system status and risk control measures. In this scenario, the greatest indexes weight vectors for the Panzhihua OP-UG iron mine are determined using the sum method. The weight calculation procedure is based on the following steps 1–5.
Step 1: Calculate the sum of elements of each column of the judgment matrix:
Step 2: Normalize each column of the judgment matrix
D independently:
Step 3: Determine the average weight of each row of the judgment matrix
:
Hence, the eigenvectors
can be expressed as follows:
The W = [W1, W2, …Wn]T represents the feature vector weights as well as the overall criteria weights of each risk factor of the Panzhihua OP-UG iron mine that need to be determined.
Step 4: Calculate the largest eigenvalues
max of the judgment matrix through the following formula:
In the formula, max is the maximum eigenvalue, D is the prioritized judgment matrix, DW is the ith component of the vector matrix and Wi is the corresponding eigenvector. When the prioritized judgment matrix D = [dij]n×n, the elements in the “ith” row and “jth” column represent dij, i.e., 1 ≤ i ≤ n, 1 ≤ j ≤ n.
Step 5: Testing the consistency index of the judgment:
To determine the difference between the maximum eigenvalue and the matrix dimension, the average value is taken as an index for measuring the consistency of the judgment matrix and is expressed according to the equation below:
where
CI denotes the consistency index, and
n denotes the matrix dimension.
To affirm the randomness and consistency of the judgment matrix, and to approve whether the eigenvectors are acceptable, the empirical formula of the test is defined as:
Accordingly,
CR is the random consistency ratio of the corresponding judgment matrix;
CI is the consistency of the corresponding judgement matrix and
RI is the average random consistency index of the corresponding judgement matrix and is determined in
Table 3.
When the value of consistency ratio CR < 0.1, the judgment result is considered satisfactory and the decision to proceed with the next step can be executed. Otherwise, there is a need to revise or re-adjust the judgment matrix until necessary requirements are fulfilled.
By using Equation (8)
, the relative weights of each risk factor are computed, and the ranking weight value of the second-level indicators layer pertinent to the objective layer (
A) is determined as shown in
Table 4.
Accordingly, Dcij is the obtained weighted value of second-level indications Cij, which are subordinate to the first-level indicators Bi, DBi is the weight value computed for the first-level indicators Bi subordinate to the target layer A, and indicates the layer with the lowest total row ranking weighted value.
Regarding the above
Table 4, the overall mine safety risks ranking weight value of the lowest row indicators are analyzed based on the following equations:
5. Application of the Analyzed AHP-FCE Method and Procedures for Establishment of Safety Risk Evaluation Parameters
This study proposes an analyzed approach for the comprehensive evaluation of problems with diverse evaluation judgment sets for a combined OP-UG mine safety risk grading. By using the FCE method, the examination of the heterogeneous comment sets in the questionnaire assessment is provided. More importantly, the overall evaluation concepts of FCE discussed in this section mainly comprise three sets: factor set, evaluation set and weight set, respectively. The specific steps of the comprehensive evaluation for the safety risk assessment of Panzhihua OP-UG iron mine are as follows:
Firstly, the main goal to evaluate the safe production of the Panzhihua OP-UG iron mine uses the overall safety level, which is a set of risk factors consisting of all second-level indicators C = (C11, C12, …, C66) is defined.
Secondly, we determine the factor set. The factor set is a collection of indicators that influence the evaluation results of safety risks in a productive manner, which is defined as U = (U1, U2, …, Un). In order to make evaluation more efficient, the rating of risk indicators is illustrated using four grades of evaluation set, i.e., low, medium, high, very high risk, which are denoted as V = (V1, V2, …, Vn). Hence, the evaluation result sets are expressed as: V1 = low risk, V2 = medium risk, V3 = high risk, and V4 = very high risk.
Thirdly, we construct a fuzzy comprehensive evaluation matrix. The evaluation compilation of the ith factor D = [Dij]n×n, is referred to as the single factor evaluation or membership degree, and it is signified by the symbol Rcij = (RC1, RC2, RC3, RC4, RC5, RC6). During this step, the first layer-indicators in fuzzy composite judgement matrices corresponding with risk elements in Bi are obtained. Then, the accuracy of the result is correlated with the number of the members that participated in risk evaluation. Thus, the simplified single factor evaluation vector combination to form a matrix, called the evaluation matrix R, is denoted as Rci = [RCi1, RCi2…Rcij]T.
Fourthly, we perform fuzzy evaluation of first-layer risk elements using the synthesis judgment operator. It is in this phase that the weighted product of risk elements in respect to goal level and single-factor vector evaluation matrix are analyzed to form what is referred to as the fuzzy synthetic operation
Y, which is calculated based on the formula below:
In the formula, Yci denotes the synthetic operator, Wci is the criteria weight of risk factors, and Rci is the fuzzy evaluation vector. Specifically, the six main sources of safety risk factors in the first layer are calculated to achieve (YC1, YC2, YC3, YC4, YC5, YC6). Through these operational procedures, the second-layer risk index is established and can be defined as Y = [YC1, YC2, YC3, YC4, YC5, Yc6]T.
Fifth, we determine the safety evaluation system. In order to fulfill the standard requirement of rating the safe operation of the mine, a system is established, which is called the safety evaluation system
Z. The system is determined by performing fuzzy synthetic calculations on the existence of risks in set
Y and weights of risks factors
WB in the first-layer indexes. The calculation process can be defined as:
As a result, the final comprehensive evaluation risk score
F for the mine can be obtained by fuzzy transformation of evaluation matrix
R, safety evaluation system
Z and weight vector
M, which is calculated by the following equation:
where
M indicates the weighted degree value corresponding to risk assessment level. The evaluation of the safety status and risk level of the mine is shown in
Table 5.
5.1. Weights Calculation for Each Layer of the Safety Risk Index System
Considering the safety characteristics of the mine, safety data analysis and expert’s opinions during the assessment, the 1~9 Saaty judgement values presented in
Table 1 are considered. The
A~
Bi hierarchy judgement matrix of the first and second-level layer is obtained. All of the experts’ opinions were taken into consideration as an example to obtain the parameters. Judgement values of the experts are used as an example to illustrate the calculation process.
On the basis of the survey’s statistical data, the weights of both first and second-level risk indicators are calculated using the MATLAB, Analytica and SPSSPRO software, and the calculations are according to Equations (1)–(11), respectively. The weights results are shown in
Table 6,
Table 7,
Table 8,
Table 9,
Table 10,
Table 11 and
Table 12.
Table 6.
The judgment matrix and indices weight of Bi with respect to goal layer A.
Table 6.
The judgment matrix and indices weight of Bi with respect to goal layer A.
A–Bi | B1 | B2 | B3 | B4 | B5 | B6 | Weights |
---|
B1 | 1 | 3 | 2 | 3 | 3 | 2 | 0.3158 |
B2 | 1/3 | 1 | 1/2 | 1/2 | 2 | 3 | 0.1289 |
B3 | 1/2 | 2 | 1 | 3 | 3 | 2 | 0.2343 |
B4 | 1/3 | 2 | 1/3 | 1 | 4 | 3 | 0.1704 |
B5 | 1/3 | 1/2 | 1/3 | 1/4 | 1 | 1 | 0.0710 |
B6 | 1/2 | 1/3 | 1/2 | 1/3 | 1 | 1 | 0.0796 |
max = 6.4803 | | CI = 0.961 | | RI = 1.25 | | CR = 0.0769 < 0.10 | Acceptable |
WB = (0.3158B1, 0.1289B2, 0.2343B3, 0.1704B4, 0.0710B5, 0.0796B6). These are the weights of the six first-level indicators Bi with respect to the goal layer A.
Table 7.
The judgment matrix and indices weight of C1j to B1.
Table 7.
The judgment matrix and indices weight of C1j to B1.
C1j–B1 | C11 | C12 | C13 | C14 | C15 | Weights |
---|
C11 | 1 | 1/2 | 1/2 | 4 | 2 | 0.2126 |
C12 | 2 | 1 | 1/2 | 3 | 1 | 0.3043 |
C13 | 2 | 1/3 | 1 | 2 | 1 | 0.2126 |
C14 | 1/4 | 2 | 1/2 | 1 | 1/2 | 0.0853 |
C15 | 1/2 | 1 | 1 | 2 | 1 | 0.1851 |
max1 = 5.3284 | | CI1 = 0.0821 | | RI1 = 1.11 | CR1 = 0.074 < 0.1 | Acceptable |
WC1 = (0.2126C11, 0.3043C12, 0.2126C13, 0.0853C14, 0.1851C15). These are the weights of the five risk indicators C1j of the second-level layer with respect to the B1 risk factor.
Table 8.
The judgment matrix and indices weight of C2j to B2.
Table 8.
The judgment matrix and indices weight of C2j to B2.
C2j–B2 | C21 | C22 | C23 | C24 | C25 | Weights |
---|
C21 | 1 | 1 | 1/7 | 1/4 | 1/3 | 0.0632 |
C22 | 1 | 1 | 1/5 | 1/3 | 1/3 | 0.0716 |
C23 | 7 | 5 | 1 | 3 | 2 | 0.4468 |
C24 | 4 | 3 | 1/3 | 1 | 3 | 0.2521 |
C25 | 3 | 3 | 1/2 | 1/3 | 1 | 0.1663 |
max2 = 5.2095 | | CI2 = 0.0524 | | RI2 = 1.11 | CR2 = 0.0472 < 0.1 | Acceptable |
WC2 = (0.0632C21, 0.0716C22, 0.4468C23, 0.2521C24, 0.1663C25). These are the weights of the five risk indicators C2j of the second-level layer with respect to the B2 risk factor.
Table 9.
The judgment matrix and indices weight of C3j to B3.
Table 9.
The judgment matrix and indices weight of C3j to B3.
C3j–B3 | C31 | C32 | C33 | C34 | Weights |
---|
C31 | 1 | 3 | 1/3 | 2 | 0.2175 |
C32 | 1/2 | 1 | 1/4 | 3 | 0.1584 |
C33 | 3 | 4 | 1 | 4 | 0.5327 |
C34 | 1/2 | 1/3 | 1/4 | 1 | 0.0914 |
max3 = 4.1752 | | CI3 = 0.0584 | | RI3 = 0.882 | CR3 = 0.0662 < 0.1 | Acceptable |
WC3 = (0.2175C31, 0.1584C32, 0.5327C33, 0.0914C34). These are the weights of the four risk indicators C3j of the second-level layer with respect to the B3 risk factor.
Table 10.
The judgment matrix and indices weight of C4j to B4.
Table 10.
The judgment matrix and indices weight of C4j to B4.
C4j–C4 | C41 | C42 | C43 | C44 | C45 | C46 | C47 | Weights |
---|
C41 | 1 | 3 | 4 | 4 | 3 | 6 | 2 | 0.3280 |
C42 | 1/3 | 1 | 4 | 4 | 1 | 5 | 3 | 0.2114 |
C43 | 1/4 | 1/4 | 1 | 1/4 | 1/5 | 2 | 1/5 | 0.0435 |
C44 | 1/4 | 1/4 | 4 | 1 | 1 | 3 | 3 | 0.1270 |
C45 | 1/3 | 1 | 5 | 1 | 1 | 2 | 3 | 0.1571 |
C46 | 1/6 | 1/5 | 1/2 | 1/3 | 1/2 | 1 | 1/2 | 0.0442 |
C47 | 1/2 | 1/3 | 5 | 1/3 | 1/3 | 2 | 1 | 0.0889 |
max4 = 7.7863 | | CI4 = 0.131 | | RI4 = 1.341 | | CR4 = 0.0977 < 0.10 | | Acceptable |
WC4 = (0.3280C41, 0.2114C42, 0.0435C43, 0.1270C44, 0.1571C45, 0.0442C46, 0.0889C47). These are the weights of the seven risk indicators C4j of the second-level layer with respect to the B4 risk factor.
Table 11.
The judgment matrix and indices weight of C5j to B5.
Table 11.
The judgment matrix and indices weight of C5j to B5.
C5j–B5 | C51 | C52 | C53 | C54 | C55 | Weights |
---|
C51 | 1 | 3 | 1/2 | 3 | 1 | 0.2163 |
C52 | 1/3 | 1 | 1/4 | 1/2 | 1/3 | 0.0681 |
C53 | 2 | 4 | 1 | 5 | 3 | 0.4171 |
C54 | 1/3 | 2 | 1/5 | 1 | 1/5 | 0.0776 |
C55 | 1 | 3 | 1/3 | 5 | 1 | 0.2209 |
max5 = 5.2174 | | CI5 = 0.0543 | | RI5 = 1.11 | CR5 = 0.0490 < 0.1 | acceptable |
WC5 = (0.2163C51, 0.0681C52, 0.4171C53, 0.0776C54, 0.2209C55). These are the weights of the five risk indicators C5j of the second-level layer with respect to the B2 risk factor.
Table 12.
The judgment matrix and indices weight of C6j to B6.
Table 12.
The judgment matrix and indices weight of C6j to B6.
C6j–B6 | C61 | C62 | C63 | C64 | Weights |
---|
C61 | 1 | 2 | 3 | 2 | 0.4133 |
C62 | 1/2 | 1 | 1/3 | 1/3 | 0.1078 |
C63 | 1/3 | 3 | 1 | 1/2 | 0.1867 |
C64 | 1/2 | 3 | 2 | 1 | 0.2922 |
max6 = 4.2606 | | CI6 = 0.0869 | | RI6 = 0.882 | CR6 = 0.0985 < 0.1 | Acceptable |
WC6 = (0.4133C61, 0.1078C62, 0.1867C33, 0.2922C34). These are the weights of the four risk indicators C6j of the second-level layer with respect to the B6 risk factor.
The data provided in the tables above passed the evaluation requirement. Therefore, the estimated results are reliable and acceptable.
5.2. Hierarchical Overall Ranking of Safety Risk Index Levels
Based on the synthesized weights of the risk indexes presented in
Table 6,
Table 7,
Table 8,
Table 9,
Table 10,
Table 11 and
Table 12, Equation (8) is adopted to determine the ranking of weights of each risk indicator in the second-level layer. Equations (9)–(11) are applied to check the flexibility of the results. The specific evaluation index weights are obtained by the analytic hierarchy process, as indicated in
Table 13.
The above results are obtained through the calculation process illustrated below:
Similarly, the RITotal values are obtained through the same calculation process.
It can clearly be seen that the
CRTotal = (0.011) is less than 0.1. Thus, the overall ranking weights are credible, and the risk control measures can be decided by the experts based on the ranking criteria of the risk factors. The hierarchical comparison of indicators weight for the
C layer relative to the
A layer are shown in
Figure 4.
Table 13.
The overall evaluation index weight values of C indicators.
Table 13.
The overall evaluation index weight values of C indicators.
| B | B1 | B2 | B3 | B4 | B5 | B6 | Overall Weights |
---|
C | | 0.3158 | 0.1289 | 0.2343 | 0.1704 | 0.0710 | 0.0796 |
---|
C11 | 0.2126 | 0 | 0 | 0 | 0 | 0 | 0.0671 |
C12 | 0.3043 | 0 | 0 | 0 | 0 | 0 | 0.0961 |
C13 | 0.2126 | 0 | 0 | 0 | 0 | 0 | 0.0671 |
C14 | 0.0853 | 0 | 0 | 0 | 0 | 0 | 0.0269 |
C15 | 0.1851 | 0 | 0 | 0 | 0 | 0 | 0.0584 |
C21 | 0 | 0.0632 | 0 | 0 | 0 | 0 | 0.0081 |
C22 | 0 | 0.0716 | 0 | 0 | 0 | 0 | 0.0092 |
C23 | 0 | 0.4468 | 0 | 0 | 0 | 0 | 0.0576 |
C24 | 0 | 0.2521 | 0 | 0 | 0 | 0 | 0.0325 |
C25 | 0 | 0.1663 | 0 | 0 | 0 | 0 | 0.0214 |
C31 | 0 | 0 | 0.2175 | 0 | 0 | 0 | 0.0509 |
C32 | 0 | 0 | 0.1584 | 0 | 0 | 0 | 0.0371 |
C33 | 0 | 0 | 0.5327 | 0 | 0 | 0 | 0.1248 |
C34 | 0 | 0 | 0.0914 | 0 | 0 | 0 | 0.0214 |
C41 | 0 | 0 | 0 | 0.3280 | 0 | 0 | 0.0558 |
C42 | 0 | 0 | 0 | 0.2114 | 0 | 0 | 0.0360 |
C43 | 0 | 0 | 0 | 0.0435 | 0 | 0 | 0.0074 |
C44 | 0 | 0 | 0 | 0.1270 | 0 | 0 | 0.0216 |
C45 | 0 | 0 | 0 | 0.1571 | 0 | 0 | 0.0268 |
C46 | 0 | 0 | 0 | 0.0442 | 0 | 0 | 0.0075 |
C47 | 0 | 0 | 0 | 0.0889 | 0 | 0 | 0.0151 |
C51 | 0 | 0 | 0 | 0 | 0.2163 | 0 | 0.0153 |
C52 | 0 | 0 | 0 | 0 | 0.0681 | 0 | 0.0048 |
C53 | 0 | 0 | 0 | 0 | 0.4171 | 0 | 0.0296 |
C54 | 0 | 0 | 0 | 0 | 0.0776 | 0 | 0.0055 |
C55 | 0 | 0 | 0 | 0 | 0.2209 | 0 | 0.0157 |
C61 | 0 | 0 | 0 | 0 | 0 | 0.4133 | 0.0329 |
C62 | 0 | 0 | 0 | 0 | 0 | 0.1078 | 0.0086 |
C63 | 0 | 0 | 0 | 0 | 0 | 0.1867 | 0.0149 |
C64 | 0 | 0 | 0 | 0 | 0 | 0.2922 | 0.0233 |
5.3. Development of Single Factor Fuzzy Comprehensive Evaluation Matrix
In the empirical study, we present the underlying context of this study as well as an analysis of a questionnaire survey of mine workers. Then, we use expert scores to analyze the risk factors and finally apply the FCE method to quantify the various types of risk. A comprehensive assessment by using both main and sub-risk risk factors rating methods that inform of low, medium, high and very high risk in four statuses is presented [
43,
44]. Additionally, a total number of 20 experts and scholars were invited to evaluate the safety situation of the mine and indicate scores based on each risk factor of second-level indicators. A summary of questionnaire responses from the twenty evaluators is listed in the
Appendix A. The statistical evaluation results obtained are shown as in
Table 14.
The results derived from the statistical collation questionnaire as a result of the expertise rating of risks are processed to generate six matrices:
RC1,
RC2,
RC3,
RC4,
RC5, and
RC6. The number of experts who participated in rating of each risk factor are summed together and then divided by their total number. The calculation process is as follows:
By using Equation (12), the results obtained from the aforementioned six matrices RC1, RC2, RC3, RC4, RC5, and RC6 are multiplied with the weights of each risk factor of the second-level factors in accordance to the evaluation of the first-level layer factors.
The fuzzy comprehensive evaluation result of each risk group of the first-level risk indicators in relative to safety target of Panzhihua OP-UG iron mine is as follows:
The geological risk factor with respect to
A layer:
Similarly, the same calculation process is applied to all, hence obtaining the evaluation results for each factor.
Mechanical and equipment risk factor with respect to the
A layer:
Mine personnel risk factor with respect to
A layer:
Mine face operation risk factor with respect to the
A layer:
Management risk factor with respect to the
A layer:
Environmental risk factor with respect to the
A layer:
The aforementioned weights indexes of
YC1,
YC2,
YC3,
YC4,
YC5 and
YC6 are combined to establish the fuzzy comprehensive evaluation matrix of
Y as shown below.
By computing the weights of the first-level factors
WB (0.3158, 0.1289, 0.2343, 0.1704, 0.0710, 0.0796) with the fuzzy comprehensive evaluation matrix
Y of second-level indexes, the mine safety evaluation system
Z is determined according to Equation (13), and the following results are obtained.
By considering the weighted values of the corresponding sets in
Table 5, the final comprehensive score
F of Panzhihua OP-UG iron ore mine safety risk evaluation can be determined through Equation (14):
In line with
Table 5, the final comprehensive evaluation result is 86.5%, which indicates that the general condition of the Panzhihua OP-UG iron mine risk level is in the medium range, and it is safe for production. Based on the four risk grades, the final comprehensive evaluation results of first-level factors are shown in
Figure 5.
As illustrated in
Figure 5,
B3 and
B5 are the most important attributes, which are consistent with the experts’ evaluation of the assessment. Unlike
B6,
B4,
B1 and
B2 show the biggest impact. Based on the evaluation results, targeted improvement measures must be devised in order to reduce the overall risk of the mine. The results obtained in this analysis are very consistent with the current situation of the mine. Hence, the use of the fuzzy comprehensive evaluation method is very reasonable for the evaluation of the mine safety risks.
7. Discussion of Results
The systematic implementation of risk management approaches has contributed to a significant decrease in the frequency of injuries in China mines. However, injury is still a significant issue, ranging from minor to fatal [
45]. Rock falls, fires, explosions, mobile equipment accidents, falls from high heights, and electrocution are still common causes of fatal injury at the Panzhihua synthesized iron ore mine.
Essentially, not all risks can be avoided in mines, and the detailed design should be based on minimizing safety concerns. In accordance with the fuzzy comprehensive evaluation principle, it can be decided what precautions must be taken prior to controlling risks. Risk management processes and controls are essential to ensuring that a management plan remains relevant. In addition, risk assessment should be viewed as a continuous process, and the adequacy of control and management measures should be reviewed and revised on a regular basis as required.
Although fuzzy assessment and AHP are widely used to determine various aspects of product quality, the fuzzy technique suggested here needs to be validated to see how well it works in practice. More importantly, the benefit of the fuzzy approach described in this paper over standard evaluation approaches such as averaging methods should be validated. In some ways, the mathematics process in the fuzzy method may be difficult to implement in practice, which is why we should strive to structure a common evaluation index within the ISO mine safety standard framework as well as weighing the value of the various aspects examined.
Due to the fact that hazards are not fully controllable and human intervention is limited, Mojtahedi et al. stated that the risk management cannot eliminate risks at once but can only identify appropriate strategies to manage them [
46]. This explains that after identifying, analyzing and evaluating the risk influencing the human health and production safety, each risk must be controlled or eliminated if necessary. In view of mine project risk assessment, this study applies the method of AHP-FCE to improve the safety risk evaluation system of the mine: hence deriving the mine’s safety risk rating and fulfilling the evaluation’s goals. The contribution of this study indicates the following. (i) The application of the analyzed AHP-FCE in risk assessment and management in OP-UG mine is reliable, which broadens the application scope of the AHP-FCE methodology. Although the AHP-FCE is widely used in risk evaluation in various fields, its full application in the assessment and evaluation of a combined OP-UG mine risks remains unclear. (ii) The analyzed AHP-FCE methodology improves the establishment of the mine safety risk index system for the easy management and timely handling of potential hazards. On basis of this effort, it is still essential for relevant departments to establish a more rigorous management safety system to guide personnel during the operation stage of the OP-UG mine.
According to the results of the risk assessments obtained from this research, the first-level indexes of the fuzzy evaluation judgement matrix indicated in
Table 13 illustrates that the most influential hazards in the Panzhihua OP-UG iron mine are geological factor
B1, environmental risk factor
B6, face operation factor
B4 and mechanical and equipment risk factors
B2, and these need to be prioritized, while personnel factor
B3 and management factor
B5 align at acceptable risk status.
Based on the results generated through combining the overall ranking and weighted values in
Figure 4, we conclude that the following events must be treated seriously: training and skills ability
C33, transportation
C23, safety system management and security
C53, rainfall and floods
C61 and wind impact
C63, roof fall
C41 and orebody stability
C12. Meanwhile, the dual prevention mechanism
C52, drilling equipment
C21, emergency rescue
C54, radiation impact
C14, loading equipment
C22, dust, noise and vibration
C43, water inrush
C46 and falling from height and object strikes
C47 pose the least risk factors.
Although the establishment of a safety risk evaluation index system and evaluation model allow for an objective assessment of the safety status and risk level, the general safety evaluation results indicate that the Panzhihua OP-UG iron ore mine lies at medium risk status, with a percentage score of 86.5%. This shows that the safety condition continues to meet the needs of the mine production. However, significant decisions and control measures can be taken to improve the safety condition of the perfect operation of the mine, achieve the enterprise’s long-term growth and fulfill higher safety needs.
8. Conclusions
One of the most effective strategies to reduce hazards in mines is to identify safety risks. The implementation of the risk management approach to identify and respond to significant hazards in mines is the most essential strategy to prevent accidents and promote safety. The current study aims to examine the assessment and management of safety risks in the Panzhihua OP-UG iron mine. In this study, the FCE method was employed to analyze and evaluate the safety risks of operating in the mine, and the main research findings are summarized as follows:
(1) The safety status of the mine was studied, and a total number of 85 hazards were identified, in which 49 hazards were considered non-threatening and therefore meet the existing control measures. Among the existing and remaining potential safety risks, altogether, 36 factors were categorized into six major groups.
(2) The safety index system consisting of three layers—namely, the goal layer, first-index layer and second-index layer—was established. The first-level index layer factors include the geological, mechanical and equipment, face operation, personnel, management and environmental factors, which consist of 30 second-level sub-risk factors all together, as illustrated in
Figure 3.
(3) The weight values of the evaluation indexes and the total ranking of the first-level and second-level indicators were calculated using the hierarchical analysis method. Additionally, a mine safety risk evaluation model is developed, and the overall safety level of the mine was determined based on the fuzzy comprehensive evaluation (FCE) method. The evaluation results show that the risk level of the Panzhihua OP-UG iron mine is at “medium status”, which indicates that the general safety condition of the mine is relatively safe and compatible.
(4) This study has provided the fundamental concept for prioritizing and evaluating the most critical mine hazards which may assist the government, policymakers, managers, safety experts, supervisors, mine personnel, technicians, and engineers in formulating efficient and effective policies to address this complex issue. This could only be achieved through the prompt detection, evaluation, and ranking of hazards. Efforts must be made at the federal and provincial levels if the development or improvement of mine safety devices is to be accelerated.
(5) According to the overall analysis of AHP-FCE evaluation results depicted in
Figure 6, impacts of various sub-risk indicators with respect to their main risk factors can be clearly seen, and specific control measures can be established accordingly.
(6) Compared with the traditional AHP-fuzzy and fuzzy TOPSIS evaluation method, the analyzed AHP-FCE approach is utilized more frequently due to the fact that no matter the type of evaluation, the goal is to construct a scientific evaluation index system and weight based on the actual scenario of the evaluation object. It overcomes the limitations of the simple weighted average method, solves the deficiency of the conventional AHP, enhances the fault tolerance of an element and integrates the combination of probabilistic risk assessment and FCE methods. The significant accuracy of the evaluation results is directly proportional to the scientific nature of the evaluation grade and weight of an indicator as well as the ability and status of the evaluators.
(7) The methodology presented in this study is primarily limited to safety risk evaluation findings of other risk assessment evaluation methods based on fuzzy sets [
47,
48,
49,
50]. In the future, we hope the analyzed AHP-FCE methodology presented in this research for evaluation of OP-UG mine safety risks requires a large quantity of fuzzy logic rules to be developed. This can be useful for testing the applicability and consistency of the AHP-FCE framework as well as illustrate the effectiveness of the proposed evaluation techniques.