A Multi-Objective Evaluation Method for Smart Highway Operation and Management
Abstract
:1. Introduction
2. Literature Review
2.1. The Definition of Smart Highway
2.2. Current Status of Construction and Development of Smart Highways
2.3. Methods Available for the Establishment of Evaluation Systems
3. Establishment of the Smart Highway Evaluation Framework
3.1. Methods Available for the Establishment of Evaluation Systems
- The quantification of empirical indicators should be conducted using the Delphi method.
- The Analytic Hierarchy Process (AHP) is utilized to analyze the key factors identified by experts.
- A group decision-making method is utilized to improve the accuracy of the results.
- The entropy weight method and critic method are incorporated to improve the rationality and operability of the intelligent highway evaluation system.
- The principle of total deviation minimization is introduced for computing the combined weight vector.
3.2. Hierarchical Design of the Framework
3.3. Definition of Evaluation Indicators
4. Methods for Assigning Weights to Evaluation Indicators
4.1. Analytic Hierarchy Process (AHP) Method
4.2. Group Decision-Making Method (GDM)
4.3. Entropy Weight Method (EWM)
4.4. CRITIC Method
4.5. Minimum Deviation Method
5. Application Results and Discussion
5.1. Subjective Weights Calculation and Discussion
5.2. Objective Weights Calculation and Discussion
5.3. Combined Weights Calculation and Discussion
6. Conclusions
- ◆
- The evaluation system in this research offers comprehensive indicator content with precise definitions. It encompasses detailed guidelines for assessing indicators, addressing the current status and future trend objectives of smart highway development. This ensures the applicability of the evaluation system for assessing smart highways in diverse regions with varying development directions.
- ◆
- Introducing a novel model method that combines subjective and objective weighting, breaking away from the conventional practice where researchers tend to rely solely on either subjective or objective evaluation methods. This innovative approach holds promise in offering valuable insights for the advancement of future evaluation systems.
- ◆
- Comprehensive consideration of facilities and operational processes. This evaluation system not only considers the health of civil and electromechanical facilities but also categorizes facility types explicitly. Additionally, it considers traffic and maintenance aspects during highway operation, collecting data on user experiences. The entire evaluation system, from assessing facility performance to the impact on traffic services, provides a benchmark for the development of final maintenance and management plans, creating a virtuous cycle for smart highways throughout their entire lifecycle.
- ◆
- Guidance for designing regional standards. The findings and insights from this study’s evaluation system can assist decision-makers in designing regional standards for smart highway construction. It offers theoretical and practical guidance for the effective evaluation of smart highway construction.
- ◆
- Cross-domain applicability. After adjusting indicators and recalculating weights, the evaluation system can be extended to various domains, including smart roads, intelligent water transport, and digital transportation. This expansion enhances the system’s scope.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Guideline Level B | Indicator Level C | |
---|---|---|
Subgrade (B11) | Roadbed settlement (B111) | Number and location of roadbed settlements (C1) |
Shoulder damage (B112) | Shoulder damage area (C2) | |
Slope collapse (B113) | Number and location of slope collapse (C3) | |
Damage to roadbed structures (B114) | Number and location of damaged retaining walls (C4) | |
Displacement/settlement values of retaining walls (C5) | ||
Curb stone lacking (B115) | Length of curb stone lacking (C6) | |
Washout gully due to water damage (B116) | Number and location of washout gullies due to water damage (C7) | |
Poor drainage (B117) | Number of blocked drainage locations (C8) | |
Pavement (B12) | Pavement damage (B121) | Pavement surface condition index (PCI) (C9) |
Pavement riding quality (B122) | Pavement Riding Quality Index (RQI) (C10) | |
Unevenness of riding quality (C11) | ||
Pavement rutting depth (B123) | Pavement Rutting Depth Index (RDI) (C12) | |
Unevenness of rut depth (C13) | ||
Pavement bumping (B124) | Pavement bumping index (PBI) (C14) | |
Pavement surface wearing (B125) | Pavement surface wearing index (PWI) (C15) | |
Pavement skidding resistance (B126) | Pavement skidding resistance index (SRI) (C16) | |
Pavement structure strength (B127) | Pavement structure strength index (PSSI) (C17) | |
Bridge and tunnel structures (B13) | Superstructure condition index (SPCI) (B131) | Upper load-bearing components (C18) |
Upper general components (C19) | ||
Bearing (C20) | ||
Substructure condition index (SBCI) (B132) | Wing wall, abutment wall (C21) | |
Conical slope (C22) | ||
Bridge pier (C23) | ||
Bridge abutment (C24) | ||
Pier and abutment foundation (C25) | ||
Riverbed (C26) | ||
Regulating structures (C27) | ||
Bridge deck condition index (BDCI) (B133) | Bridge pavement (C28) | |
Expansion joint device (C29) | ||
Sidewalk (C30) | ||
Guardrail (C31) | ||
Drainage system (C32) | ||
Lighting (C33) | ||
Deflection deformation (B134) | Bridge displacement and deformation (C34) | |
Joint dislocation (B135) | Vertical joint misalignment height difference (C35) | |
Ancillary facilities (B14) | Protective facilities (B141) | Anti-collision guardrail (C36) |
Anti-glare board (C37) | ||
Anti-fall net (C38) | ||
Sound barrier (C39) | ||
Center median movable guardrail (C40) | ||
Crash barrel (C41) | ||
Crash cushion (C42) | ||
Isolation barrier (B142) Signs (B143) | Isolation barrier (C43) | |
Indicator sign (C44) | ||
Warning sign (C45) | ||
Prohibition sign (C46) | ||
Milestone (C47) | ||
Variable message sign (C48) | ||
Profile marking (C49) | ||
Hundred meters marking (C50) | ||
Markings (B144) | Road marking (C51) | |
Raised pavement marking (C52) | ||
Green facilities (B145) | Green belt (C53) |
Guideline Level B | Indicator Level C |
---|---|
Monitoring system (B21) | Central control and management subsystem (C54) |
Video surveillance subsystem (C55) | |
Environmental and equipment monitoring subsystem (C56) | |
Traffic monitoring subsystem (C57) | |
Toll collection system (B22) | Toll booth subsystem (C58) |
Toll settlement center system (C59) | |
Communication system (B23) | Data and video communication subsystem (C60) |
Broadcast communication subsystem (C61) | |
Telephone communication subsystem (C62) | |
Power supply and lighting system (B24) | Power distribution system (C63) |
Lighting subsystem (C64) | |
Information release system (B25) | Information release subsystem (C65) |
Guideline Level B | Indicator Level C | ||
---|---|---|---|
Traffic operation (B31) | Efficiency (B311) | Traffic service (B3111) | Peak saturation (C66) |
Traffic service volume (C67) | |||
Average speed (C68) | |||
Toll service (B3112) | Percentage of ETC lanes (C69) | ||
Toll collection status (C70) | |||
Manual lane service level (C71) | |||
Emergency dispatch (B3113) | Average arrival time (C72) | ||
Traction service satisfaction (C73) | |||
Safety (B312) | Road safety (B3121) | Monitoring facility coverage rate (C74) | |
Accuracy of overload and over limit monitoring (C75) | |||
Structural sensing facility coverage rate (C76) | |||
Vehicle and user safety (B3122) | Traffic accident rate (C77) | ||
At-fault accidents during traffic operations (C78) | |||
Intelligence (B313) | Network information sharing (B3131) | Highway network coverage rate (C79) | |
Meteorological traffic information transmission (C80) | |||
Lane-level control (B3132) | Lane flow equilibrium level (C81) | ||
Traffic guidance level (C82) | |||
Service area quality (B3133) | Service facility integrity (C83) | ||
Parking service capacity (C84) | |||
Vehicle range extension service (C85) | |||
Sustainability (B314) | Energy consumption (B3141) | Green energy share (C86) | |
Carbon emission level (C87) | |||
Electric power consumption (C88) | |||
Maintenance management (B32) | Efficiency (B321) | Maintenance execution (B3211) | Punctuality rate of maintenance work order execution (C89) |
Maintenance operation passage impact rate (C90) | |||
Safety (B322) | Maintenance safety assurance (B3221) | At-fault accidents during maintenance period (C91) | |
Facility management at maintenance construction sites (C92) | |||
Intelligence (B323) | Maintenance decision-making (B3231) | Medium- to long-term planning (C93) | |
Intelligent equipment (B3232) | The level of civil structure health monitoring (C94) | ||
The level of electromechanical equipment monitoring (C95) | |||
The level of application of intelligent inspection equipment (C96) | |||
Maintenance management level (B3233) | The level of information technology in daily maintenance (C97) | ||
The level of information technology in periodic inspection (C98) | |||
Sustainability (B324) | Environmental impact (B3241) | Exhaust emission level (C99) | |
Dust control level (C100) | |||
Noise pollution level (C101) | |||
Maintenance process (B3242) | Application of new energy (C102) | ||
Road surface cleaning (C103) | |||
The utilization rate of green materials (C104) |
Target Level A | A1 | A2 | A3 |
---|---|---|---|
Expert 1 | 0.16 | 0.3 | 0.54 |
Expert 2 | 0.16 | 0.3 | 0.54 |
Expert 3 | 0.33 | 0.33 | 0.33 |
Expert 4 | 0.71 | 0.11 | 0.18 |
Expert 5 | 0.46 | 0.13 | 0.41 |
Expert 6 | 0.44 | 0.11 | 0.44 |
Expert 7 | 0.59 | 0.25 | 0.16 |
Expert 8 | 0.62 | 0.12 | 0.27 |
Expert 9 | 0.14 | 0.24 | 0.62 |
Expert 10 | 0.33 | 0.33 | 0.33 |
Expert 11 | 0.33 | 0.33 | 0.33 |
Expert 12 | 0.33 | 0.33 | 0.33 |
Weight Values | |||
---|---|---|---|
Expert 1 | 0.11 | 0.0803 | 0.0778 |
Expert 2 | 0.11 | 0.0803 | 0.0778 |
Expert 3 | 0.04 | 0.0886 | 0.0926 |
Expert 4 | 0.16 | 0.0739 | 0.0675 |
Expert 5 | 0.06 | 0.0876 | 0.0896 |
Expert 6 | 0.07 | 0.0869 | 0.0879 |
Expert 7 | 0.10 | 0.0792 | 0.0776 |
Expert 8 | 0.11 | 0.0809 | 0.0784 |
Expert 9 | 0.12 | 0.0767 | 0.0734 |
Expert 10 | 0.04 | 0.0886 | 0.0926 |
Expert 11 | 0.04 | 0.0886 | 0.0926 |
Expert 12 | 0.04 | 0.0886 | 0.0926 |
Target Level A | A1 | A2 | A3 |
---|---|---|---|
The corrected weights | 0.3796 | 0.2441 | 0.3763 |
Highways | Highway A | Highway B | Highway C | Highway D | Highway E |
---|---|---|---|---|---|
A1 score | 91.1 | 92.24 | 94.56 | 92.32 | 95 |
A2 score | 100 | 95.2 | 96 | 100 | 90 |
A3 score | 95 | 96.4 | 95.2 | 94.3 | 91.8 |
Weight Values | |||
---|---|---|---|
A1 | 0.7782 | 0.2218 | 0.4157 |
A2 | 0.8387 | 0.1613 | 0.3023 |
A3 | 0.8495 | 0.1505 | 0.2820 |
Weight Values | ||||
---|---|---|---|---|
A1 | 0.4241 | 3.3694 | 1.4289 | 0.4624 |
A2 | 0.4109 | 2.2306 | 0.9165 | 0.2966 |
A3 | 0.3691 | 2.0178 | 0.7448 | 0.2410 |
Indicator Level | Combined Weight Values | |||||
---|---|---|---|---|---|---|
First-level indicators | B11(0.18) | B12(0.40) | B13(0.32) | B14(0.10) | B21(0.30) | B22(0.30) |
B23(0.20) | B24(0.20) | B25(0.10) | B31(0.58) | B32(0.42) | ||
Second-level indicators | B111(0.25) | B112(0.10) | B113(0.25) | B114(0.10) | B115(0.05) | B116(0.15) |
B117(0.10) | B121(0.35) | B122(0.30) | B123(0.15) | B124(0.05) | B125(0.05) | |
B126(0.05) | B127(0.05) | B131(0.30) | B132(0.30) | B133(0.30) | B134(0.05) | |
B135(0.05) | B141(0.35) | B142(0.10) | B143(0.25) | B144(0.20) | B145(0.10) | |
B311(0.27) | B312(0.45) | B313(0.17) | B314(0.11) | B321(0.29) | B322(0.44) | |
B323(0.14) | B324(0.13) | |||||
Third-level indicators | B3111(0.41) | B3112(0.30) | B3113(0.29) | B3121(0.38) | B3122(0.62) | B3131(0.29) |
B3132(0.33) | B3133(0.38) | B3141(1) | B3211(1) | B3221(1) | B3231(0.39) | |
B3232(0.29) | B3233(0.32) | B3241(0.53) | B3242(0.47) |
Indicator Level | Combined Weight Values | |||||
---|---|---|---|---|---|---|
Indicator Level C | C1(1) | C2(1) | C3(1) | C4(0.50) | C5(0.50) | C6(1) |
C7(1) | C8(1) | C9(1) | C10(0.82) | C11(0.18) | C12(0.81) | |
C13(0.19) | C14(1) | C15(1) | C16(1) | C17(1) | C18(0.70) | |
C19(0.18) | C20(0.12) | C21(0.02) | C22(0.01) | C23(0.30) | C24(0.30) | |
C25(0.28) | C26(0.07) | C27(0.02) | C28(0.40) | C29(0.25) | C30(0.10) | |
C31(0.10) | C32(0.10) | C33(0.05) | C34(1) | C35(1) | C36(0.20) | |
C37(0.10) | C38(0.10) | C39(0.10) | C40(0.10) | C41(0.20) | C42(0.20) | |
C43(1) | C44(0.20) | C45(0.20) | C46(0.20) | C47(0.10) | C48(0.10) | |
C49(0.10) | C50(0.10) | C51(0.50) | C52(0.50) | C53(1) | C54(0.30) | |
C55(0.30) | C56(0.10) | C57(0.30) | C58(0.70) | C59(0.30) | C60(0.40) | |
C61(0.30) | C62(0.30) | C63(0.70) | C64(0.30) | C65(1) | C66(0.35) | |
C67(0.30) | C68(0.35) | C69(0.29) | C70(0.43) | C71(0.28) | C72(0.48) | |
C73(0.52) | C74(0.36) | C75(0.30) | C76(0.34) | C77(0.55) | C78(0.45) | |
C79(0.60) | C80(0.40) | C81(0.42) | C82(0.58) | C83(0.50) | C84(0.25) | |
C85(0.25) | C86(0.25) | C87(0.52) | C88(0.23) | C89(0.37) | C90(0.63) | |
C91(0.52) | C92(0.48) | C93(1) | C94(0.41) | C95(0.30) | C96(0.29) | |
C97(0.48) | C98(0.52) | C99(0.30) | C100(0.37) | C101(0.33) | C102(0.20) | |
C103(0.50) | C105(0.30) |
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Li, L.; Long, Y.; Peng, C. A Multi-Objective Evaluation Method for Smart Highway Operation and Management. Appl. Sci. 2024, 14, 5694. https://doi.org/10.3390/app14135694
Li L, Long Y, Peng C. A Multi-Objective Evaluation Method for Smart Highway Operation and Management. Applied Sciences. 2024; 14(13):5694. https://doi.org/10.3390/app14135694
Chicago/Turabian StyleLi, Li, Yixin Long, and Chongmei Peng. 2024. "A Multi-Objective Evaluation Method for Smart Highway Operation and Management" Applied Sciences 14, no. 13: 5694. https://doi.org/10.3390/app14135694
APA StyleLi, L., Long, Y., & Peng, C. (2024). A Multi-Objective Evaluation Method for Smart Highway Operation and Management. Applied Sciences, 14(13), 5694. https://doi.org/10.3390/app14135694