1. Introduction
Reportedly, energy demand in the transportation sector is increasing due to the rapid increase in vehicle numbers, making this sector a significant emitter of global greenhouse gas emissions from gasoline-fueled consumption. The transportation sector was responsible for 24.6% of total global CO
2 emissions [
1]. Automobiles are clearly the main source of emissions in this sector, which contributes to the deterioration of the ecological environment [
2]. Concerns about this issue have grown around the world [
3,
4]. According to Samaras and Meisterling [
5] and Adhikari et al. [
6], electric vehicles (EV) are among the most promising energy vehicle technologies, with the potential to reduce energy consumption as well as life-cycle GHG emissions in the transportation sector. Cox [
7] and Romm [
8] have also asserted that EVs are one of the relatively lowest-cost solutions to the problem of CO
2 emissions and air pollution.
Aware of the potential environmental benefits of EVs, a number of countries, including Thailand, are contemplating EV adoption [
6]. Since 2015, the Thai government has launched Thailand 4.0, a new national economic strategy, and developed a roadmap and policy to promote EV technology and support EV production, RandD, and usage in the country. The main goal was to reduce road pollution and promote the country as one of the world’s major production bases for zero-emission vehicles (ZEVs). Furthermore, the Thai government has established a Twenty-Year Plan EV roadmap and countrywide energy policy (2016–2036), with ambitious targets of manufacturing 1.2 million EVs, building 690 public fast chargers, and reducing energy intensity by 30% by 2036 [
9]. To encourage EV market penetration, the Thai government has implemented a number of incentives and subsidies, including tax breaks and subsidies for imported and domestically produced automobiles and motorcycles. The excise tax on electric vehicles has been reduced from 8% to 2%, with subsidies amounting from 2000 to 4000 USD, depending on the vehicle’s type and model.
Electric vehicle adoption has increased since 2015. Nonetheless, several impediments to widespread purchasing activity remain. Several studies, mostly based on surveys and questionnaires, investigated numerous barriers to the successful diffusion of EVs in international contexts such as the United States, the United Kingdom, China, and India [
10]. There is, however, very little empirical evidence specific to Thailand. Two studies on this topic were discovered focusing on the Thai market. Kongklaew et al. [
11] investigated the relationship between barriers and personal characteristics on the consumer side of EV adoption. Meesuwan [
12] conducted a qualitative analysis to identify barriers to EVs uptake in Thailand.
It was found that those barriers were frequently classified into several categories with both tangible and intangible aspects. Acknowledging those barriers and prioritizing the most major obstacles to EV acceptance would aid in the planning of strategies for tackling and extracting top-ranked barriers, as well as enabling and accelerating consumer adoption of EVs.
Since the majority of problems encountered in practice, including barriers to EV adoption in Thailand, are complicated and have various features, various investigations have been carried out to discover decision-making methods that minimize errors. The allocation of weight between the various aspects is critical to the predictive ability of multi-criteria decision-making (MCDM), and different aspect weighting strategies may lead to various decision outcomes [
13]. Equal weights (EW) method [
14], rank-order centroid (ROC) weights are some examples of various approximation weighting methods in scenarios where only the rank order information is available [
15]. Other popular methods include rank-sum (RS) and rank reciprocal (RR) weights, which were proposed by Einhorn and McCoach [
16] and Stillwell, Seaver and Edwards [
17], respectively. These methods rank the attributes in order of importance, then weight each one in proportion to its position in the rank order.
Furthermore, when relative weight information is available, a ratio scale weighting method can be used, as it not only provides weight order information but also illustrates the magnitude difference between weights. However, true ratio weights are challenging to determine and are especially susceptible to response error [
18].
According to Ishizaka and Nemery [
19] and Song and Kang [
20], other approaches for acquiring specific weights in real-world applications include the Delphi method [
21], utility theory [
22], Data envelopment analysis (DEA) [
23] and analytic hierarchy process (AHP) [
24]. Nevertheless, none of these techniques are completely perfect. Each has its own set of limitations, peculiarities, hypotheses, premises, and perspectives [
25]. The Delphi method is based on multiple rounds of questionnaires distributed to an expert panel. There are two drawbacks: (1) the response time can be long, slowing the rate of discussion; and (2) it is also possible that the knowledge gained from the experts does not have inherent value. Utility analysis attempts to elicit a multidimensional utility function over the relevant attributes of the decision problem’s consequences in order to rank options. It can, however, be a time-consuming and difficult, if not impossible, task. This is due to difficulties in specifying the appropriate set of attributes and how they should be measured, as well as in comprehending the complex, obscure, and uncertain relationships that frequently exist between decisions and their consequences. In a DEA model, each decision unit is evaluated based on various outputs and inputs and classified as effective or ineffective. However, depending on the identified outputs and inputs, the measurement results may be sensitive.
The AHP method, on the other hand, is widely used in many fields of life due to its simplicity and flexibility. AHP makes decisions based on both quantitative and qualitative criteria [
26], and it is well suited for group decision making as well as being understandable to administrators and decision-makers [
27]. However, it has been claimed that AHP is incapable of dealing with an imprecise or unbalanced scale of judgment resulting from a pair-wise comparison process, which will affect the accuracy of the data and the results obtained. On the basis of this, another theory, the Fuzzy Analytic Hierarchy Process method, was developed.
Fuzzy logic is founded on the observation that people make decisions based on inaccurate and non-numerical data. Fuzzy models and sets are mathematical tools used to represent ambiguous and inaccurate data. These models can recognize, represent, manipulate, interpret, and use ambiguous and uncertain data and information. The fuzzy set theory can be used to deal with uncertainty caused by vagueness [
28]. Given that fuzzy can assist decision-makers in dealing with ambiguities in level of measurement data evaluation, it was combined with multi-criterion decision methods to determine the best result [
29]. Consequently, Fuzzy Analytical Hierarchy Process (FAHP) method can be thought of as a sophisticated analytical approach that evolved from the conventional AHP.
In order to help managers, investors, practitioners, and researchers come up with potential solutions, it is necessary to use a MCDM technique to prioritize the obstacles to EV adoption. Additionally, it is necessary to combine MCDM techniques with fuzzy logic because the majority of decision-making issues arise in uncertain environments. As a result, FAHP was used to rank a list of various barriers of EV adoption. Despite the fact that many studies have identified barriers to electric vehicle adoption, very few have prioritized and identified the primary challenges in Thailand within the framework of a decision-making system (DMS). In this study, the FAHP is initially used to assess the barriers to EV adoption according to systematically collected data.
To extend this knowledge, this research focuses on determining the relative importance of the barriers to adopting EVs in Thailand using Fuzzy Analytical Hierarchy Process (FAHP) and ranking a list of EV barriers and sub-barriers through the pairwise comparison method.
To begin with, FAHP is being used more and more to determine the importance of barriers in a fuzzy environment due to its resemblance to human thoughts and coping with unclear and ambiguous information [
30].
The method can incorporate both quantitative and qualitative factors.
Finally, results obtained can be used to set the guideline for barrier prevention and recommend ways to overcome them.
The following section presents a related study on barriers to the adoption of EV. After that, research methodology is summarized in
Section 3. Next, the findings of this research are provided in
Section 4. Finally, the conclusion and further study are highlighted.
4. Application of FAHP and Results
The FAHP methodology was applied to determine the most significant barriers to the adoption of EVs. The following are the steps to prioritize those barriers and the results.
Step 1: Six experts from different representatives were selected to involve in this study—two senior managers from auto manufacturing companies, two government officers, one representative from dealers, and one customer.
Step 2: Clarify the main barriers and sub-barriers. Following a review of the literature and consultation with experts, three main barriers—an infrastructure policy barrier (A), a technological barrier (B), and a market barrier (C)—were determined with 13 sub-barriers, as displayed in
Figure 5. According to AHP’s assumptions, each barrier and its sub-barrier is comprised of mutually related elements [
83]. A structural hierarchy denotes the relationships between complex system components, where these relationships are understood as an arrangement in terms of structural properties. Those barriers and sub-barriers were evaluated by six experts.
Step 3: Calculate the local weights of the main barriers and sub-barriers by using pairwise comparison matrices and calculate fuzzy weights. Pairwise comparisons using a 1–9 scale were introduced with the Fuzzy AHP method within each main barrier or sub-barriers, and then those scales were converted into linguistic scales as shown in
Table 2.
Step 4: A geometric mean was applied to combine the fuzzy weights of those six experts into final pairwise tables of main and sub barriers. After that, the linguistic judgments were transformed into triangular fuzzy numbers.
Table 3 shows geometric values of fuzzy triangular number of main barrier and
Table 4,
Table 5 and
Table 6 show geometric values of fuzzy triangular number of the sub-barriers, respectively. It was also found that CR values of all matrices were less than 0.1, hence these matrices are consistent.
The final weight of those barriers was obtained and normalized weight vectors were finally acquired following Chang’s extent analysis method on FAHP.
Table 7 demonstrates the final weight of importance for each of these main and sub-barriers.
Figure 6,
Figure 7 and
Figure 8 show radar charts of the sub-barrier weights of infrastructure policy, technological barriers, and market barriers.
According to the findings in
Table 7 and
Figure 9, the most considerable impediment to EV adoption was the infrastructure policy barrier (A), which had the highest weight at 0.6058. According to the table, the top three sub-barriers to EV deployment were charging infrastructure network (A3), lack of proper government support and collaboration (A1), insufficient electric power supply (A2), high capital cost (C3), and charging time (B3), in that order. In contrast, the overall ranking results show that raw materials for batteries (C4) were the least of a concern creating a barrier to EV adoption.
With a weight value of 0.2681 of all sub-barriers compared, the lack of charging infrastructure networks plays a critical role in preventing EV adoption in Thailand. These findings are consistent with current literature, such as Azadfar et al. [
84], Bakker and Jacob [
85], and Barisa et al. [
86], all of which state that a lack of charging infrastructure is a major barrier to EV adoption. Furthermore, the findings are consistent with the findings of an October 2021 study conducted by Thananusak et al. [
87]. According to 72% of survey respondents, public charging stations in Thailand are still insufficient. According to the study, the main impediment to Thai drivers purchasing a full-fledged EV was a lack of comprehensive infrastructure.
The second barrier, with a weight value of 0.1861, was a lack of proper government support and collaboration. The findings were consistent with the findings of Zhang et al. [
88], who found that relevant policies and subsidies promoting the development of EVs in various countries such as China were strictly limited due to local protectionism. Mendoza [
89] argued that there were still unclear policies or actions in place to steer Thailand in the direction of implementing electrical vehicle technology. This could be due to the fact that many stakeholders had different agendas for pursuing EV transformation.
A component of the management information system is the DMS. Government-mandated executives can use decision support tools to help them make strategic judgments in unstructured or semi-structured business activities or events. Information technology-based decision support systems can be used to manage constantly changing information with the goal of lowering costs, decreasing labor, and assisting with modeling analysis to identify and solve problems.
Determining actions for the development of transmission infrastructure is the primary strategy obtained from the decision aid system. The objective is to fortify the electrical system so that it will be reliable and effective in supporting the rising number of electric vehicles in the future. This includes quickening the development of facilities for testing electric vehicles and their parts in order to create and evaluate quality and safety standards. The outcomes of such initiatives can support the need for the country to develop its electric car technology in order to increase its competitiveness in the sector of exporting and manufacturing electric vehicles in the future.
The DMS manages data based on information received both internally and externally. A DMS connects to a company’s database or data warehouse to retrieve or filter data relevant to a decision-making situation. The DMS will screen and compile extensive information from massive amounts of data for decision-making purposes. Following that, users can access various models with analytical capabilities, such as financial models, mathematical models, statistical models, or quantitative models, via the model base management system. User Interface Management is also used to connect the user to the system.
The government can strategically develop operations such as service model development, investment promotion of charging stations along the main routes to different regions of the nation, and investment in and promotion of charging stations. The crucial goals are completeness and confidence. Out of concern about the driving distance of electric vehicle users, a data center for charging stations has been established. The government must assist in the construction of an electric car testing center that complies with worldwide standards in order to lessen the financial burden on manufacturers. This entails operating equitably, fostering technological competition in the sector that manufactures electricity and batteries, and providing space for competition there.
Other activities include the creation of legislative policies to support the use of electric vehicles over the medium and long terms, as well as the improvement of pertinent standards, guidelines, and laws to support the sustainable use of electric vehicles. Other examples include the promotion of industrial estates, the small and medium business electric vehicle sector procurement, and the testing of electric power-related technology. Several institutions, including the Ministries of Transport, Finance, Industry, Energy, and Science and Technology, are involved in developing strategies and action plans to promote electric vehicles.
However, based on these goals, an accountable organization, a budget, and a plan to promote the use of electric vehicles must be appropriately implemented. As a result, a DMS that serves as a conceptual foundation for creating such policies will be successfully advanced, leading to exceptionally clear objectives and responsible agencies. Policies would be decided upon by directly and formally responsible individuals. However, it is unclear how the funds will be approved and how the policy will be altered to an action plan. This flaw makes it possible that the policy will not be able to meet the goals and objectives set forth by each agency. In order to achieve predetermined targets, the future decision-making system guides a feedback plan, which leads to sustainable energy usage.
5. Conclusions and Future Works
The use of a DMS to aid in management decision making is required for effective problem management and responsiveness to big data. Data collection and analysis, as well as complex modeling, are computerized, interactive, and systematic processes for quickly and easily finding solutions to structural problems with data incompatibility that can be easily changed in a short time. Several challenges must be tackled in order for EV adoption to be successful. Prioritizing those challenges will assist Thai government stakeholders in selecting the most important issues to address. In this study, The Fuzzy Analytical Hierarchy Process (FAHP) was applied into DMS to evaluate the three main barriers and their 13 sub-barriers to EV adoption in Thailand, as identified in the literature review. By comparing objects with multiple attributes, the FAHP can reduce the number of comparisons, as well as ambiguous, uncertain, vague, and cognitive errors, and additionally confirm response consistency. The results demonstrate that charging infrastructure networks is a major impediment to EV adoption in Thailand. The second major sub-barrier pillar was a lack of appropriate government support/incentives and collaboration. Other main challenges were determining insufficient electric power supply, high capital cost, and EV charging time.
This study’s evidence emphasizes the importance of reducing shortcomings by providing adequate charging infrastructure and charging space for EVs in several easily accessible locations across the country. To encourage EV adoption, it must be determined how much public charging infrastructure is required and where it should be located. Technology-push policies, such as consistent/sustained policy support, lowering the cost of manufacturing advancements and providing an equitable compensation plan [
87,
90], as well as demand-pull policies, such as regulations and tax credits and exemptions for consumers and lower electricity selling prices, must be implemented by the government. These would aid in the expansion of markets for innovations, allowing for greater investment in innovation for EV charging time [
90,
91]. Furthermore, a number of existing and proposed EV-related laws and regulations require review and revision in order to produce accurate policies and time frames for modernization in obtaining investor sentiment and incorporating all interested parties. According to this study, the presence of fast charging would increase EV preferences significantly. Therefore, alternative battery materials and technologies provide a promising solution to this constraint. Research-oriented approaches on solid-state batteries and alternative cathode and anode materials, including capital and human capital investments, are required and supported by stakeholders.
Aside from the numerous useful implications of this study, there is some room available for future investigations. To investigate the model’s performance, the proposed FAHP model would be compared to those of other MCDM approaches, such as fuzzy outranking methods and complex proportional assessment method (COPRAS) [
92]. Another area of improvement would be to take into account the perspectives of other stakeholders including users, manufacturers, experts, and policymakers in order to provide more holistic indicators for long-term improvements in EV adoption. To ensure the model’s integrity, a sensitivity analysis should be included in the DMS. A sensitivity analysis should also be carried out to verify the integrity of the suggested model. Furthermore, it may be worthwhile to investigate other barriers that may arise alongside future EV campaigns.