Next Article in Journal
Impact of Clinical Pharmacist Consultations on Postoperative Pain in Ambulatory Surgery
Next Article in Special Issue
Creep Characteristics of Layered Rock Masses after Water Absorption Due to Structural Effects
Previous Article in Journal
COVID-19 Fear Impact on Israeli and Maltese Female “Help” Profession Students
Previous Article in Special Issue
Suppression Characteristics and Mechanism of Molasses Solution on Coal Dust: A Low-Cost and Environment-Friendly Suppression Method in Coal Mines
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Research on Evaluation of University Emergency Management Ability Based on BP Neural Network

1
Department of Security, University of International Business and Economics, Beijing 100029, China
2
School of Foreign Studies, University of International Business and Economics, Beijing 100029, China
3
China Center for Information Industry Development, Beijing 100048, China
*
Authors to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2023, 20(5), 3970; https://doi.org/10.3390/ijerph20053970
Submission received: 9 January 2023 / Revised: 21 February 2023 / Accepted: 21 February 2023 / Published: 23 February 2023
(This article belongs to the Special Issue New Theory and Technology of Disaster Monitoring and Prevention)

Abstract

:
University emergency management ability is an important part of university safety management. To evaluate university emergency management ability scientifically, objectively, and accurately, this study constructs three first-level indexes, namely, pre-prevention ability, in-process control ability, and post-recovery ability, and 15 s-level indexes, including the establishment of emergency management institutions; the construction of emergency plans; the allocation of emergency personnel, equipment, and materials; and the training and exercise of emergency plans. On the basis of the backpropagation (BP) neural network method and MATLAB platform, an evaluation model of university emergency management ability is constructed. The neural network evaluation model is trained with sample data, and a university in Beijing is adopted as an example to verify the good prediction effect of the model. The results show that applying the evaluation model based on the BP neural network to the emergency management ability of colleges and universities is feasible. The model provides a new method to evaluate the emergency management ability of colleges and universities.

1. Introduction

At present, the security and stability situations of colleges and universities are generally stable and good, but against the background of the intertwined and overlapping changes over the last century and the ongoing pandemic, many unstable and unsecure factors emerge, and security challenges are intensifying. Poisoning and killing, laboratory explosion, food poisoning, campus violence, student suicide, and other emergencies occur from time to time and show an increasing trend. Their frequent occurrence poses great challenges to the safety management of colleges and universities and the harmony and stability of society. In the face of emergencies in colleges and universities, China has established the emergency management system of planning and legislative/institutional/regulatory systems (known in China as “One Planning Plus Three Systems”) [1]. As early as 2007, China has formulated and promulgated a series of laws and regulations, such as the “Emergency Response Law” [2], that provide institutional guidance and methods for emergency handling in colleges and universities. Colleges and universities have also issued policy documents on campus public safety emergency management, but college emergencies are characterized by high uncertainty, unpredictability, subject specificity, and public proliferation, which have imposed strict requirements on the emergency management capacity of universities and colleges. Therefore, conducting research on the evaluation of the emergency management capacity of universities and colleges is important.
In foreign countries, the earliest research on the management of university emergencies was conducted in developed countries, such as the United States and Japan. The Federal Emergency Management Agency and the National Emergency Management Association jointly investigated and launched a self-assessment tool (Capacity Assessment for Readiness, CAR) [3] for assessing the response capacity of each region to emergencies. CAR is a comprehensive evaluation index system containing 13 primary indicators, 209 secondary indicators, and 1014 tertiary indicators [4]. Foreign scholars have also conducted exploratory research on emergency response capacity assessment. For example, Fink [5] proposed the four-stage life cycle model, which has laid a systematic theoretical foundation for academic research on the management of university emergencies. Daniel Weisdorf [6] explained the importance and status of emergency response capacity assessment and emphasized that the indicators of emergency response capacity should be in a dynamic process. American scholars have posited that the core point of emergency response lies in prevention. In addition, the U.S. Federal Education Agency has summarized the evolution of emergency events in colleges and universities into four stages: mitigation and prevention, preparation, response, and recovery. Universities around the world establish their emergency response plans based on the four processes. Meanwhile, Japanese scholars have conducted extensive research on the management of university emergencies [7]. The Japanese scholar Wakai Yaichi [8] pointed out that the management of university emergencies includes several aspects, such as health care, school accident liability, environmental management, safety education, and management.
Domestic scholars have also conducted extensive research. Weike Chen et al. [9] adopted Hall’s 3D structure and established an evaluation index system for the public emergency management capability of colleges and universities. Jianxin Yu et al. [10] established a backpropagation (BP) neural network evaluation model for campus security in colleges and universities. Qinghua Liu et al. [11] combined rough set and gray correlation analysis methods to perform a comprehensive evaluation of the emergency management capability of colleges and universities. Hao Ji et al. [12] constructed an evaluation index system of the emergency management capability of universities that considers the risk factors affecting such capability; they used fuzzy hierarchical analysis to construct an evaluation model of the emergency management of universities. Xu Zhao [13] built an evaluation model for the emergency management capability of universities by using improved grey hierarchical analysis. Based on the theories of crisis life cycle and comprehensive emergency management, Rui Sun [14] constructed an evaluation index system of the emergency response capability of universities that covers three primary indicators (i.e., prevention capability, control capability, and recovery capability) and 15 secondary indicators (including emergency plan design, safety system inspection, plan training, and drill) and evaluated the emergency response capability based on a fuzzy mathematical model. Jiale Hao [15] constructed an emergency management system for universities from a system perspective and modeled and quantitatively analyzed the system by using a Petri net. Kang Sun et al. [16] compared and analyzed the application of the entropy method, principal component projection, combined optimization model of entropy method, and principal component projection in the evaluation of the public emergency management capability of universities. Yang Xu et al. [17] constructed a grading evaluation model of public crisis warning in universities from the two dimensions of crisis events and crisis management and proposed an improved evaluation method of alpha-intercept fuzzy TOPSIS.
Most of the above-mentioned studies have used hierarchical analysis and fuzzy comprehensive evaluation to establish different evaluation systems or models, which provide a theoretical basis for the evaluation of the emergency management capability of universities. However, these methods cannot easily eliminate the subjectivity and arbitrariness of the evaluators in determining the index weights, which affect the evaluation results. The BP neural network overcomes the subjectivity of evaluation indexes in the process of assigning weights and has achieved excellent results in network security, quality security, project security, security management, and ecological security evaluations [18,19,20,21,22]. At present, only a few studies have applied BP neural networks to the evaluation of the emergency management capacity of universities. On this basis, this study adopts the BP neural network method to design and establish an evaluation model of the emergency management capacity of universities. The accuracy and reliability of the evaluation method and model are verified through an example application. Thus, it can better provide a new method and idea for the evaluation of emergency management ability in colleges and universities.

2. Construction of an Evaluation Index System

The establishment of an evaluation index is a crucial step in the process of safety evaluation. The rationality of index formulation directly affects the accuracy of evaluation results. By combing and analyzing a large amount of domestic and foreign related literature, we initially selected index sources suitable for the evaluation of the emergency response capacity of Chinese universities. Then, we combined the actual situation of Chinese universities and the actual situation of a Beijing university, which is the empirical research object of this study, and designed an index system of campus emergency management capability with a certain degree of reliability and validity.
The evaluation index system contains 1 target level, 3 first-level indexes, and 15 s-level indexes. The first-level indexes are pre-prevention ability, in-process control ability, and post-recovery ability. Specifically, pre-prevention ability includes the establishment of emergency management institutions (B11); the construction of emergency plans (B12); the allocation of emergency personnel, equipment, and materials (B13); the training and exercise of emergency plans (B14); and detection, identification, and early warning capabilities for emergencies (B15), for a total of five second-level indexes. In-process control ability includes the counter speed of emergency handling plan (B21); the activation and implementation of emergency plans (B22); the dissemination, collection, processing, and transmission of information (B23); on-site organization and command ability (B24); emergency coordination ability (B25); and equipment device and technology (B26), for a total of six second-level indexes. Post-recovery ability includes the accountability mechanism (B31), accident investigation (B32), recovery and reconstruction capability (B33), and psychological crisis prevention and counseling capability (B34), for a total of four second-level indexes. The specific indexes are shown in Table 1.

3. BP Neural Network Methods and Principles

3.1. BP Neural Network Model

BP is a multilayer forward feedback network trained by data forward propagation and error back propagation invented by a research group led by Rumelhart and McClelland in the United States in 1986; it masters a large number of input–output transfer mappings and can store and remember these mappings [23]. The BP neural network structure is composed of an input layer, a hidden layer, and an output layer, each of which consists of a number of nodes (also called nerves). Compared with other evaluation methods, BP neural network has the following advantages: (1) the creation, training, and use of neural network can be completed by MATLAB to realize data evaluation and analysis; (2) it has a strong logic processing ability, and a good nonlinear mapping relationship exists between input and output data [24]; and (3) it has sufficient fault tolerance, and the partial damage of neurons in each layer does not affect the operation results of the whole network [25]. Its structure is sketched in Figure 1.

3.2. Algorithm Principle of BP Neural Networks

The BP neural network operation process includes two parts. The signal goes from the input layer to the output layer through the hidden layer, indicating a forward calculation process. The error is calculated by comparing the output signal with the expected output value. When the error is greater than the specified range, the output result is back-propagated and the weights and thresholds between layers are adjusted one by one according to the error value. The two computation processes are repeated until the resulting error is within the given accuracy range; then, the neural network training is completed [26]. The specific algorithm flow is as follows.
(1)
Sample selection and pre-processing. In accordance with the research objectives, suitable training and test samples are selected. The sample data are normalized because of the different activation functions of BP neural networks.
(2)
Network initialization. In accordance with the nature of the input and desired output values of the trained data, the total number of input layer neurons (s), the total number of hidden layer neurons (r), and the number of output layer neurons (t) of the training network are decided. The training accuracy, number of iterations, neuron excitation function, and training function are also set.
(3)
Operation of the output value of the implicit layer. Sample data p are inputted into the layer, and the output value F of the hidden layer is calculated with Equation (1), where wij is the connection weight between the input layer and the hidden layer, a is the threshold value of the neurons in the hidden layer, f is the excitation function of the neurons in the hidden layer, and r denotes the number of neurons in the hidden layer.
F j = f [ i = 1 s w i j p i a j ] ,   j = 1 ,   2 ,   3 ,   ,   r
Many kinds of excitation functions can be used for BP neural networks. The network excitation function selected in this study is the hyperbolic tangent logsig function with the following expression:
f ( x ) = 1 / ( 1 + e ^ ( x ) ) .
(4)
Calculation of the output value of the output layer. The output value Y of the output layer is calculated with Equation (2), where f is the output value of the implicit layer of the network, wjk is the connection weight between the implicit layer and the output layer, and b is the threshold value of the output layer.
Y K = j = 1 r F j w j k b k ,   k = 1 ,   2 ,   ,   t
(5)
Neural network forward propagation error calculation. The expected output value already available is Z. The error value of network prediction is calculated with Equation (4), where Y is the network output value calculated by the forward propagation of the neural network.
V k = Z k Y k ,   k = 1 ,   2 ,   ,   t
(6)
Update of connection weights between layers. New connection weights are calculated from the network prediction error values, and the new connection weights are Wij and Wjk. The specific formula is as follows:
W i j = w i j + η F j ( 1 F j ) p ( i ) k = 1 t w j k V k ,   i = 1 ,   2 ,   ,   s ;   j = 1 ,   2 ,   ,   r ,  
W j k = w j k + η F j V k , j = 1 ,   2 ,   ,   s ;   k = 1 ,   2 ,   ,   t ,  
where η is the learning efficiency.
(7)
Update of the thresholds for each layer of backpropagation. The new thresholds are Cj and Dk with the following equations:
C j = c j + η F j ( 1 F j ) k = 1 t w j k V k ,   j = 1 ,   2 ,   ,   r ,  
D k = d k + V k ,   k = 1 ,   2 ,   ,   t .  
(8)
In accordance with the expected set error range for analysis, whether the output value meets the accuracy requirements is determined; when it does, the operation ends, and the result is outputted. Otherwise, the network iteration continues, and Step (3) is implemented again to continue the training calculation until the error accuracy requirements are met. The calculation process of BP is shown in Figure 2.

4. Construction of the Evaluation Model

4.1. Training Sample Acquisition

In this study, five universities in City B were selected as the data source for the training sample, and 10 experienced experts from emergency management government departments, emergency management professional colleges and universities, and emergency management scientific research institutions were invited to use the expert scoring method to quantify and score the capability values of each index of the five universities. The scoring was based on a 100-point system, and each index was scored in the range of 0–100 from poor to excellent. The emergency response capability of universities was classified into five levels, with reference to Table 2. The level corresponding to the emergency response capability of universities was determined based on the target value, namely, the emergency response capability score, outputted from the neural network. The scores given by experts are shown in Appendix A.

4.2. BP Neural Network Design

Research has already confirmed that a three-layer neural network can meet the needs of model building and data operation [27], so a three-layer feedforward neural network model was established in this study. The number of input neurons of the BP neural network was determined using the previously established evaluation index of the emergency management capability of universities, and the input layer was represented by X (X = 15). The number of neurons in the hidden layer is directly related to the training accuracy of the network, so we determined the number of neurons in the hidden layer by adopting the empirical formula
Y = M + N + b
where Y represents the number of neurons in the hidden layer, M is the number of identified nodes in the input layer, N is the number of identified nodes in the output layer, and b is a positive integer that takes values from 1 to 10.
On the basis of experience, the number of neurons in the hidden layer is generally set as an integer in the range of 5–14. After repeated verification in this study, the number of neurons in the hidden layer was designed to be 10. The final evaluation result was only 1, that is, the number of neurons in the output layer was set to 1. Thus, a BP neural network with the structure of “15-10-1” was used as the research evaluation model.

4.3. BP Neural Network Model Building and Training

The MATLAB platform was adopted as a basis for BP model building and training in this study. First, the data were normalized using the mapminmax function. The hyperbolic tangent logsig function was selected for modeling, the linear function purelin was adopted as the activation function, traingda was used as the training function, and the BP network creation function newff was employed to establish the BP network structure. The fitting number, network training number, learning efficiency of network training, and error accuracy of network training were set to 20, 9999, 0.1, and 0.001, respectively.
The existing data were divided into training, validation, and test data. The training data were involved in training the prediction model, and the validation and test data were used to validate and test the accuracy of the model, respectively. The training of the whole network was stopped when any of the following three conditions were met: the fitting training did not converge for 20 consecutive times, the maximum number of iterations set was reached, and the training accuracy was less than or equal to 0.001. At the end of the iteration, network training was terminated, and the iterative accuracy curve (Figure 3) and the training, validation, and testing results (Figure 4) were outputted.
As shown in Figure 3, the training was completed after the 103rd iteration, and the training termination accuracy was 0.00965, which was lower than the expected accuracy target set at this time. This result indicates that the model training fitting effect of this BP neural network met the accuracy setting requirements.
The data dispersion distribution in Figure 4 shows the model’s fitting effect. In the model of regression prediction, R2 is generally used to judge the accuracy of the model, and the value of R2 in the model is between 0 and 1. When R2 is less than 0.5, the prediction of this model is problematic. When R2 is equal to 0.6, the model can explain 60% of the prediction result. When R2 is greater than 0.75, the prediction result of the model is good. According to Figure 4, R = 0.99372 and R2 = 0.9875. R2 is greater than 0.75, indicating that the accuracy of the model is high.
To compare the BP neural network training results with the expected output results, the model operation was performed using the an = sim (net, inputb_test) function. The prediction results were outputted by the inverse normalization process of the mapminmax (reverse) function, and the relative error was calculated by comparing the prediction results with the true values. The results are shown in Table 3.
The training results are plotted against the desired output in Figure 5.
It can be seen from Figure 5 that the virtual line of predicted output value in green almost coincides with the real line of actual expected value in red, and the error rate is relatively low, indicating that the simulation and prediction ability of the model is relatively strong. Meanwhile, as shown in Table 3 and Figure 5, the training results of the BP neural network conformed to the expected output results with small errors, and the coefficient of determination of the model was as high as 0.96999, indicating that the training results of the BP neural network model were accurate and had higher prediction accuracy. Hence, the model can be used feasibly for the evaluation of the emergency management capability of universities.
Furthermore, the mean absolute percentage error (MAPE) was adopted for model validation.
M A P E = 100 % n i = 1 n | y ^ i y i y i | ,
where n is the sample size of the data set, yi is the measured value of the i-th sample, and y ^ i is the predicted value of the BP neural network for the i-th sample.
The average absolute percentage error of this BP neural network model in the test set of the emergency management capability of colleges and universities was 0.02953. According to the error analysis, this BP neural network model can be used to conduct an evaluation study of university emergency management ability effectively and reasonably.

5. Example Application

With a university in Beijing as an example, we invited 10 experts in related fields to score the evaluation indexes of university emergency management ability in accordance with the actual situation of the university. The scores of the experts are shown in Table 4, where Z denotes the experts.
The scoring data of the 10 experts on the emergency management capability of a university in Beijing (Table 4) were imported into MATLAB workspace, and the name of the prediction data was input_ forecast data by using the trained BP neural network. The prediction was implemented as follows:
% normalize the predicted data
inputb_ forecast data = mapminmax(‘apply’, input_forecast data, inputps);
%predicted data is substituted into the trained BP neural network model
An = sim(net, inputb_ forecast data);
% denormalize the predicted data
Routput = mapminmax(‘reverse’, an, outputps);
% shows the predicted results
Result = Routput
Result = 82.3419 83.2315 83.4819 83.9694 82.2223 81.0435 83.5739 84.3361 85.4231 86.6456
The 10 evaluation results were close to one another. According to the scoring rules, the evaluation result of the emergency management ability of this university is excellent, which is consistent with the overall judgment and recognition of the plan by experts and related personnel.
In general, the neural network model for the evaluation of university emergency management ability can evaluate the level of emergency management accurately and can provide a management basis for university managers.

6. Conclusions

As social education institutions, colleges and universities have social importance. The occurrence of university emergency events affects the normal teaching and living order of colleges and universities and produces unacceptable repercussions in society, which are not conducive to the construction of a harmonious campus and society. Strengthening the management of university emergencies, establishing an ideal emergency mechanism, and improving the ability of universities in dealing with emergencies can promote the safety and stability of campus environments. Therefore, performing an accurate, scientific assessment of university emergency management ability is essential. The emergency management ability of higher-education institutions involves many departments and complicated elements and is difficult to assess. Most of these elements are measured qualitatively. Through the analysis of relevant literature, the current study developed a scientific evaluation index system that uses BP neural networks with the aid of the MATLAB platform. Evaluation models were constructed, trained, and applied to transform the qualitative evaluation into a highly intuitive quantitative evaluation.
This research is summarized as follows:
By sorting and generalizing a large amount of related literature, we constructed an index system for evaluating university emergency management ability. The system consists of three first-level indexes and 15 s-level indexes. The first-level indexes are pre-prevention ability, in-process control ability, and post-recovery ability. The 15 s-level indexes include the establishment of emergency management institutions (B11); the construction of emergency plans (B12); the allocation of emergency personnel, equipment, and materials (B13); and the training and exercise of emergency plans (B14). On the whole, the index system is scientifically rich and covers many elements of university emergencies.
At present, the methods for emergency management evaluation in colleges and universities mostly adopt the hierarchical analysis method and the fuzzy synthesis method with subjective weight color. Many factors affect emergencies in colleges and universities, which are complex systems, and these factors are difficult to quantify. The BP neural network method has excellent self-learning and nonlinear processing abilities, and the weights in the calculation process can be automatically adjusted in accordance with the fitting error, thereby minimizing human subjectivity. Thus, the BP neural network method helps improve the scientific evaluation of university emergency management ability.
In this study, five universities in City B were selected as data sources of training samples, and 10 experts in related fields were invited to quantify and score the ability values of each index of the five universities. Using the BP neural network with the help of the MATLAB platform, a BP neural network model was constructed. The BP neural network model was checked and tested by training with the experts’ quantitative scoring data. The comparison of the results revealed that the BP neural network evaluation model can be applied effectively in the evaluation of university emergency management ability and can achieve a scientific assessment of such ability.
On the basis of the BP neural network model, we evaluated the emergency management ability of a university in Beijing. The evaluation result of the emergency management ability of the university was excellent and in line with the actual situation. Thus, the evaluation model has good applicability.
This paper focuses on the application of the BP neural network in the evaluation of university emergency management ability. However, there are still things in the paper that need to be explored further. On the one hand, there are many factors affecting university emergencies, and each school has its own characteristics. Therefore, more targeted and applicability indexes should be selected in the evaluation of different universities. On the other hand, we can continue to increase the selection of sample size to obtain higher evaluation accuracy.

Author Contributions

R.H. contributed to the concept of the study, performed the data analysis, and wrote the manuscript. Y.Z. helped revise the paper on the basis of constructive discussions. L.W. helped search for related literature. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data that support the findings of this study are available from the corresponding author upon reasonable request.

Acknowledgments

The authors are grateful to the Web of Science for supporting the literature search. We also thank Rumelhart and McClelland for inventing the BP neural network algorithm, higher-education schools for providing research site support, experts in the field of emergency management for scoring, and our friends for caring for us during the writing of this thesis.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. BP neural network model training sample data.
Table A1. BP neural network model training sample data.
IndexB11B12B13B14B15B21B22B23B24B25B26B31B32B33B34M
S185769265707692908673969587857481
S190909080859080858580908085808085
S11009598951009996958998979293969195
S180708070605070708060707060707067
S180707978707878787070707070707073
S180607050406050709050608050504063
S180758091827672867580808584758283
S1909010098909092909090909510010010096
S190808090909090906090909090908084
S180609080506560606060708070909073
S270608050603060708070707070909070
S280787576776572808080756678798576
S280756080706070806060606060757568
S260607050606060605050606070808063
S29098100981005591959092919590899290
S2607080607010080706050606060706068
S270507070406090807050606070908569
S270806645608070706040507070807067
S29810095969010095991001001001009610010098
S280707590759085857580857570807581
S375808050759075808090859090908582
S370608020608080807060608080808070
S3100808090706080808080907080697879
S380708080808090909598907570908082
S385965678458976859887789696987583
S395959620959697979595969696969590
S350608030406080805050606080708061
S385707580758080868584808580898680
S3657575100807574707271768085868677
S390809095929095909080909595959591
In the table, Bmn refers to the 15 evaluation indexes, SK denotes the school number, and M is the overall value of dormitory safety management evaluation.

References

  1. Zhou, F. A preliminary study of railroad emergency management based on safety prevention and emergency response. Railw. Econ. Res. 2012, 1, 55. [Google Scholar]
  2. Emergency Response Law. In Proceedings of the Tenth National People’s Congress of the People’s Republic of China, Beijing, China, 1 November 2007.
  3. FEMA. State Capability Assessment for Readiness A Report to the United States Committee on Appropriations; Federal Emergency Management Agency: Washington, DC, USA, 1997. [Google Scholar]
  4. Shen, Q. Research on the Evaluation Index System of the Government’s Production Safety Accident Emergency Management Capacity; China University of Geosciences Beijing: Beijing, China, 2016. [Google Scholar]
  5. Fink, S. Crisis Management: Planning for the Invisible; American Management Association: New York, NY, USA, 1986; p. 56. [Google Scholar]
  6. Weisdorf, D. Radiation Emergencies: Evaluation. Management and Transplantation. Biol. Blood Marrow Transplant. 2007, 1, 103–106. [Google Scholar] [CrossRef] [Green Version]
  7. Brickman, H.K.; Jones, S.E.; Groom, S.E. Evolving School-Crisis Management Since “9–11”. Educ. Dig. 2004, 69, 29. [Google Scholar]
  8. Yaichi, W. Legal Basis of School Crisis and Litigation Cases in Japan; Japan Education News Press: Tokyo, Japan, 1986; Volume 56. [Google Scholar]
  9. Chen, W.; Zhang, L. Research on the evaluation of emergency management capability of public emergencies in colleges and universities. J. Saf. Sci. Technol. 2011, 7, 92–96. [Google Scholar]
  10. Yu, J.; Liu, H.; Wang, W.; Hu, Y.; Xu, Z. Campus security evaluation model based on BP neural network and its application. Saf. Environ. Eng. 2011, 18, 93–95. [Google Scholar]
  11. Liu, Q.; Li, W.; Wu, C. Research on emergency management capability of higher education institutions in case of emergencies. J. Yangzhou Univ. (High. Educ. Study Ed.) 2012, 16, 82–87. [Google Scholar]
  12. Ji, H.; Su, B.; Lu, M. Research on the evaluation of emergency management capability of universities based on risk factors for emergencies. J. Xi’an Technol. Univ. 2012, 32, 584–589. [Google Scholar]
  13. Zhao, X. Research on the Evaluation of Emergency Management Capability of Higher Education Institutions in Case of Emergencies; Shanxi University of Finance and Economics: Taiyuan, China, 2016. [Google Scholar]
  14. Sun, Y. Research on the Evaluation of Emergency Response Capacity of Higher Education Institutions; Yanshan University: Qinhuangdao, China, 2016. [Google Scholar]
  15. Hao, J. Modeling Research on Emergency Management System of Universities Based on Petri Network; Xi’an University of Architecture and Technology: Xi’an, China, 2018. [Google Scholar]
  16. Sun, K.; Chai, R.; Chen, J.; Zhou, X. A combinatorial optimization model for evaluating the emergency management capability of campus public safety emergencies. Math. Pract. Theory 2015, 45, 231–239. [Google Scholar]
  17. Xu, Y.; Yu, L.; Lin, C. Early warning grading of public crisis in universities based on improved α intercepted set fuzzy TOPSIS method. J. Shanghai Univ. (Nat. Sci.) 2017, 23, 308–314. [Google Scholar]
  18. Wang, Z.; Gong, J.; Wei, X.; Shou, S. A BP neural network-based model for catalytic cracking of heavy oil. Pet. Process. Petrochem. 2021, 52, 49–53. [Google Scholar]
  19. Cao, Y. Research on the performance evaluation of agricultural products distribution supply chain based on BP neural network. J. Commer. Econ. 2021, 11, 134–137. [Google Scholar]
  20. Xu, S.; Cao, Y.; Cui, H. Model construction of GA-BP neural network for predicting college students’ physical fitness. J. Chongqing Univ. Technol. (Nat. Sci.) 2018, 32, 162–168. [Google Scholar]
  21. Maniezzo, V. Genetic Evolution of the Topology and Weight Distribution of Neural Networks. IEEE Trans. Neural Netw. 1994, 5, 39–53. [Google Scholar] [CrossRef] [PubMed]
  22. Liu, T.; Cai, Z.; Wang, N.; Jia, R.; Tian, W. Prediction method of coal dust explosion flame propagation characteristics based on principal component analysis and BP neural network. Math. Probl. Eng. 2022, 12, 1–8. [Google Scholar] [CrossRef]
  23. Jiang, X.; Tang, H. Systematic analysis of the generalizability capability of feedforward neural networks. Syst. Eng.-Theory Pract. 2000, 08, 36–40. [Google Scholar]
  24. Feng, Z. BP neural network-based railroad freight safety risk evaluation research. China Saf. Sci. J. 2018, 28, 178–185. [Google Scholar]
  25. Yu, W. Major Construction Project Emergency Response Capacity Assessment Study; Capital University of Economics and Business: Beijing, China, 2018. [Google Scholar]
  26. Li, X. Research on Safety Management Evaluation System of College Student Dormitory Based on BP Neural Network; Hebei University of Economics and Business: Shijiazhuang, China, 2022. [Google Scholar]
  27. Ren, S.; Shi, X.; Wang, W.; Tian, X.; Chen, B. A study on the evaluation of the overall government emergency plan based on BP neural network. J. Wuhan Univ. Technol. (Inf. Manag. Eng.) 2021, 43, 412–417. [Google Scholar]
Figure 1. BP neural network topology.
Figure 1. BP neural network topology.
Ijerph 20 03970 g001
Figure 2. Flow chart of the BP neural network algorithm.
Figure 2. Flow chart of the BP neural network algorithm.
Ijerph 20 03970 g002
Figure 3. Output iterative precision curve.
Figure 3. Output iterative precision curve.
Ijerph 20 03970 g003
Figure 4. Training, validation, and test results.
Figure 4. Training, validation, and test results.
Ijerph 20 03970 g004
Figure 5. Comparison of training and expected output results.
Figure 5. Comparison of training and expected output results.
Ijerph 20 03970 g005
Table 1. Index system of campus emergency management capability.
Table 1. Index system of campus emergency management capability.
First-Level IndexSecond-Level IndexIndex Description
Pre-prevention ability
B1
Establishment of emergency management institutions
B11
Whether the university sets up emergency management institutions and whether the settings are reasonable.
Construction of emergency plans
B12
Whether the emergency plan is set up according to the university’s own situation and whether the emergency response plan for emergencies is complete.
Allocation of emergency personnel, equipment, and materials
B13
The structure and number of personnel at each level of the department in dealing with emergencies and the availability of emergency equipment and supplies (includes whether the equipment is complete and whether the supplies are sufficient).
Training and exercise of emergency plans
B14
Whether training and rehearsal of emergency plans for colleges and universities are conducted and whether the rehearsal is reasonable.
Detection, identification, and early warning capabilities for emergencies
B15
The ability to detect emergencies, the ability to analyze and identify the development trend of possible emergencies, and the ability to use relevant information websites to obtain relevant information.
In-process control ability
B2
Counter speed of emergency handling plan
B21
The speed of activation of the plan after the occurrence of a contingency.
Activation and implementation of emergency plans
B22
After the occurrence of an emergency, whether to start and implement the plan in accordance with the principle of graded response and whether the implementation of the plan is in place.
Dissemination, collection, processing, and transmission of information
B23
Whether the information release is timely, whether the information collection is comprehensive and true, and whether the information transmission is effective.
On-site organization and command ability
B24
Whether the command staff configuration is reasonable to deal with emergencies and whether the command, control, and coordination mechanisms are sound.
Emergency coordination ability
B25
After the occurrence of an emergency, whether the communication and collaboration between relevant personnel are smooth and close, respectively.
Equipment device and technology
B26
After the occurrence of an emergency, whether the equipment and devices meet the needs and whether the rescue technology is mature.
Post-recovery ability
B3
Accountability mechanism
B31
Whether an accountability mechanism exists and whether the rewards and punishments are reasonable.
Accident investigation
B32
Whether the cause of the accident and the situation of responsibility for the accident are investigated and analyzed, whether information materials related to the accident are collected, and whether the situation is reported to the higher authorities (government investigation team).
Recovery and reconstruction capability
B33
Whether the recovery and reconstruction are timely after the occurrence of emergency events.
Psychological crisis prevention and counseling capability
B34
After the occurrence of an emergency, whether psychological counseling is provided to relevant personnel, whether the manner is correct, and whether the effect is significant.
Table 2. Scoring levels and corresponding values.
Table 2. Scoring levels and corresponding values.
LevelLevelScore
I Excellent[100,80)
II Good[80,60)
III Fair[60,40)
IV Poor[40,20)
V Very poor[20,0)
Table 3. Error table of test result data and expected result data.
Table 3. Error table of test result data and expected result data.
Data Serial NumberExpected ResultTest ResultError Value
17271.82150.1785
26564.55520.4448
37272.7988−0.7988
47979.0697−0.0697
57978.98910.0109
67373.7639−0.7639
79089.91390.0861
87877.38070.6193
97877.45450.5455
108584.92670.0733
118787.6468−0.6468
127473.65160.3484
137878.7856−0.7856
146867.59890.4011
156261.88290.1171
168584.84700.153
176969.6545−0.6545
186867.60100.399
196766.41450.5855
209696.0437−0.0437
Table 4. University emergency management ability quantitative score table.
Table 4. University emergency management ability quantitative score table.
IndexZ1Z2Z3Z4Z5Z6Z7Z8Z9Z10
B1185838489859088858784
B1279848180758075808582
B1370727975688074737780
B1460615957556960586055
B1575808675727570738172
B2150555855566059555356
B2275807273858088789078
B2370656068756260606564
B2470765678906080708078
B2580858788838590878586
B2685878580818580758385
B3190959390909294939592
B3280868581808380808484
B3390919095908892858990
B3489908767508790929878
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Hu, R.; Zhang, Y.; Wang, L. Research on Evaluation of University Emergency Management Ability Based on BP Neural Network. Int. J. Environ. Res. Public Health 2023, 20, 3970. https://doi.org/10.3390/ijerph20053970

AMA Style

Hu R, Zhang Y, Wang L. Research on Evaluation of University Emergency Management Ability Based on BP Neural Network. International Journal of Environmental Research and Public Health. 2023; 20(5):3970. https://doi.org/10.3390/ijerph20053970

Chicago/Turabian Style

Hu, Ruili, Ye Zhang, and Longkang Wang. 2023. "Research on Evaluation of University Emergency Management Ability Based on BP Neural Network" International Journal of Environmental Research and Public Health 20, no. 5: 3970. https://doi.org/10.3390/ijerph20053970

APA Style

Hu, R., Zhang, Y., & Wang, L. (2023). Research on Evaluation of University Emergency Management Ability Based on BP Neural Network. International Journal of Environmental Research and Public Health, 20(5), 3970. https://doi.org/10.3390/ijerph20053970

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop