Research on Enterprise Financial Risk Conduction Mechanism Based on System Dynamics
Abstract
:1. Introduction
- (1)
- The flow of cash being dynamic and being unable to effectively model the flow trend of cash without realistic meaning;
- (2)
- There may be more than one source of risk to the enterprise, and if one focuses on only one source of risk and loses sight of the other, the control programme cannot cover it effectively;
- (3)
- Risk sources can affect each other if there is a strong coupling effect risk interaction and conduction that can cause more harm to the enterprise.
2. Definition of Concept and Theoretical Foundation
2.1. Financial Risk
2.2. Enterprise Financial Risk Conduction
2.2.1. The Concept of Enterprise Financial Risk Conduction
2.2.2. Characteristics of Enterprise Financial Risk Conduction
- (1)
- Dynamicity
- (2)
- Latent Property and Concealment
- (3)
- Interactivity
- (4)
- Feedback nature
2.3. Theoretical Foundation
2.3.1. Cash Flow Theory
2.3.2. Stakeholder Theory
2.3.3. System Theory
- (1)
- Hall Three-dimensional Structure
- (2)
- System Dynamics
2.4. Value-at-Risk Measurement Model
3. Enterprise Financial Risk Transmission Modelling
3.1. Factors Affecting the Index System
3.2. Methods of Indicator Selection
3.3. Causal Analysis
3.3.1. Causality
3.3.2. Feedback Loops
3.4. Construction of Enterprise Financial Risk Conduction Path
3.5. Financial Risk Conduction Modeling
3.6. Computer Simulation
4. Control Measures
5. Conclusions
- (1)
- In this paper, the indicators are not refined in the system part; if the indicators can be fully subdivided, the source of financial risk can be more accurately detected.
- (2)
- The author does not consider production technology (such as the Cobb–Douglas function) to demonstrate finance risk and confidence interval as a measure of a risk.
- (3)
- The author does not indicate the internal or external nature of risk appearance.
- (4)
- The author does not consider the probability of a different scenario and/or a number of trigger strategies to avoid or decrease a risk. These are questions that the author plans to address in future research.
Funding
Data Availability Statement
Conflicts of Interest
1 | The formula is based on Li Ying (2013) [44]; P is the financial risk measure obtained by building a logistic regression model. VaR takes a 95% confidence interval; if p > 0.5, the enterprise is at financial risk; if p < 0.5, the enterprise is healthy. |
2 | For different enterprises, the calculation method of employee quality is different. This paper refers to (Tang Xueliang, 2016) [56], which is divided into Chinese state-owned enterprises, private enterprises, and foreign-funded enterprises. The 0, 0.43, 0.86, 0.4, 0.36, 0.73, 0.35, 0.69 coefficients reference (Tang Xueliang, 2016) [56]. The cost unit is CNY 1/person. |
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Cash and cash equivalents = Integ (cash inflow − cash outflow, initial value of cash and cash equivalents) |
Cash inflow = Financing capital inflow + investment cash inflow + operating cash inflow + reserve funds of enterprises |
Cash outflow = Outflow of financing funds + investment cash outflow + operating cash outflow |
Current ratio = (cash and cash equivalents + accounts receivable + new foreign investment × proportion of short−term investment)/(accounts payable + short−term loan repayment + long−term loan repayment) |
Equity to liability ratio = (long−term loan + short−term loan + accounts payable)/(retained earnings + reserve funds of enterprises + capital stock) |
Ratio of shareholders’ equity to fixed assets = (Retained earnings + capital stock)/fixed assets |
Long−term loan ratio = Long−term loans/(fixed assets + intangible assets + increasing investment outside the enterprise) |
p = EXP (6.289× Current ratio− 3.735× Equity to liability ratio−1.11× Ratio of shareholders’ equity to fixed assets − 8.5× Long−term loan ratio + 0.028× average accounts receivable turnover ratio + 0.631× inventory turnover − 6.823× turnover rate of total assets−4.85× value increasing rate of the value retention + 75.23× VaR)/(1 + EXP (6.289× current ratio−3.735× equity to liability ratio − 1.11× ratio of shareholders’ equity to fixed assets − 8.5× long−term loan ratio + 0.028× average accounts receivable turnover ratio + 0.631× inventory turnover − 6.823× turnover rate of total assets − 4.85× value increasing rate of the value retention + 75.23× VaR)1 |
Net cash flow from investment activities = Investment cash inflow − investment cash outflow |
Net cash flow of financing activities = Financing cash inflow − financing cash outflow |
Net cash flow from operating activities = Operating cash inflow − operating cash outflow |
Financing fund inflow = Long−term loan financing + investment absorption + short−term loan financing + other cash received related to financing activities |
Outflow from financing activities = Long−term loan repayment + short−term loan repayment + short−term loan interest + long−term loan interest + dividend payment + other cash paid related to financing activities |
Investment cash inflow = Disposal of fixed assets + disposal of intangible assets + bond interest income + dividends from foreign investment + profits from joint ventures of other units |
Investment cash outflow = Internal investment + new external investment |
Operating cash inflow = Cash received from credit sales + cash received + tax refund |
Operating cash outflow = Payroll payment + amount payable on demand + cash payment + VAT + other taxes paid by the enterprise |
VAT = (Sales volume − unit price of raw materials × sales volume) × tax rate |
Accounts receivable = INTEG (Cash received from credit sales − credit sales, initial value of accounts receivable) |
Bad debt = Accounts receivable × bad debt rate |
Cash received from credit sales = Accounts receivable/Collection cycle |
Long−term loan = INTEG (Long−term loan financing − long−term loan repayment, initial value of long−term loan) |
Long−term loan interest = Long−term loan × long−term loan interest rate |
Short−term loan = INTEG (Short−term loan financing − short−term loan repayment, initial value of short−term loan) |
Short−term loan interest = Short−term loan × short−term loan interest rate |
Credit sales = Sales × (1 − cash receipt rate) |
Cash receipts = Sales × Cash receipt rate |
Sales amount = Sales unit price × sales volume |
Sales volume = a × number of customers (coefficient a is obtained from the regression equation between the number of customers over the years and the sales volume) |
Number of customers = a × fixed assets + b × intangible assets + c × market demand + d × staff quality (a, b, c, d coefficients are obtained from the multiple regression equation of fixed assets, intangible assets, market demand, staff quality to customer quantity over the years) |
Staff quality of Chinese state−owned enterprises = IF THEN ELSE (staff training cost ≤ 800, 0, (IF THEN ELSE (staff training cost < 3250, 0.43, (IF THEN ELSE (staff training cost = 3250, 0.86, (IF THEN ELSE (staff training cost ≤ 4600, 0.4, 0))))))) |
Staff quality of Chinese private enterprises = IF THEN ELSE (staff training cost ≤ 1050, 0, (IF THEN ELSE (staff training cost < 3400, 0.36, (IF THEN ELSE (staff training cost = 3400, 0.73, (IF THEN ELSE (staff training cost ≤ 4800, 0.36, 0))))))) |
Staff quality of foreign−funded enterprises in China = IF THEN ELSE (staff training cost < 3950, 0.35, (IF THEN ELSE (staff training cost = 3950, 0.69, 0.35)))2 (Tang Xueliang, 2016) [55] |
Fixed assets = INTEG (Fixed assets increase − depreciation − fixed assets disposal, initial value of fixed assets) |
Intangible assets = INTEG (Conversion to intangible assets − amortization of intangible assets − disposal of intangible assets, initial value of fixed assets) |
Investment outside the enterprise = INTEG (Increasing investment outside the enterprise − withdrawal of investment outside the enterprise, initial value of investment outside the enterprise) |
Pay immediately after purchase = Purchase amount of raw materials × pay immediately after purchase rate |
Credit purchase amount = Raw material purchase amount × (1 − pay immediately after purchase rate) |
Accounts payable = INTEG (Purchase amount on credit − cash payment, initial value of accounts payable) |
Net profit = Total profit − total profit × income tax rate |
Retained earnings = INTEG (Net profit − dividend payment, initial retained earnings) |
Dividend payment = Net profit × dividend payment rate |
Total profit = Sales − sales volume × unit price of raw materials − taxes and surcharges − selling expenses − administrative expenses − research and development − financial expenses + disposal of fixed assets + disposal of intangible assets − other expenses |
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Zhang, Z. Research on Enterprise Financial Risk Conduction Mechanism Based on System Dynamics. Systems 2022, 10, 247. https://doi.org/10.3390/systems10060247
Zhang Z. Research on Enterprise Financial Risk Conduction Mechanism Based on System Dynamics. Systems. 2022; 10(6):247. https://doi.org/10.3390/systems10060247
Chicago/Turabian StyleZhang, Zhi. 2022. "Research on Enterprise Financial Risk Conduction Mechanism Based on System Dynamics" Systems 10, no. 6: 247. https://doi.org/10.3390/systems10060247
APA StyleZhang, Z. (2022). Research on Enterprise Financial Risk Conduction Mechanism Based on System Dynamics. Systems, 10(6), 247. https://doi.org/10.3390/systems10060247