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  1. (School of Management, Shijiazhuang Tiedao University, Shijiazhuang, Hebei 050043, China)
  2. (School of Civil Engineering, Shijiazhuang Tiedao University, Shijiazhuang, Hebei 050043, China)



Full life cycle, High-speed railway, Investment decision-making, Non-linear methods

1. Introduction

Data from authoritative German institutions show that the annual growth rate of the global railway market has reached 3.4%, providing new opportunities for China's railway industry to "go global". On the other hand, overseas railway projects face significant challenges, such as large scale, high investment, long periods, technical complexity, and the interaction of risk factors [1]. Therefore, it is essential to assess the investment targets of overseas high-speed railway (HSR) construction projects accurately, establish an effective investment decision-making mechanism, and achieve accurate investment decision-making for overseas railway construction projects as a means of improving overseas railway investment returns and optimizing resource allocation. The accuracy of investment prediction directly affects the correctness of investment decisions. Based on this, many scholars have researched the application of artificial intelligence methods in construction projects. For example, Zhang [2] analyzed the existing problems of artificial intelligence applications in China's railway industry and proposed suggestions for its development from a macro perspective. Zhang et al. [3] elaborated on the application and significance of artificial intelligence methods in construction planning, construction survey, construction preparation, and construction. Xiong [4], Gao [5], Deng [6], and other studies have proposed using artificial neural networks to estimate the engineering costs from the perspective of the construction phase and demonstrated the feasibility of the method through examples. Markovic et al. examined railway reconstruction investment decision-making methods by analyzing and establishing an optimal network for predicting Serbian railway network reconstruction activities in conjunction with the Levenberg-Marquardt training algorithm [7]. Comparative analysis of the above literature found that most scholars discussed the application of artificial intelligence methods from the macro level, such as the current situation of railways, or only considered railway construction investment from the perspective of the construction phase, but they ignored the importance of historical data in prediction and decision-making work and did not conduct in-depth research on intelligent methods for the full life cycle investment decision of overseas HSR based on a large amount of historical data. In the decision-making stage of engineering projects, traditional decision-making methods based on discount cash flow and ratio estimation methods often ignore the uncertainty of the environmental market and the irreversibility of investment decisions [8], which cannot meet the requirements of HSR construction for long periods, high investment amounts, and high technical difficulties. The maximum value method used to solve linear problems and the fuzzy membership function method lacking practical application flexibility does not apply to non-linear and complex investment systems for HSR [9]. Therefore, finding feasible intelligent decision-making methods for HSR projects is significant.

In addition, for overseas railway general contractors and investors, the following are important tasks faced by China's railway industry in the process of "going global" under the guidance of the Belt and Road Initiative: the full life cycle investment of engineering construction projects, selecting reasonable and efficient methods for investment prediction and decision-making, reducing engineering costs, and striving to achieve the best economic and social benefits with the minimum investment [2]. Therefore, investment decision-making methods need to be studied from the perspective of the full life cycle. Considering the full life cycle, this paper introduced non-linear methods, such as the particle swarm optimization (PSO) algorithm and the error back propagation neural network (BPNN) in the construction phase to construct an intelligent investment evaluation model for overseas HSR for the construction phase and the first 20 years of operation. On the other hand, because of the lack of data for the subsequent 80 years of operation, the investment target for the subsequent 80 years was predicted based on expert experience through Fuzzy Inference System (FIS). Finally, the optimal decision for the alternatives took the optimal full life cycle investment as the basis.

2. Construction of Full Life Cycle Investment Decision-making Model for Overseas HSR

2.1 Construction of Engineering Feature Index System

Investment decision-making for overseas HSR is a complex system project, where construction period investment is only a part of a HSR project engineering investment, and operating period investment involves investment in technological upgrades, equipment maintenance, and other aspects of HSR operation. Therefore, based on the full life cycle theory, this study examined the investment decision-making methods for overseas HSR from the perspectives of construction period investment and operating period investment, which are important components of HSR investment.

2.1.1 Selection of Construction Stage Investment Engineering Feature Indicators

Based on research on relevant literature, "Railway Line Design Specification" (TB10098-2017), Civil Engineering Standard Measurement Method (CESMM3), and various standards of the International Union of Railways (UIC), international environment, construction conditions, and technical standards are the main factors affecting overseas HSR construction investment considering external influencing factors. Given the complexity and diversity of these factors, this paper intends to use a fishbone diagram to analyze and sort them out, as shown in Fig. 1.

From the perspective of the HSR construction project, based on the project breakdown structure (PBS) decomposition of an overseas HSR, the construction cost of overseas projects includes expenses in subgrade engineering, bridge engineering, tunnel engineering, track engineering, station engineering, ``four-power engineering'', and environmental protection engineering. Through an analysis of relevant literature and combined with expert opinions, this article initially selected the following engineering characteristics as indicators: subgrade proportion, subgrade width, embankment proportion, and cutting proportion in subgrade engineering; proportion of extra-large bridges and proportion of large-to-medium-sized bridges in bridge engineering, proportion of large tunnels and proportion of extra-large tunnels in tunnel engineering; track type and number of main tracks in track engineering [10]; station building area in transmission station engineering [11]. This article does not consider them because the impact of ``four power'' engineering and environmental protection engineering is relatively small.

Fig. 1. Fishbone diagram of overseas HSR construction investment amount based on external factor influence.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig1.png

2.1.2 Selection of Engineering Characteristic Index System during Operational Phase

Similar to the selection method of the engineering characteristic index system during the construction investment phase, this article combined literature and data analysis and considered external influencing factors, believing that the international environment, construction conditions, operational characteristics [12], and technical standards have significant effects on the investment during the operational phase [13]. Fig. 2 shows the fishbone diagram analysis results.

Based on the PBS decomposition of overseas HSR and from the perspective of the projects themselves, the preliminarily selected investment characteristics for the operation phase include the width and protection type of the subgrade, the proportion of large and medium-sized bridges, the proportion of extra-large bridges, the proportion of medium and long tunnels, the proportion of extra-long tunnels, the type of railway track, and the number of main tracks.

Fig. 2. Fishbone diagram of the investment amount in the operation stage of overseas HSR based on external factors.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig2.png

2.1.3 Determination of Investment Characteristics in the Construction and Operation Phases of Overseas HSR

The questionnaire designed based on the Likert's five-point scale was distributed, and SPSS software was used to analyze and process the questionnaire data. The characteristics met the reliability and validity requirements. Each characteristic with a score of four or above, rated as important by more than 90% of the experts, was determined as a principle for determining engineering characteristics. Finally, the investment characteristics for the construction and operation phases of overseas HSR were determined, as listed in Tables 1 and 2.

Table 1. Engineering Characteristic Indicators for Investment in the Construction Stages of Overseas HSR.

Macro perspective

Classification

Engineering characteristics

External factors

International environment

Political stability

Construction conditions

Geological conditions, hydrological conditions, construction market

Design standards

Railroad standard, with or without rail seam

Operating characteristics

Number of years of opening to traffic, average daily passenger flow

Internal factors

Subgrade engineering

Width of subgrade, type of subgrade protection

Bridge engineering

Proportion of extra-large bridges and proportion of large and medium bridges

Tunneling engineering

Proportion of medium and long tunnels and proportion of extra-long tunnels

Track engineering

Track type and number of main tracks

Station engineering

Station building area

Table 2. Engineering Characteristic Indicators for Investment in the Operation Stage of Overseas HSR.

Macro perspective

Classification

Engineering characteristics

External factors

International environment

Political stability

Construction conditions

Construction market, geological conditions, hydrological conditions, climatic environment

Design standards

Railroad standards, design speed, mode of transport

Internal factors

Subgrade engineering

Proportion of subgrade, width of subgrade, proportion of embankment, proportion of cutting

Bridge engineering

Proportion of extra-large bridges and proportion of large and medium bridges

Tunneling engineering

Proportion of large tunnels and proportion of extra-large tunnels

Track engineering

Track type and number of main tracks

Station engineering

Station building area

2.2 Construction and Adjustment of Basic Database

This paper collected, analyzed, and organized data on completed or under construction overseas HSR cases through field investigations of railway investors, operators and construction units, collecting HSR investment data, and based on existing research data from relevant literature. A basic investment decision-making information database was constructed using the extracted engineering characteristic indicators. Thirty-two cases were collected, involving eight countries, including the United Kingdom, Japan, the United States, and France. Fig. 3 shows the portion of the basic database stored in Access.

This paper compared HSR projects or similar projects in different regions to obtain regional adjustment coefficients and adjusted the case database according to the coefficients. Similarly, the database was adjusted for time and currency using 2020 as the base year and the British pound as the standard. Table 3 lists the adjustment approach.

This study preliminarily determined the research scope of engineering features based on a large amount of data from similar completed projects. As the research scope includes qualitative and quantitative indicators, all engineering features should be described quantitatively before conducting data analysis. In particular, based on suggestions from industry experts and statistical data, the feature quantification level was set as a quantitative standard. Tables 4 and 5 list the quantification standards for construction investment engineering and operating investment engineering feature indicators, respectively.

Q1 to Q32 represent the 32 overseas HSR cases in the case database. The 19 input parameters, including engineering characteristics, such as political stability, geological conditions, and hydrological conditions, were represented by J1 to J19. The output parameter O represented the investment amount per kilometer of overseas HSR construction, measured in hundred million pounds. Table 6 lists the basic data constructed after quantifying the construction phase data. Table 7 lists the quantified data of the operating phase.

Fig. 3. Basic database of information materials for investment decisions of overseas HSR.
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Table 3. Approach to Adjusting the Time, Region, and Currency.
../../Resources/ieie/IEIESPC.2023.12.6.483/tb3.png
Table 4. Quantitative Standards for Engineering Investment Characteristics during the Construction Phase of Overseas HSR.

Engineering characteristics indicators

Quantification level

1

2

3

4

5

Political stability

Very stable

Stable

Average

Occasional conflicts

Frequent conflicts

...

...

...

...

...

...

Proportion of large and medium-sized bridges

0–10%

10–20%

20–30%

30–40%

More than 40%

Proportion of extra-large bridges

0–10%

10–20%

20–30%

30–40%

More than 40%

Proportion of large and medium tunnels

0–10%

10–20%

20–30%

30–40%

More than 40%

Proportion of extra-large bridges

0–10%

10–20%

20–30%

30–40%

More than 40%

Track type

Ballasted track

Ballastless track

Number of main tracks

Single track

Dual track

Three tracks

Station building area (10,000 square meters)

0–10

10–20

20–30

30–40

> 40

Table 5. Quantitative Standards for Engineering Investment Characteristics in the Operational Phase of Overseas HSR.

Engineering characteristics indicators

Quantification level

1

2

3

4

5

Political stability

Very stable

Stable

Average

Occasional conflicts

Frequent conflicts

...

...

...

...

...

...

Proportion of large and medium-sized bridges

0–10%

10–20%

20–30%

30–40%

More than 40%

Proportion of extra-large bridges

0–10%

10–20%

20–30%

30–40%

More than 40%

Proportion of large and medium tunnels

0–10%

10–20%

20–30%

30–40%

More than 40%

Proportion of extra-large bridges

0–10%

10–20%

20–30%

30–40%

More than 40%

Track type

Ballasted track

Ballastless track

Number of main tracks

Single track

Dual track

Three tracks

Station building area(10,000 square meters)

0–10

10–20

20–30

30–40

> 40

Table 6. Basic Data Table for the Construction Phase Investment of Overseas HSR Projects.

Case

N1

N2

N 3

N 4

N 5

N 6

N 7

N 8

...

N 17

O

Q1

2

2

4

3

1

1

1

1

...

1

0.07

Q2

4

3

1

1

2

1

1

1

...

5

0.07

Q3

4

2

5

1

2

1

1

1

...

2

0.1

Q4

2

2

4

3

1

1

1

1

...

2

0.08

...

...

...

...

...

...

...

...

...

...

...

...

Q31

2

4

4

5

3

1

1

1

...

1

0.06

Q32

4

4

5

4

2

2

8

3

1

0.09

Table 7. Basic Data Table for Engineering Investment in the First 20 Years of the Operation Phase of Overseas HSR.

Case

J1

J2

J3

J4

J5

J6

J7

J8

...

J19

O

Q1

2

2

2

4

1

5

1

3

...

2

0.53

Q2

3

2

3

3

1

1

1

5

...

3

0.64

Q3

2

2

3

3

2

1

1

3

...

3

1.04

Q4

3

2

2

2

1

1

3

4

...

2

0.74

...

...

...

....

...

...

...

...

...

...

...

...

Q31

2

4

4

3

1

1

1

1

...

2

0.67

Q32

2

4

3

3

1

2

1

1

...

2

0.98

2.3 Construction of Investment Decision Model for Overseas HSR Projects

The alternative plans for overseas HSR investment decision-making were considered from the perspective of the optimal investment over the full life cycle. A complex non-linear intelligent method established a full-life-cycle investment decision-making model based on historical data of overseas railway cases. Fig. 4 shows the specific construction ideas.

Fig. 4. Construction ideas of the full-life-cycle investment decision model for overseas HSR.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig4.png

2.3.1 Adaptability of PSO-BPNN Investment Decision Model

Chinese international contractors often use the traditional norm unit price method for investment estimation in overseas HSR construction. Although improvements have been made to adapt to local conditions, weaknesses, such as lagging, linearity, and simple fitting, still exist, and the estimation calculation has a heavy burden and a low accuracy. Therefore, this paper proposed the PSO-BPNN model considering the randomness, complexity, and non-linearity of the investment system of overseas HSR construction projects. The PSO algorithm overcomes the defects of traditional clustering methods, such as dependence on the selection of initial values and easy fall into local extreme values. It helps improve the reliability of selecting similar cases before prediction, improving the accuracy of the prediction results. The cooperation with the BPNN algorithm greatly reduces the workload of investment prediction and improves the calculation efficiency and accuracy.

2.3.2 Select Similar Cases using PSO Clustering Analysis

The relationship between the cases needs to be analyzed first when performing cluster analysis on the samples. The K-means clustering method was chosen to establish the model, and the Euclidean distance was used to operate between the samples and the cluster centers, as shown in Eq. (1). Similarity $s=1-d\left(xy\right)$.

(1)
$d_{xy}=\sqrt{\sum _{i=1}^{n}\left(x_{i}-y_{i}\right)^{2}}$,

where $n$ represents the number of samples; $x_{i}$ represents the $\mathrm{i}$$^{\mathrm{th}}$ sample; $m$ represents the number of data feature dimensions included in each sample.

The results of traditional K-means clustering are influenced strongly by the initial values and are prone to fall into local extrema, which may not yield the optimal clustering [14]. In contrast, the PSO algorithm uses the population as the base information and finds the optimal solution through constant iterations. During each iteration, $x_{i}$ and $v_{i}$ are updated according to Eqs. (2) and (3), and the fitness function is used to calculate the fitness value and update individual and global best values. The algorithm terminates when the maximum number of iterations is reached, or the fitness value falls below the preset threshold.

(2)
$v_{i}^{q+1}=wv_{i}^{q+1}+c_{1}r_{1}\left(p_{i}^{q}-x_{i}^{q}\right)+c_{2}r_{2}\left(g_{i}^{q}-x_{i}^{q}\right)$,
(3)
$x_{i}^{q+1}=x_{i}^{q}+v_{i}^{q+1}$,

where $v_{i}$ represents the velocity of the $\mathrm{i}$$^{\mathrm{th}}$ particle, $p_{i}$ and $g_{i}$ represents the $\mathrm{i}$$^{\mathrm{th}}$ individual and global extrema, respectively; $\mathrm{w}$ is the inertia weight factor; $\mathrm{q}$ represents the current iteration number; $c_{1}$ and $c_{2}$ are the acceleration coefficients; $r_{1}$ and $r_{2}$ are random numbers between 0 and 1.

2.3.3 Prediction of Construction Stage Investment based on BPNN Model

The BPNN is a multi-layer feedforward neural network with the characteristics of simple structure, multiple adjustable parameters, and good operability. The network learns through the forward propagation of signals and backward propagation of errors and takes quantized engineering feature data as the model input and investment objectives as the output. When the actual output value does not match the expected output value, the process of error backpropagation is initiated, and the output error value is reduced continuously through repeated training, resulting in an accurate prediction target.

2.3.4 Prediction of Operational Stage Investment based on FIS

This study focuses on the full-life-cycle investment of overseas HSR. One hundred years was selected as the analysis and calculation period of the full life cycle of overseas HSR based on the "Railway Engineering Construction Standards" released by the National Railway Administration because most overseas HSR systems are still in operation. The BPNN was used to predict the first 20 years, while the FIS was used to determine the trend of operation investment for the next 80 years based on expert experience in the case of no historical data available. The FIS is a system based on the theory of fuzzy sets and fuzzy inference methods that can process fuzzy information. Its establishment involves five steps [15]: (1) fuzzification of the exact quantity; (2) generation of "if-then" conditional rules; (3) inference; (4) compositional operation; (5) defuzzification.

3. Model Application

3.1 Engineering Example

The LY HSR is located in central-northern England, with a total length of 109 kilometers, mainly for passenger transportation. Tracks that conform to TGV standards are used. The project was completed and placed into operation in 2007, according to European standards, and has a maximum design speed of 300 km/h; 23% of the route is located in tunnels. The completion and opening of this railway have brought tremendous economic opportunities to the central-northern region of England.

3.2 Alternative Scheme Decision for the LY HSR Investment

Based on the theory of the full life cycle, according to the investment information database of overseas HSR, and combined with the geological environment, route layout principles, and engineering characteristics of the LY high-speed sail, three alternative route schemes (L1, L2, and L3) were initially selected. PSO cluster analysis was used to extract similar cases, and the BPNN model and FIS were used to predict the full-life-cycle investment. The route with the highest economic benefits was selected by comparing the full-life-cycle investment amount.

3.2.1 Selection of Similar Cases

The engineering characteristics of the construction phase investment of the three alternative routes were quantified using the quantification standards; Table 8 lists the results.

This article took the L1 line of the LY HSR as an example to demonstrate owing to the similarity in the prediction approach. The PSO clustering method was used to extract cases with high similarity to the L1 line from the database of construction stage investments of 32 overseas HSR. MATLAB was used for PSO clustering analysis, and the optimal clustering was obtained when the number of clusters was two, and the maximum iteration number was 500. Fig. 5 shows the clustering results and centers. Based on PSO clustering, 18 similar projects were extracted from the database, of which 16 projects were used as training samples; the other two projects were used as validation samples.

Similarly, through the Matlab software, 20 engineering cases similar to the investment plan of the L1 line of the LY HSR were obtained.

Fig. 5. Clustering results.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig5.png
Fig. 6. BPNN training process.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig6.png
Fig. 7. Convergence process of BPNN.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig7.png
Table 8. Quantitative Results of Investment Engineering Characteristics in the Alternative Schemes for the Construction Phase of the LY HSR.

Project name

Quantized value

J1

J2

J3

J4

..

J9

J10

J11

J12

J13

J14

J15

...

J19

L1

2

1

2

3

...

2

3

4

3

2

1

1

...

2

L2

3

2

3

3

...

3

2

3

2

3

2

3

...

1

L3

2

2

2

3

...

1

3

2

4

3

4

1

...

3

3.2.2 Investment Prediction of L1 Line Construction Phase based on BPNN

(1) Building BPNN

The BPNN model was used to predict the engineering investment objective of the L1 line. The Sigmoid function was selected. There were 19 input nodes and one output node, representing 19 engineering feature indicators and the investment amount in the construction phase. The number of hidden layer nodes was 2${\times}$19+1=39.

(2) Running BPNN

Based on the data from the 18 similar projects, 16 of them were used as training samples, and the remaining two were used for testing. The allowable error was 10$^{-10}$, and the maximum iteration number was 500. Figs. 6 and 7 show the training process of the data and the convergence process of the data, respectively.

(3) Validation of BPNN

The output results of the model were not fixed because of the randomness of the initial weights and thresholds. Therefore, this paper reduced the error by taking the average value of 15 sets of model training, and the results are presented in Table 9. A comparison of the verification samples with the actual values showed that the relative errors were ${-}$1.85% and 1.45%, respectively, within the allowable range of ${\pm}$3%. Similarly, this paper predicted the 20-year operating investment of the L1 line scheme based on 20 similar engineering cases in the database, and the predicted operating investment for the first 20 years of the scheme was 7.45 million pounds per kilometer, with a reasonable error.

Table 9. Analysis of investment results in the construction phase of the L1 line (Unit: 100 million pounds/kilometer).

Sample number

17

18

L1 line

Predicted value

1

0.57

0.66

0.54

2

0.53

0.69

0.53

3

0.54

0.67

0.61

4

0.55

0.68

0.54

5

0.58

0.70

0.51

6

0.54

0.66

0.53

7

0.52

0.68

0.54

8

0.49

0.65

0.52

9

0.52

0.64

0.56

10

0.50

0.70

0.55

11

0.54

0.67

0.53

12

0.58

0.63

0.51

13

0.55

0.69

0.52

14

0.56

0.70

0.53

15

0.58

0.71

0.58

Mean value

0.55

0.68

0.53

Actual value

0.54

0.69

0.54

Error

-1.85%

1.45%

(4) Comparison with actual investment

The prediction results of the model showed that the construction phase investment of the L1 line was 53 million pounds per kilometer, the operating investment for the first 20 years was 7.45 million pounds per kilometer, and the annual operating investment was 373,500 pounds per kilometer. Among the actual data collected, the actual investment for the construction phase of the L1 line was 54 million pounds per kilometer, with an error of 1.85%. Because its operation started on November 14, 2007, the total actual investment during the operation phase was approximately 4.9 million pounds per kilometer, and the annual operating investment was 376,900 pounds per kilometer, with an error of 0.64% compared to the model calculation. The errors were within the allowable range of ${\pm}$3%. The comparison revealed reasonable prediction results of the model.

This study analyzed the data from both the BPNN method and actual engineering aspects. First, the prediction accuracy of the BPNN was tested again using two sets of verification samples based on training 16 samples to determine the feasibility of the investment decision-making model. This demonstrated the accuracy of the prediction from the method level. Second, the predicted values of the construction and operating investments of the LY HSR in the first 20 years were compared with the actual values. The errors were within the reasonable range of ${\pm}$3%, which verified the accuracy of the prediction from the actual engineering perspective.

3.2.3 Prediction of the L1 Line Operating Investment based on Fuzzy Inference

Owing to the lack of historical data on HSR operation, this paper predicted the future operating trend of the L1 line in the future 20-100 years, i.e., the ratio of the annual operating investment amount of the latter 80 years to that of the first 20 years, based on expert experience using the fuzzy inference method.

First, the fuzzy indicators affecting the operating investment for the latter 80 years were inferred to be environmental factors, operational characteristic factors, and scale factors, and the membership functions of the trend of operating investment changes were obtained through expert experience. Figs. 8-12 present the FIS

structure and membership function graphs. Fig. 8 shows the set fuzzy system. The input is the environmental factors, operational characteristics factors, and scale factors. The output is the change ratio of operational investment. Figs. 9-12 present the fuzzy setting of the system. The triangular membership function (trimf) was selected as the membership function.

Fuzzy inference relationships were established between various engineering characteristics based on expert experience, and Fig. 13 shows the trend of operating investment changes.

According to expert experience, an interval of (0, 10) was used as a standard to evaluate the environmental factors, operating characteristic factors, and scale factors. The environmental factors were rated as two owing to the stable political environment and geological conditions and relatively low investment costs of the L1 line. As the number of years of opening to traffic and the average daily passenger flow was also low, the operating characteristic factors were rated as two. The route length and proportion of bridges and tunnels were relatively high, so it was rated as eight. The input variable for environmental factors, operating characteristic factors, and scale factors were (2, 2, 8), and Fig. 14 shows the results.

According to Fig. 14, the ratio of annual operating investment in the latter 80 years to that in the first 20 years was five, so the annual operating investment in the latter 80 years was 47.36 million pounds per kilometer. Based on the future operating characteristics of the L1 line and research on the overseas HSR operating investment in academia and industry, academic and industry studies on overseas HSR operating investments showed that it was feasible to forecast the operating investments using this method.

Similarly, the full-life-cycle investments of the L2 and L3 lines were predicted, as shown in Table 10. According to the principle of optimal total investment, alternative schemes were compared, and the results showed that the L1 line scheme had the lowest full-life-cycle investment, so the L1 line scheme was finally determined as the optimal investment plan.

In practical cases, the traditional quota calculation method was used to predict and verify the construction-period investment of different investment schemes multiple times. The operating-period investment was predicted and demonstrated continuously in combination with the actual operation of the LY HSR and the opinions of the operating party. Eventually, the L1 line scheme was selected, which was consistent with the prediction result of this paper. This result demonstrated the rationality of the model established in this paper.

Table 10. Decision Table for Alternative Schemes.

Alternative schemes

Construction investment (100 million pounds/km)

Operational investment in the 20 years (ten thousand pounds/km)

Operational investment in the latter 80 years (ten thousand pounds/km)

Full line mileage/km

Full-life-cycle investment (100 million pounds)

L1 line

0.53

745

4736

109

116.63

L2 line

0.54

766

4779

123

135.3

L3 line

0.55

834

4902

117

129.87

Fig. 8. FIS structure diagram.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig8.png
Fig. 9. Membership function graph of environmental factors.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig9.png
Fig. 10. Membership function graph of operating characteristic factors.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig10.png
Fig. 11. Membership function graph of scale factors.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig11.png
Fig. 12. Membership function graph of operation investment amount variation trend.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig12.png
Fig. 13. Display of fuzzy inference rules in FIS.
../../Resources/ieie/IEIESPC.2023.12.6.483/fig13.png
Fig. 14. Investment trend during the operation phase of the L1 line.
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4. Conclusion

With the implementation of China's "going global" strategy, the number of overseas railway projects undertaken by China is increasing. Despite this, many domestic companies still rely on their domestic experience to make investment decisions when making overseas investments, which often leads to significant economic losses because of the differences in construction markets. Therefore, it is necessary to consider the international construction market environment and select a reasonable localized investment decision-making method. This study constructed an index system of engineering characteristics based on local requirements, national policies, standard specifications, and objectively existing climate and terrain conditions to maximize the localization of the decision-making method. This paper provides a reference for decision-makers to make accurate investment decisions for overseas HSR projects. Second, this study analyzed the full life cycle of HSR, fully considering the construction and operating costs, to construct an investment decision-making model for overseas HSR projects. The investment scheme was selected based on the lowest full-life-cycle cost, helping decision-makers make decisions from an economic perspective and improve the social and economic benefits.

Although the predictive results of the model are accurate and feasible, there are still some problems. This study constructed the investment decision-making model based on historical data, and the amount of historical data learned by the model was closely related to its accuracy. Therefore, future practical applications will need to continuously improve and update the database based on the new HSR projects to enrich the historical database, ensuring that the database dynamically reflects the emergence of new HSR technologies and policies and ensuring the scientificity and use value of investment decision-making.

ACKNOWLEDGMENTS

This study was supported by the Hebei Postgraduate Innovation Grant Program (Grant Number: CXZZBS2020144).

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Author

Xiaochen Duan
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Xiaochen Duan is a professor working at Shijiazhuang Tiedao University and graduated from Tianjin University. His research interests include engineering economics and cost management, engineering construction management, and non-linear complex system virtual management.

Jingjing Hao
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Jingjing Hao is a doctoral candidate at Shijiazhuang Tiedao University. Her research interests include intelligent prediction of engineering cost and engineering management.

Yanliang Niu
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Yanliang Niu is an associate professor at Shijiazhuang Tiedao University who graduated from Tongji University, China. His research interests include international engineering management.