Risk Propagation Model and Simulation of an Assembled Building Supply Chain Network
Abstract
:1. Introduction
- Focusing on the problem of supply chain risk transmission, this paper establishes a supply chain network model and innovatively introduces the recurrent SEAIR model when considering asymptomatic infections and relapses, adding two situations: asymptomatic characteristics and symptomatic characteristics.
- Considering both of these scenarios, the asymptomatic infection enterprise and the symptomatic infection enterprise are jointly defined as risk transmission enterprises based on the actual supply chain, and are regarded as one of the main bodies of the risk transmission model.
- The SEAIR supply chain risk propagation model considering recurrence is established, and the computer simulation method based on system dynamics is combined with the propagation dynamics idea to simulate and analyse the risk propagation process, seek risk mitigation strategies, and provide decision support for better reducing supply chain risks.
2. Identification and Dissemination of Prefabricated Building Supply Chain Risk
2.1. Assembled Supply Chain Risk Identification
- From the perspective of the external environment, the risk factors are changes in government policies, sudden changes in the natural environment, and the impact of the economic environment.
- From the perspective of planning, the planning objectives are inaccurate; the difference between the change plan and the plan information and the actual situation is too large.
- From the purchasing point of view, the cost of purchased materials is too high, the quality of purchased materials is not up to standard, and the purchasing time is delayed.
- From the manufacturing point of view, the process of manufacturing products does not meet the specification requirements, the delivery time of manufactured products is delayed, and the capacity of manufacturing products is not up to standard.
- From the perspective of transportation, materials are damaged during transportation, transportation time is delayed, transportation schemes are not perfect, and the transportation company is reliable.
- From the perspective of assembly, the risk factors are changes in the assembly period, safety accidents at assembly sites, a low technical operation level of assembly personnel, and unqualified quality of assembly parts.
2.2. Risk Transmission Mechanism of the Prefabricated Building Supply Chain
3. Establishment of the Model
3.1. Establishment of Recurrent SEAIR Models
3.2. Analysis of the Applicability of the Network Model and Virus Model of a Prefabricated Building Supply Chain
- The objects of diffusion are similar: In the process of risk propagation in the supply chain of prefabricated buildings, the main enterprises in the supply chain suffer from risk erosion, and each enterprise is an independent whole with its own ability to resist risks. Enterprises with a strong ability to resist risks are ultimately less affected by risks; in contrast, enterprises with a weak ability to resist risks are greatly affected by risks. For virus transmission, the infected individual is the object of transmission, and the transmission effect is affected by individual immunity [23].
- The process of diffusion is similar: In the supply chain risk of prefabricated buildings, the spread of risk is disorderly. When the manufacturer receives the erosion of risk, the affected risk will spread in the supply chain network, and the upstream raw material suppliers, downstream transporters, and packaging formulas will be affected. In the supply chain, one node enterprise affected by the risk will spread to another node enterprise in contact with it, and the spread results will worsen. In the process of virus transmission, the virus that comes into contact with the infected virus is the first to be affected, and then it spreads in all directions in a radial way. Without being stopped, the impact is even more serious [35].
- The diffusion environment is similar: The risk of the prefabricated building supply chain is diffused through the business dealings between node enterprises. When the quality of the products produced by the manufacturer does not meet the requirements of the owner, the downstream transportation faces the risk of delay in transportation time, which leads to the failure to complete the equipment installation on schedule, resulting in compensation for a contract breach by the general contractor. The main body of virus transmission is the cells in the body of the virus, and the virus carried in the cells is spread to other places through the flow of blood [36].
3.3. The Existence of a Risk Balance Point
4. Based on the Establishment and Simulation Analysis of Supply Chain Risk Propagation Model Considering the Recurrent SEAIR Model
4.1. Identification of the Causes and Results of Supply Chain Risks of Prefabricated Buildings
4.1.1. Causality Diagram Analysis
4.1.2. Result Tree Analysis
4.2. Based on the Establishment of the Supply Chain Risk Propagation Model Considering the Recurrent SEAIR Model
4.2.1. Definition of the System Boundary
4.2.2. Causality Analysis of Risk Communication
- Positive feedback loop R1: enterprises with latent risks → enterprises with risk transmission → government support → enterprises with infection and rehabilitation → enterprises with lost immunity → enterprises with new latent risks →enterprises with latent risks.The increase in the number of enterprises with latent risks leads to an increase in the number of risk transmission enterprises. When the number of communication enterprises is large, the government is urged to take measures to reduce the number of unstable enterprises affected by risks in the industry so that the number of infection and rehabilitation enterprises will increase, and the number of enterprises losing immunity in the later period will also rise, becoming new enterprises with latent risks.
- Negative feedback loop B1: latent risk enterprise → risk-spreading enterprise → infection rehabilitation enterprise → latent risk enterprise.
- Negative feedback loop B2: enterprises with unknown risks → enterprises with latent risks → enterprises with risk transmission → government support → enterprises with infection rehabilitation → enterprises with unknown risks.An increase in the number of enterprises with latent risks thus increases the number of enterprises with risk transmission. The increase in the number of communication enterprises is bound to attract the attention of the government, and the enterprises with risk communication should be guided and planned. Under the government’s measures, the number of infection and rehabilitation enterprises in the industry has increased. When the number of enterprises in the industry is fixed, the number of enterprises with latent risks eventually decreases.
- Negative feedback loop B3: risk communication enterprises → government support → infection rehabilitation enterprises → risk communication enterprises.With an increase in the number of risk communication enterprises, the government has strengthened risk control, and some risk communication enterprises will become risk rehabilitation enterprises, which will increase the number of risk rehabilitation enterprises and reduce the number of risk communication enterprises to a certain extent.
- Negative feedback loop B4: infection rehabilitation enterprises → number of enterprises losing immunity → number of enterprises with latent new risks → infection rehabilitation enterprises.With an increase in the number of infection rehabilitation enterprises, to some extent, the number of enterprises that have lost their immunity increases; thus, the number of enterprises with latent new risks will increase, and the number of infection rehabilitation enterprises will be reduced to a certain degree.
4.2.3. Flow Chart Analysis of Risk Communication
4.3. Analysis of Model Simulation Results
4.3.1. Impact of Change in Infection Rate on Risk Transmission
4.3.2. Impact of Change in Transmission Rate on Risk Transmission
4.3.3. Impact of Changes in Government Financial Support on Risk Communication
4.3.4. Impact of Changes in Government Policy Supervision on Risk Communication
4.3.5. Impact of Change in the Proportion of Lost Immunity on Risk Transmission
5. Conclusions
- With the increase in infection rate, the number of enterprises in the supply chain that are not affected by risk will be greatly reduced, and the number of risk transmission enterprises and the number of risk-latent enterprises will increase significantly. With the increase in transmission rate, the change trend of risk transmission enterprises, risk-latent enterprises, and infection recovery enterprises in the supply chain is roughly the same as the change in the number of enterprises brought about by the increase or decrease in infection rate, but the change in transmission rate will not affect the change in the number of enterprises with unknown risk. Through the above simulation, it can be seen that this is because, while considering the recurrence, some of the risk rehabilitation enterprises may continue to form new risk-latent enterprises, and with the spread of risks, new risk-latent enterprises become risk transmission enterprises and infection rehabilitation enterprises, which will not affect the number of risk-unknown enterprises.In order to effectively control the number of enterprises affected by risks, it is necessary to take certain measures to reduce the infection rate, which requires enterprises to actively seek the cooperation of other manufacturers when producing products, find enterprises eroded by risks, avoid risks in time, and reduce infection from the root. The enterprise itself actively takes anti-risk measures, understands the enterprises it contacts to prevent itself from being infected, understands the potential risk factors of the department of the enterprise affected by the risk in the production process of the product, assesses its risk level, prepares emergency plans in advance, reduces the business dealings between the department affected by the risk and other departments that are not affected, and avoids the expansion of the risk infection rate.
- With the strengthening of government financial support and government policy supervision, the number of risk-spreading enterprises in some manufacturers affected by risks in the supply chain began to decline, and the ability of enterprises to eliminate risks was enhanced. Therefore, to reduce the number of risk-spreading enterprises in manufacturers affected by risks, the government can appropriately introduce relevant policies, such as giving appropriate financial subsidies to help the trapped manufacturing enterprises get rid of the risks as soon as possible and resume production. A series of targeted measures can be taken to reduce the tax ratio and reduce the burden on enterprises.
- With the increase in the proportion of enterprises losing immunity in the supply chain, the ability of enterprises to mitigate risks decreases, and they are easily eroded by risks, resulting in an increase in the number of risk-spreading enterprises affected by risks. Therefore, to reduce the spread of risks in the supply chain, enterprises should gradually improve their ability to cope with risks, avoid the impact of risks, strengthen contact with other enterprises in the supply chain, and enhance their ability to cope with risks. As the information flow, capital flow, logistics, and other aspects among manufacturing enterprises in the supply chain are interconnected and closely related, one party will be implicated in many parties when it receives the risk impact, and the enterprises affected by the risk should actively inform the relevant business enterprises of their own information affected by the risk to provide a reference for the risk prevention of other enterprises. In the process of dealing with risks, each node enterprise should help each other and avoid fighting alone. Enterprises that have not been affected by risks should actively face risks while assisting those affected by risks to reduce the impact of risk erosion on the supply chain.This paper studies the mechanism of supply chain risk transmission from a macro perspective. In this study, enterprises without obvious symptoms are easily ignored after risk erosion, so asymptomatic infected enterprises are increased, a virus transmission model is established, and the impact of risk transmission in the supply chain on enterprises is analysed. Taking the risk impact of unknown risk enterprises, risk-latent enterprises, risk transmission enterprises, and infection recovery enterprises as examples, suggestions for dealing with supply chain risks are put forward from three perspectives: reducing the infection rate and transmission rate, strengthening government support, and coping with risk erosion. At the same time, because the SEAIR model is a typical model for studying virus transmission, with the development of society, human beings have more diverse ways to deal with virus transmission, and the model for studying virus transmission also needs to be improved. The research process of this paper does not consider the time lag between the measures taken by enterprises and their effects after suffering from risk erosion, that is, the transmission process of enterprises affected by risks and solving risk problems has a time transmission process. The length of the time transmission process has a certain impact on the number of risk transmission enterprises and infection recovery enterprises. Therefore, future studies will improve on the basis of the SEAIR model and increase the time delay for analysis.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Au (Year) | Research Perspective | Research Method/Used Models | Whether to Consider Asymptomatic Infection | Whether Recurrent Is Considered |
---|---|---|---|---|
Zhang and Qiao [5] | Risk assessment of prefabricated building supply chain | The whole life cycle of a construction project | NO | NO |
Chan Tsz Wai [6] | Benefits and critique of modular integrated architecture | Multi-attribute group decision making | NO | NO |
Wang et al. [7] | The relationship between risk factors in the prefabricated building supply chain | Factor analysis | NO | NO |
Zhang [8] | The relationship between risk transmission factors in the prefabricated building supply chain | Block chain technology | NO | NO |
Gu [9] | Supply chain risk factor identification and analysis | SCOR, Principal component analysis | NO | NO |
Zhang [10] | Risk assessment of prefabricated concrete supply chain | Cloud model | NO | NO |
An et al. [11] | Rank supply chain influencers | SEM | NO | NO |
Wang et al. [12] | Risk assessment of prefabricated building supply chain | C-OWA operator weighting and grey clustering evaluation methods | NO | NO |
Al-Hussein M. H. Al-Aidrous [13] | The relationship between the influencing factors of ground-floor housing in prefabricated buildings | Statistical Package of Social Science (SPSS) | NO | NO |
Kristopher Orlowski [14] | Evaluation of influencing factors of special weatherproof seals for prefabricated buildings | Neo-Hookean Model | NO | NO |
Luo et al. [15] | Explore the supply chain cyber risks of prefabricated housing projects | Social network analysis | NO | NO |
Ibrahim Yahaya Wuni [16] | Identify risk factors for modular integrated construction [16] | Fuzzy comprehensive evaluation | NO | NO |
Syed Saad [17] | Analysis of the key factors required for success in the Malaysian construction industry | Data analysis methods | NO | NO |
Yiping Tan [20] | Risk propagation | A stochastic SIS dynamics model | NO | NO |
Ayse Peker Dobie [21] | Risk propagation, risk balancing points | SIS model with virus mutation in a variable population size | NO | NO |
Wonhyung Choi [22] | Risk propagation | A spatial SIS epidemic model with a free boundary | NO | NO |
Jianhua Chen [23] | Emergency supply chain transmission mechanism | Improve SIR | NO | NO |
Di Liang [24] | Supply chain risk propagation | SIR | NO | NO |
Guanhua Ni [25] | Parameters Sensitivity Analysis of COVID-19 | Propose a SCEIR model | NO | NO |
Isa Abdullahi Baba [26] | Risk balancing point | The transmission dynamics of the disease are studied | NO | NO |
Mauro Aliano [27] | Dynamic risk propagation model | Time delay is considered on the basis of the SIR model | NO | NO |
Bo Li [28] | Analyse the dynamic behaviour of infectious disease models | A discrete-time SIR epidemic model | NO | NO |
Tchavdar T. Marinov [29] | Infectious disease models applied to COVID-19 in Latin America. | Presents an Adaptive Susceptible–Infected–Removed (A-SIR) epidemic model with time-dependent transmission and removal rates | NO | NO |
This paper | Risk propagation in the supply chain of prefabricated buildings | Consider the recurrent SEAIR model | Yes | Yes |
Serial Number | Expression Assignment |
---|---|
1 | Unknown enterprise at risk = INTEG (30 − Number of infections, 30) |
2 | Latent risk enterprises = INTEG (Number of infections-Spread quantity + number of latent enterprises forming new, 0) |
3 | Risk transmission enterprises = INTEG (spread quantity − government support, 0) |
4 | Infection rehabilitation enterprises = INTEG (Government support − number of enterprises losing immunity, 0) |
5 | Number of latent enterprises forming new = number of enterprises losing immunity. |
6 | Number of infections = unknown risk enterprises × infection rate |
7 | Spread quantity = latent risk enterprises × Transmission rate |
8 | Government support = risk transmission enterprises × (Government financial support + government policy supervision) |
9 | Number of enterprises losing immunity = Loss of immunity ratio × infection rehabilitation enterprises |
10 | Infection rate = 0.10 |
11 | Transmission rate = 0.15 |
12 | Government financial support = 0.25 |
13 | Government policy supervision = 0.25 |
14 | Loss of immunity ratio = 0.20 |
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Wang, Y.; Sun, R.; Ren, L.; Geng, X.; Wang, X.; Lv, L. Risk Propagation Model and Simulation of an Assembled Building Supply Chain Network. Buildings 2023, 13, 981. https://doi.org/10.3390/buildings13040981
Wang Y, Sun R, Ren L, Geng X, Wang X, Lv L. Risk Propagation Model and Simulation of an Assembled Building Supply Chain Network. Buildings. 2023; 13(4):981. https://doi.org/10.3390/buildings13040981
Chicago/Turabian StyleWang, Yingchen, Ran Sun, Liyuan Ren, Xiaoxiao Geng, Xiangmei Wang, and Ling Lv. 2023. "Risk Propagation Model and Simulation of an Assembled Building Supply Chain Network" Buildings 13, no. 4: 981. https://doi.org/10.3390/buildings13040981
APA StyleWang, Y., Sun, R., Ren, L., Geng, X., Wang, X., & Lv, L. (2023). Risk Propagation Model and Simulation of an Assembled Building Supply Chain Network. Buildings, 13(4), 981. https://doi.org/10.3390/buildings13040981