2. Literature Review
In the literature, the conventional discounted cash flow approaches to ship investment are most likely to be one-sided considering only the financial perspective. The net present value and the internal return rate are the most common tools for the discounted cash flow approach used in analyzing the projects [
9]. However, these tools are limited in analyzing the alternative projects, since they are based on several assumptions, subjective preferences, and future estimations [
10].
MCDA methods are highly preferred in the literature. For instance, in [
11], the studies on green supplier evaluations are reviewed. Vendor selection phenomena are studied by [
12]. Some of the studies deal with the sector oriented problems, and others deal with the methodological or structural improvements. For example, in [
13], a novel model for supply chain agility is provided.
Fuzzy TOPSIS analysis methodologies are widely used in various fields in different countries [
14]. They provide solutions for complicated decision analysis problems [
15]. It has been used in numerous areas and academic disciplines for decades [
16]. In [
17], Python codings for the application of the TOPSIS method are provided. In the literature, there exist several MCDA comparison studies such as [
18]. Some studies compare different versions of a method, and others focus on comparing different methods. The results may differ depending on the type of the problem, the scale used, and the methods they contain. In [
19], it is shown that TOPSIS is more suitable for their intended problem. In [
20], it stated that TOPSIS method is better than the analytical hierarchy process (AHP) method, which is one of the most used methods in the literature. In [
21], the MCDA methods are compared, and it is found that TOPSIS gives better results. In the maritime industry, using three Taiwan container shipping companies as a case, Fuzzy TOPSIS is used to evaluate the financial performance (including financial structure, solvency, turnover, and profitability) in order to reduce the burden of high bunker prices [
22]. In [
23], TOPSIS and fuzzy axiomatic design for the Turkish container ports are combined to evaluate competitive strategies. In [
24], a fuzzy delphi TOPSIS approach is adopted to analyze how to select the optimal bunkering ports for liner shipping companies. Port operations often have many risks in their processes such as loading, handling, and unloading. In order to understand strategic position and geographic advantage of the container ports of Turkey, intuitionistic fuzzy TOPSIS is adopted. It is used to evaluate the risk analysis (including crane, vessel stress, vessel performance, loading/unloading, personnel, and weather) of ports in maritime industry in terms of failure mode and effect analysis [
25]. From the perspective of cargo operations, a ship loader is adopted as a case to analyze decision-making problems in maritime business and transport industry based on an interval type-2 fuzzy AHP and TOPSIS method [
26]. Big data analytics has become one of the important topic in the maritime industry. In order to understand the challenges of adopting new technology, fuzzy delphi-AHP-TOPSIS methodology is proposed. It is used to determine the obstacles in big data analytics adoption in the maritime initiatives in Singapore [
27]. Regarding other research fields, fuzzy TOPSIS is used to evaluate the sustainable acid rain control option (economic, environmental, institutional, social, technical) in the Niger delta of Nigeria [
28]. Fuzzy TOPSIS is used to analyze the drivers (environmental, society, economic) of the green manufacturing practice [
29].
Ship purchase by using multi criteria decision analysis methods is studied by limited scholars under different approaches. For instance, a model of shipping asset management process is proposed and a generic fuzzy AHP is implemented in [
30]. A similar ship investment problem is re-considered in [
31] by running another version of AHP called regime-switching AHP. The evaluation parameters for the shipping asset selection are preferred as loss probability, return on equity, energy consumption, draft, speed, and crane existence. This study extends the existing criteria with more comprehensive parameters. The number of alternatives and DMs are also relatively increased. A study comparing AHP and TOPSIS methods in a fuzzy environment. In [
32], it is stated that a fuzzy TOPSIS method is better suited for the selection problems in terms of agility and changing and varying criteria and alternatives. Therefore, Fuzzy TOPSIS is preferred for our empirical study of ship selection management. Another research regarding the ship selection uses a multiple-criteria synthesis approach in [
33]. In their study, a tanker selection problem is considered in terms of techno-economical and qualitative attributes. This paper points out to the dry bulk carrier selection problem with the viewpoint of subjective judgements of DMs, and that is investigated by using a fuzzy TOPSIS approach.
This study tackles a literature gap by analyzing ship investment decisions using a TOPSIS method in a fuzzy environment. It innovates in this context not only by applying fuzzy TOPSIS method for a ship purchase decision, but also by adopting financial, technical, operational, etc. parameters to evaluate different criteria on this highly complex decision-making problem. More precisely, this paper contributes to the field as follows. First, the study assesses the evaluation of both technical and financial criteria in ship purchase problems, thus adding to the scarce literature on ship purchase. Secondly, this study uses a fuzzy TOPSIS technique to compare the criteria based on trapezoidal fuzzy numbers (TFN), allowing the assessment of vagueness in ship quality perceived by the buyer. Indeed, nonstandard design of dry bulk carriers may assume uncertainty. More precisely, the varying specifications of dry bulk carriers, which may involve ship hull form and general arrangement, lead vagueness in ship quality, and uncertainty related to ship purchase decisions. On the other hand, the ship price, which is not fixed, varies in a dynamic fashion as a function of the market demand or other market variables that cannot be timely measured. Even the ship quality may be subject to vagueness in the perceptions of buyer due to the low number of ship sale-and-purchase. Thirdly, this study also expands the existing literature in terms of the use of fuzzy TOPSIS and different rule-based frameworks to guide ship purchase decision-making because fuzzy parameters can help with achieving higher levels of objectiveness on perceiving the ship quality.
4. Results
Seaborne transportation is of significance in terms of global economics since 90% of the world trade is conducted by merchant ships. Steel is a crucial industrial product of the world. All the materials related to steel are transported via dry bulk carriers. The factors for ship supply/demand in shipping economy are determined in the study of [
52]. In practice, since the balance of ship supply is obtained by the combination of freight, sale, and purchase, new building, and demolition markets; ship demand is directly affected from world economy, cargo trade via maritime transportation, average carriage distance, political events, and transportation costs. More specifically, this study provides the financial and technical parameters as their particulars are given below.
Gross tonnage is described as a measure of an overall internal volume of a ship, and deadweight (t) represents the carriage capacity of the ship including cargoes, fuel oil, stores, etc. [
53]. Length overall symbolizes the maximum length of a ship’s hull, and breadth extreme is the maximum width (beam) measured parallel to the waterline. Draught is the vertical distance from the waterline and to the bottom of the hull (keel) [
54,
55].
In the sale and purchase market, when the ship launch is compiled, it becomes secondhand. Then, from its beginning (the most precious moment), the ship continuously loses her value 3–5% each year. One of the most significant factors in the market is the age of the ship. The younger ship deserves more chartering and freight rate, since the younger ships can easily pass the inspection, verify the competencies, and comply with the requirements during the port state controls. Moreover, younger ships provide an advantage of paying no extra insurance premiums. The ship prices are under the effect of four factors: freight rates, particulars of the ship, inflation rates, and expectations of the ship owners. However, since the values are related to income, market conditions might change the correlations between the ship value and other parameters such as tonnage, age, etc. Return on investment depicts the efficiency of the investment [
56]. Loss probability is the percentage of results which give a deficit account [
10].
Energy consumption is an important subjective parameter, and it is recorded as an operational cost. Larger ships are generally more cost efficient than smaller ships. Engine power is the maximum power of the ship, which depends on the size and design of the engine. The speed of the ship represents the operation time of the ship. The last criterion is about the existence of the shipping assets (i.e., crane) and their conditions. Experienced field experts are asked to evaluate the most prior criterion among six independent criteria and alternatives based on ship supply and demand in the shipping economy. Six dry bulk carriers in different tonnage capacities and service capabilities are selected as alternative projects of the dry bulk shipping industry. Tonnage sizes are classified as Handysize: 10,000–39,999 deadweight tonnage (Dwt), Handymax (Supramax): 40,000–59,999 Dwt, Panamax bulker: 60,000–85,000 Dwt, and Capesize bulker is around 85,000–180,000 Dwt [
52].
The empirical study is designed based on the statistical datasets given in the United Nations Conference on Trade and Development (UNCTAD) (2019). The weekly reports for the market indices (seaborne trade, ship prices, etc.) of [
2] are presented to the experts in order to make a confidential pairwise comparisons.
For comparison of dry bulk carriers, we prefer to select six dry bulk carriers from
to
. These anonymous experts are the academicians in top maritime departments and hold doctorate degrees. Five independent experts consider the following six criteria form
to
based on given circumstances in
Table 4.
The hierarchical structure is shown in
Figure 2. According to this structure, the steps of the method are provided as follows:
Step 1. The criteria are evaluated from Very Low (VL) to Very High (VH) by using verbal expressions as given in
Table 5.
Step 2. DMs evaluate each alternative based on each criterion as shown in
Table 6.
Step 3. The linguistic expressions in the evaluation process are converted into TFN by using Equation (10). A fuzzy decision matrix is obtained as given in
Table 7.
Step 4.Table 8 expresses the fuzzy weights matrix which is obtained by using Equation (12).
Step 5. By using Equation (15), the normalized fuzzy decision matrix is acquired as in
Table 9.
Step 6.Table 10 is derived from the weighted normalized fuzzy decision matrix, normalized fuzzy decision matrix, and fuzzy weights matrix by using Equations (17) and (18).
Step 7. FPIS and FNIS are found by using the weighted normalized fuzzy decision matrix as shown below:
FPIS : = [(1,1,1,1), (0.3,0.3,0.3,0.3), (0.56,0.56,0.56,0.56), (1,1,1,1), (0.6,0.6,0.6,0.6), (1,1,1,1)]
FNIS : = [(0.05,0.05,0.05,0.05), (0,0,0,0), (0,0,0,0), (0,0,0,0), (0,0,0,0), (0,0,0,0)]
Step 8. The distances from FPIS and FNIS of each alternative are calculated by Equations (21) and (22). The results are obtained as given in
Table 11 and
Table 12.
Step 9. Closeness coefficients for each dry bulk carriers are calculated by Equation (23). The dry bulk carriers are ranked from low to high values based on these coefficients. According to this ranking, A2 (Dry bulk carrier 2) is the best option, and A5 (Dry bulk carrier 5) is the last one.