Application of Group Decision Making in Shipping Industry 4.0: Bibliometric Analysis, Trends, and Future Directions
Abstract
:1. Introduction
2. Bibliometrics
2.1. Publication Trend Analysis
2.2. Analysis of the Influence of the Literature, Authors, and Institutions
2.3. Keyword Co-Occurrence
2.4. Cocitation Analysis
2.5. Cooperation Analysis
3. GDM Implemented in Shipping Industry 4.0
3.1. Opinion/Preference Representation
3.1.1. Reciprocal Preference Relation
3.1.2. Two-Tuple Linguistic Model
3.1.3. Fuzzy Sets
3.2. Consensus Measure
3.3. Feedback Mechanism
- (1)
- Identification rule and direction rule (IR–DR). The IR is used to identify DMs, alternatives, and preference elements with poor levels of consensus. Let , , and denote the level of consensus among DMs, alternatives, and elements, respectively; is the predefined consensus threshold, and the IR can be expressed as follows:
- (i)
- Identify DMs with poor levels of consensus: .
- (ii)
- Identify alternatives with poor levels of consensus: .
- (iii)
- Identify elements with poor levels of consensus: .
After the nonconsensus DMs, alternatives, and preference elements are identified, they are adjusted using the directions provided by DR. For example, Wu et al. [86] devised a local feedback strategy to guide the CRP consisting of four identification rules and two direction rules. Zha et al. [87] considered the willingness of experts to adjust their opinions for which a limited confidence feedback mechanism was proposed to divide DMs into groups and provide acceptable advice to the groups.Using the IR–DR rule to adjust the opinions of adjustment experts is usually time- and resource-intensive, so many academics choose the second rule. - (2)
- Optimization-based consensus rule (OCR). The OCR is primarily used to minimize the distance or cost before and after the adjustment of DMs [88,89], decision options, and preference elements [90]. The use of OCR allows for as much as possible of the original preference information of DMs to be retained. For example, Ji et al. [91] used a combination of subgroup clustering and a feedback mechanism based on minimal variance weights to determine the online response assessment satisfaction of peer-to-peer (P2P) accommodation users in a large group of decision makers. Cao et al. [85] considered the consensus state of the experts and proposed a personalized feedback mechanism on the basis of a maximal harmony model. Gai et al. [92] developed a minimal adjustment bidirectional feedback model considering cohesion applied to the blockchain platform selection problem in supply chains. Wu et al. [93] proposed a dual personalized feedback mechanism that could generate suggestions by weighting the average of personalized group opinions, achieving a balance between group consensus and individual personality.
3.4. Selection of Alternatives
3.4.1. TOPSIS
3.4.2. Best–Worst Method (BWM)
3.4.3. Analytic Hierarchy Process (AHP)
- (1)
- A hierarchical model is established in which different preferences are divided into layers from top to bottom according to attributes, with the lower preferences influencing or being subordinate to the upper preferences and being influenced by or dominating the preferences of the lower layers.
- (2)
- Pairwise comparison arrays are constructed using pairwise comparisons. The eigenvectors of each pairwise comparison array are calculated and a consistency test is performed. If the test is passed, the eigenvectors are the weight vectors; if not, the comparison matrix needs to be reconstructed.
- (3)
- The combined weight vector of the lowest level to the target is calculated and tested for consistency, and if the test is passed, the decision can be made according to the results of the combined weight vector.
4. Application Scenarios of GDM Methods in Shipping Industry 4.0
4.1. Safety Risk Control
4.2. Sustainable Development
4.3. Other Applications
5. Discussions and Future Directions
5.1. Future Direction Analysis Based on Bibliometrics
- (1)
- Analysis of publication and citation trends showed that sustainable development and the control of risks in ship navigation are currently the focus of most papers, and related issues are receiving academic attention. However, other issues were less studied by academics, and scholars could try to study other related issues that have not been studied or combine these studied issues with other areas to avoid research duplication.
- (2)
- Analysis of the influence of the literature, authors, and institutions revealed that publications from Oxford had more citations, indicating that Oxford scholars have made outstanding contributions to this area of research. The Wuhan University of Technology also had a number of studies in this area. For experienced scholars and institutions, more cooperation can be carried out with researchers from other regions to promote global research and joint development.
- (3)
- According to the analysis of highly cited papers, scholars have focused more on decision-making methods. However, the used decision methods are not sufficiently innovative, and could be better developed and more deeply integrated with specific applications in the shipping industry.
- (4)
- In keyword co-occurrences, keywords regarding supply chain management, maritime security, fuzzy sets, TOPSIS, and AHP appeared more frequently. In the future, scholars could increase their research on keywords with high frequency. Scholars can also innovate on the basis of low-frequency keywords, such as biolevel models and decision support systems. Scholars can also find new breakthroughs through keyword regrouping.
- (5)
- In cocitation analysis, authors, studies, and journals with high cocitation frequency are more important and contribute prominently to research in this field. Scholars can read the relevant literature in a portfolio manner, focus on journals with high cocitation frequency, and try to publish subsequent articles in these journals.
5.2. Analysis of GDM Methods
- (1)
- While fuzzy sets are widely used in the representation of opinions/preferences in GDM, other methods are less used, and scholars can expand fuzzy sets more. Whichever method of information representation is used, it is also designed to deal with the uncertainty of the environment, of which subsequent researchers also need to be aware. If the decision is time-constrained, experts may be asked to formulate the information in a way that is easy to handle. For example, relevant DMs should follow the same expression format to simplify the steps of processing the format, which can better handle emergencies.
- (2)
- Feedback mechanisms were rarely addressed in existing articles. In general, the level of consensus among all DMs in GDM is usually below the expected consensus threshold due to the different preferences of DMs for different alternatives, but a higher level of consensus can indicate a better decision outcome. When the consensus level of DMs is less than the consensus threshold, a feedback mechanism is applied to identify discordant decision makers and generate suggestions to modify their initial preferences and help them in obtaining satisfactory results. Future research on the feedback mechanism could be added. It is also worth considering how to set a more reasonable consensus threshold.
- (3)
- In the GDM, the reliability of experts involved in the assessment directly affects the validity of the final alternative ranking results, and an attempt could be made to expand the group of experts. Alternatively, deviations in opinion between experts can be compared, and the opinion of experts that deviates too much may be less reliable; consideration can be given to reduce the weight of that expert. In addition, experts’ opinions may be influenced by others, so how to ensure the independence of experts’ opinions in the GDM process needs to be investigated.
- (4)
- As described in Section 3.4, scholars have mainly used traditional selection methods, and new selection methods could be investigated. Traditional selection methods are more suitable for cases with small data volumes. With the development of Shipping Industry 4.0 and the increased demand for processing large data volumes, this aspect is also worth investigating.
5.3. Analysis of Shipping Industry 4.0 Applications
- (1)
- The GDM method can provide a reasonable solution for the assessment and control of safety risks in Shipping Industry 4.0, which has been less of a focus in existing research.For example, the risk assessment of liquefied natural gas (LNG) transportation routes has become a hot topic in recent years. Practically, the risk assessment of LNG transportation routes is a really complicated issue that involves ship-navigation, meteorological, oceanic-condition, environmental, legal, political, and many other fields [118]. In the existing literature, there is less research on human-factor risk control in the shipping industry. However, given the unique operating conditions of the shipping industry, where crews are exposed to many hazardous situations, a proper estimation of human error can assist in the implementation of emergency training on ships and reduce crew risk. Thus, a GDM process involving multiple professional departments is essential for obtaining a reliable risk evaluation result. In addition, the CRP of GDM can effectively reduce disputes about risk assessment among departments and improve the agreement on the final risk evaluation results.
- (2)
- For the sustainable development of Shipping Industry 4.0, such as the selection of materials for ship construction, ballast water discharge, the selection of marine fuels, the assessment of ship environmental pollution, and the governance of ship carbon emissions, GDM can also be applied. Replacing heavy fuel oil (HFO) with alternative green energy is a promising way to reduce shipping emissions and promote sustainable shipping development. Promoting the application of alternative fuels in shipping has become an industry consensus that promotes profound changes in the international shipping industry, and profoundly impacts upstream- and downstream-related industries in shipping. However, the application of alternative fuels in shipping involves many uncertainties, such as fuel supply, ship financing, technological development, and standard setting. Generally, it is difficult to select the best alternative marine fuel, and environmental, economic, technological, and social factors need to be considered. In this case, multicriteria GDM methods can be used to determine the sustainability order of alternatives and rank the marine fuels.
- (3)
- In recent years, the cruise industry has flourished to become one of the most rapidly developing branches of the shipping industry. Some scholars have investigated cruise ships from different perspectives, but few researchers have paid attention to the rating of cruise ships and cruise routes. The evaluation and rating of cruise ships can also be regarded to be a GDM problem that requires the combination of subjective and objective data to obtain the final rating results of cruise ships. Considering that disagreement among decision makers may emerge, an interaction-based feedback mechanism can be used to improve the consensus level of the group and obtain a satisfactory rating result.
- (4)
- With the development of the Internet and social media, online public opinion also more or less impacts the development of the shipping industry, and analyzing the impact of public opinion on the shipping market is an important research direction. For example, the Suez Canal blockage (SCB) event in 2021 attracted great public attention. This event significantly affected the container market, resulting in an unbalanced distribution of containers. In addition, the blockage affected the global market of oil, gas, and copper. This event aroused wide public concern, and it is meaningful to analyze public attitudes towards SCB and guide public opinion towards a positive trend; the group opinion evolution model can be applied to analyze this process.
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Authors | Article Title | Bibliometric Tools | Application Areas |
---|---|---|---|
Orduña-Malea, E., & Costas, R. | Link-based approach to study scientific software usage: the case of VOSviewer [22] | VOSviewer | Computing |
Di Vaio, A., Hassan, R., & Alavoine, C. | Data intelligence and analytics: A bibliometric analysis of human–Artificial intelligence in public sector decision-making effectiveness [23] | VOSviewer | Computing |
Lazzari, C., McAleer, S., & Rabottini, M. | The assessment of interprofessional practice in mental health nursing with ethnographic observation and social network analysis: a confirmatory and bibliometric network study using VOSviewer [24] | VOSviewer | Medicine |
Huang, T., Zhong, W., Lu, C., Zhang, C., Deng, Z., Zhou, R., Zhao, Z., & Luo, X | Visualized Analysis of Global Studies on Cervical Spondylosis Surgery: A Bibliometric Study Based on Web of Science Database and VOSviewer [25] | VOSviewer | Medicine |
Wang, X., Xu, Z., Su, S. F., & Zhou, W. | A comprehensive bibliometric analysis of uncertain group decision making from 1980 to 2019 [26] | VOSviewer | Decision science |
Guan, H., & Huang, T. | Rural tourism experience research: a bibliometric visualization review (1996–2021) [27] | VOSviewer & Citespace | Tourism |
Authors | Article Title | Publication Year | Times Cited | Publisher City |
---|---|---|---|---|
Wang, YM., Yang, JB., Xu, DL., & Chin, KS. | The evidential reasoning approach for multiple attribute decision analysis using interval belief degrees [29] | 2006 | 238 | Amsterdam |
Bulut, E., Duru, O., Keçeci, T., & Yoshida, S. | Use of consistency index, expert prioritization and direct numerical inputs for generic fuzzy-AHP modeling: A process model for shipping asset management [30] | 2012 | 84 | Oxford |
Celik, M., Cebi, S., Kahraman, C., & Er, ID. | Application of axiomatic design and TOPSIS methodologies under fuzzy environment for proposing competitive strategies on Turkish container ports in maritime transportation network [31] | 2009 | 79 | Oxford |
Dulebenets, MA. | A comprehensive multi-objective optimization model for the vessel scheduling problem in liner shipping [32] | 2018 | 78 | Amsterdam |
Wu, B., Zong, LK., Yan, XP., & Soares, CG. | Incorporating evidential reasoning and TOPSIS into group decision-making under uncertainty for handling ship without command [33] | 2018 | 77 | Oxford |
Celik, M., Kahraman, C., Cebi, S., & Er, ID. | Fuzzy axiomatic design-based performance evaluation model for docking facilities in shipbuilding industry: The case of Turkish shipyards [34] | 2009 | 74 | Oxford |
Murty, KG., Wan, YW., Liu, JY., Tseng, MM., Leung, E., Lai, KK., & Chiu, HWC. | Hongkong International Terminals gains elastic capacity using a data-intensive decision-support system [35] | 2005 | 72 | Catonsville |
Wu, B., Yip, TL., Yan, XP., & Soares, CG. | Fuzzy logic based approach for ship-bridge collision alert system [36] | 2019 | 67 | Oxford |
Karahalios, H. | The application of the AHP-TOPSIS for evaluating ballast water treatment systems by ship operators [37] | 2017 | 66 | Oxford |
Yang, ZL., Bonsall, S., & Wang, J. | Approximate TOPSIS for vessel selection under uncertain environment [38] | 2017 | 53 | Oxford |
Authors | Number of Papers | Percentage Share |
---|---|---|
Soares C.G. | 8 | 5.63% |
Wu B. | 6 | 4.23% |
Yan X.P. | 6 | 4.23% |
Demirel H. | 5 | 3.52% |
Wang Y. | 4 | 2.82% |
Wang Y.J. | 4 | 2.82% |
Yang Z.L. | 4 | 2.82% |
Yip T.L. | 4 | 2.82% |
Alarcin F. | 3 | 2.11% |
Balin A. | 3 | 2.11% |
Affiliations | Number of Papers | Percentage Share |
---|---|---|
Wuhan University of Technology | 11 | 7.75% |
Instituto Superior Tecnico | 8 | 5.63% |
Universidade de Lisboa | 8 | 5.63% |
Istanbul Technical University | 7 | 4.93% |
Chalmers University of Technology | 6 | 4.23% |
Hong Kong Polytechnic University | 6 | 4.23% |
Dalian Maritime University | 5 | 3.52% |
Shanghai Maritime University | 5 | 3.52% |
Yildiz Technical University | 5 | 3.52% |
Category | Application | Reference(s) |
---|---|---|
Safety risk control | Ship equipment risk control | [45,50,57,112,113,114,115,116,117] |
Navigational risk control | [33,36,46,47,48,54,58,118,119,120,121,122,123,124,125,126,127,128,129] | |
Human factors risk control | [44,59,75,130,131,132] | |
Sustainable development | Port Management | [34,42,133,134,135,136,137,138,139,140,141,142,143,144,145,146,147,148] |
Transport Management | [28,32,38,41,60,149,150,151,152,153,154] | |
Energy planning | [49,74,155,156,157,158] | |
Environmental pollution control | [37,39,94,159,160,161,162,163,164,165,166] | |
Corporate Financial Management | [30,167,168] | |
Container yard resource optimisation | [35] | |
Other applications | Ship supply decisions | [169] |
Choice of shipyard | [53] |
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Yang, Y.; Gai, T.; Cao, M.; Zhang, Z.; Zhang, H.; Wu, J. Application of Group Decision Making in Shipping Industry 4.0: Bibliometric Analysis, Trends, and Future Directions. Systems 2023, 11, 69. https://doi.org/10.3390/systems11020069
Yang Y, Gai T, Cao M, Zhang Z, Zhang H, Wu J. Application of Group Decision Making in Shipping Industry 4.0: Bibliometric Analysis, Trends, and Future Directions. Systems. 2023; 11(2):69. https://doi.org/10.3390/systems11020069
Chicago/Turabian StyleYang, Yiling, Tiantian Gai, Mingshuo Cao, Zhen Zhang, Hengjie Zhang, and Jian Wu. 2023. "Application of Group Decision Making in Shipping Industry 4.0: Bibliometric Analysis, Trends, and Future Directions" Systems 11, no. 2: 69. https://doi.org/10.3390/systems11020069
APA StyleYang, Y., Gai, T., Cao, M., Zhang, Z., Zhang, H., & Wu, J. (2023). Application of Group Decision Making in Shipping Industry 4.0: Bibliometric Analysis, Trends, and Future Directions. Systems, 11(2), 69. https://doi.org/10.3390/systems11020069