Transportation and energy are among the most influential factors in ensuring sustainable socio-economic development. The global increase in population, industrialization, urbanization, and the rising demands for trade and production brought about by globalization continually expand the demand for transportation and energy. Efficient utilization of limited energy resources is crucial for economic development and achieving sustainable growth. In this context, every country aims to develop strategies and formulate national programs to use their resources more effectively, to meet sustainable energy and transportation demands.
Turkey’s economy is ranked ninth in Europe and twenty-first globally in the 2019 World Economic Outlook (WEO) data [
1]. In its most recent study, which was released in July, the International Monetary Fund (IMF) predicted that Turkey’s growth would be 5.5% in 2022, 4.5% in 2023, and 3.6% in 2024 [
2]. The demand for transportation energy is inversely correlated with economic growth, and there is a linear link between both. In Turkey, energy consumption in the transportation sector constitutes a significant portion of the total. Transportation energy consumption makes up around 27% of Turkey’s overall energy consumption, according to the most recent data from the International Energy Agency (IEA) in 2021, which marks an increase from 22.8% in 1990 [
3]. This transportation energy consumption in Turkey is similar to the levels for Europe overall, China, and other countries in the world. For instance, transportation energy consumption has an average share of 28% in European countries, 29% in China, 25% in Canada, 26% in Iran, and 29% worldwide. Today, transportation energy consumption in many countries is increasing day by day; in countries such as Canada and Iran, demand increases of nearly 50% are seen annually [
4,
5,
6,
7].
Energy resources are few, and over 75% of Turkey’s energy demands are fulfilled by imports, despite the country’s growing energy demand. Since the primary energy source used in the transportation sector is petroleum-based, energy dependency in this sector is becoming pronounced. Therefore, the Turkish National Committee of the World Energy Council emphasized in the final report of the 10th Energy Congress of Turkey that “climate change policies worldwide should be closely monitored, alternative scenarios should be prepared with policies and targets aligned with national interests, and supply and demand forecasts in sectors should be developed using advanced models”. In line with this proposal, it is crucial that the models developed better reflect the realities of the country and that the methods used are reliable.
Given the importance of energy demand forecasting and the need to utilize these forecasting models in developing strategies and plans, various models have been developed using different methods. Given the widespread use of artificial intelligence techniques in all fields and the highly successful outcomes achieved, these methods are increasingly being employed in developing energy demand forecasting models and scenario analyses, both in Turkey and globally.
This study aimed to make more accurate predictions of transportation energy consumption in Turkey up to 2035 using passenger and freight numbers, carbon dioxide (CO₂) emissions, gross domestic product (GDP), and population parameters in the road and rail transportation modes. To achieve this, state-of-the-art algorithms such as the Walrus Optimizer and White Shark Optimizer were used, and we developed and compared transportation energy demand models in different mathematical forms. The study design was distinguished from others through the use of parameters of transportation modes and the most up-to-date algorithms, which allowed for predicting the energy demand with higher precision than in previous studies. Additionally, we considered the impact of transitions of passenger and freight transportation between transportation modes in energy prediction, with the goal of making energy forecasts more precise and realistic and also to determine the impact levels of different transportation modes.
In the subsequent sections of this article, a detailed literature review is given, the algorithms used are introduced in detail, and then we present the energy forecast model forms created with these algorithms, along with the error values of the models. Then, we outline how the model with the lowest forecast error (in the current study) was used in the developed future transportation scenarios, and energy demand forecasts for these scenarios are presented. Finally, suggestions are offered for how we can improve the country’s capacity to meet the upcoming energy demand in future forecasts.
Literature Review
Today, artificial intelligence techniques are widely used in prediction methods and solutions to optimization problems across many fields, particularly in engineering. In recent years, many researchers have produced accurate and reliable results by using artificial intelligence techniques in the development of prediction models. Murat and Ceylan [
9] used an artificial neural network (ANN) model to forecast Turkey’s transportation energy demand up to 2020, utilizing parameters such as gross national product (GNP), population, and total annual average vehicle-km. Their ANN-based model predicted that transportation energy consumption would reach 36 MTOE in 2020. Canyurt et al. [
10] proposed a transportation energy demand model (GATENDM) for Turkey using the genetic algorithm (GA) method, based on socio-economic and transportation data. They stated that the proposed model had an error margin of 11% and worked with 5% lower error compared to the estimates of the Ministry of Energy and Natural Resources (MENR). Haldenbilen and Ceylan [
11] used linear, exponential, and quadratic models for transportation energy prediction (GATEDE) based on the GA approach. They found that linear and quadratic models performed better, with an error margin of approximately 10%. Başkan et al. [
12] developed transportation energy demand prediction models (IACOTEDE) for Turkey using the improved ant colony optimization (ACO) approach in linear, exponential, and quadratic forms. The quadratic model demonstrated a prediction performance with an 8% error margin, forecasting 30 MTOE of transportation energy consumption by 2025. Karaaslan and Gezen [
13] used the Fuzzy Grey Regression Model to estimate the sectoral energy consumption in Turkey. They estimated transportation energy with an 8.5% error margin using their established model, and they projected a 2023 energy consumption of about 25 MTOE. Sönmez et al. [
14] used the artificial bee colony method to forecast Turkey’s transportation energy demand in three different model forms up to 2034, based on gross domestic product (GDP), population, and total annual vehicle-km as the parameters. Using a linear model with an 11% error margin, they projected that Turkey’s transportation energy demand will be 36 MTOE in 2034. Korkmaz and Akgungor [
15] used the Flower Pollination Algorithm (FPA) to create transportation energy forecasting models. By 2035, 42 MTOE of energy consumption is expected in Turkey according to the produced models, which had an error margin of about 6%. Çodur and Unal [
16] conducted a transportation energy forecasting study in Turkey using an ANN approach. The study utilized parameters such as gross domestic product, oil prices, population, vehicle-km, ton-km, and passenger-km, and they developed seven different models, achieving success with MAPE values ranging from 4% to 6%. Sahraei et al. [
17] used a multivariate adaptive regression model to forecast Turkey’s transportation energy in five model forms using socio-economic and transportation data from 1975 to 2019. After comparing the model results with the Ministry of Energy and Natural Resources’ data, they indicated that the third model, which provided the most accurate prediction, could be used for transportation energy forecasting, with the prediction that consumption will reach 29 MTOE by 2030. Turgut et al. have implemented transportation energy forecasting models using a hybrid approach (OPTSGULL) that combines the Seagull (Sgull) and Very Optimistic Method of Minimization (VOMMI) algorithms, utilizing parameters such as GDP, crude oil price (COP), and inflation for Turkey in percentages (INF). They have demonstrated that this method performs statistically better compared to many different artificial intelligence approaches and achieves the best objective function value. Additionally, a future forecast has been made up to the year 2028, predicting an energy consumption of approximately 44 MTOE. Ağbulut [
18] used deep learning (DL), support vector machine (SVM), and artificial neural network (ANN) approaches to estimate energy demand and CO
2 emissions related to transportation in Turkey. The proposed models estimated energy demand with error rates of 8.38%, 8.39%, and 12.79% for ANN, SVM, and DL, respectively. The ANN approach showed the best performance with an R
2 of 0.92. Additionally, the annual growth rates for energy demand and CO
2 emissions related to transportation in Turkey were projected to increase by 3.7% and 3.65%, respectively. ANN-GA, ANN-Simulated Annealing (ANN-SA), and ANN-PSO are some of the novel hybrid metaheuristic ANN techniques that Sahraei and Çodur [
19] presented for transportation energy forecasting models. With an R
2 of 0.99, they observed that the ANN-PSO method, which is based on GDP, population, and ton-km, performed better than the other two models. Özdemir ve Dörterler [
20] have estimated transportation energy demand based on the gross domestic product (GDP), population, and total vehicle kilometers (TVKs) using an adaptive artificial bee colony (A-ABC) algorithm. In their study, three different model forms—linear, exponential, and quadratic—were developed, and forecasts were made up to the year 2034. According to these models, energy demand estimates (TEDs) are projected to be 40.0, 31.5, and 66.5 MTOE, respectively. Hoxha et al. [
21] predicted transportation energy in Turkey using the machine learning stacking ensemble method with hyperparameter tuning and multicollinearity removal. They were able to make predictions with an error margin of 3.03% based on GDP, population, ton-km, vehicle-km, passenger-km, and oil price data. Kayacı and Çodur [
22] used ensemble machine learning approaches to predict the energy demand in Turkey. The study, which used population, per capita GDP, import, and export data, examined the performance of 19 different machine learning (ML) approaches and demonstrated that the Extra Trees Regression approach yielded the highest R
2 value of 0.9882, indicating accurate and effective energy predictions.
Economic developments and the increase in national and international freight transportation activities have intensified the passenger and freight transport sector. In this context, ensuring sustainable transportation energy is of great importance. Energy planning studies play a critical role in enabling governments to meet future energy needs, develop appropriate strategic plans, and utilize resources in the correct amounts. Therefore, energy forecasting studies attract the attention of many researchers, not only in our country but also on a global scale.
Al-Ghandoor et al. [
23] used the Adaptive Neuro-Fuzzy Inference System (ANFIS) method to forecast Jordan’s transportation energy consumption. With a 97% accuracy rate, their constructed model projected that Jordan’s energy consumption will reach 4.3 MTOE by 2030. Forouzanfar et al. [
24] used a multi-level genetic programming approach to forecast Iran’s transportation energy demand based on energy data from 1968 to 2005, along with data on the per capita gross national product, population, and vehicle numbers. The results obtained showed that the multi-level genetic programming approach was more successful compared to results from artificial neural networks and multi-level fuzzy linear regression approaches. Limanond et al. [
25] attempted to forecast Thailand’s transportation energy demand using log-linear regression and ANN models based on national gross domestic product, population, and registered vehicles as their parameters. They were able to predict energy consumption with 95% accuracy using the log-linear regression model and estimated that Thailand’s transportation energy consumption will range between 54.4 and 59.1 MTOE in 2030. Liu et al. [
26] used the Long-range Energy Alternatives Planning system (LEAP) to predict China’s transportation energy use. Based on Comprehensive Policy (CP), Energy Efficiency Improvement (EEI), Transport Mode Optimization (TMO), and Business as Usual (BAU) scenarios, the anticipated energy consumption in 2050 is 509, 755, 816, or 1284 MTOE, respectively. A regression model based on GDP and P data was used by Bayomi et al. [
27] to forecast transportation energy consumption for Middle Eastern nations, such as Iran, Saudi Arabia, Kuwait, and the United Arab Emirates. The model had an error of about 2%. According to their estimates, Iran will consume 75 MTOE of energy for transportation, Saudi Arabia 80 MTOE, Kuwait 16 MTOE, and the United Arab Emirates 30 MTOE by 2030. Nieves et al. [
28] used the LEAP model, which is based on a model from 2015 and two future scenarios (positive and negative), to study energy demand and greenhouse gas emissions in Colombia. According to their predictions, Colombia’s overall energy consumption by 2030 will be 1,748,469 TJ in a negative scenario and 1,597,675 TJ in a positive scenario. By 2050, the total energy demand will be 2,125,453 TJ in the positive scenario and 2,498,765 TJ in the negative scenario. In both scenarios, the transportation sector emerged as the largest energy-consuming sector. They predicted that CO
2 emissions will be 108.3 Mton in the positive scenario and 118.5 Mton in the negative scenario by 2030. By 2050, CO
2 emissions reach 140.1 Mton in the positive scenario and 150.5 Mton in the negative scenario. Luis et al. [
29] used the LEAP model to forecast energy demand in Ecuador’s road transport sector up to 2035. According to the BAU (Business As Usual), EOM (Energy Optimization and Mitigation), AF (Alternative Fuels), and SM (Sustainable Mobility) scenarios, energy demand will range between 85 and 112 kBOE. Taiwan’s transportation energy demand was estimated by Yao et al. [
30] using an antelope swarm optimizer (WHO) and convolutional neural network (CNN). They demonstrated, by comparing the model results with those of a basic CNN and a multiple regression model, that Taiwan’s transportation energy consumption will not increase substantially. This prediction for 2020 was about 37.2 MTOE. Vergel et al. [
31] proposed a bottom-up approach to forecast the transportation energy demand of the Philippines in 2016. In this approach, detailed sub-level data such as vehicle types, fuel consumption, road networks, and user behaviors are collected and analyzed. They emphasized that this model provides policymakers, planners, and energy managers the opportunity to develop more effective and targeted strategies by considering various factors affecting energy demand. Rahman et al. [
32] have made a transportation energy forecast in Saudi Arabia using ANN and support vector regression (SVR). In the study, which utilized parameters such as GDP, number of vehicles, population, and fuel prices, the SVR approach demonstrated a better performance than the ANN approach, achieving predictions very close to reality, with an R
2 value of 0.99. Additionally, in their future projections, they estimate that energy consumption will reach approximately 70 MTOE by the year 2030. Maaouane et al. [
6] used an ANN approach to forecast the transportation energy demand based on 30 years of data obtained from 28 European countries. Morocco was utilized as a case study, and a prediction for transportation energy consumption in Morocco was made up to the year 2050. They projected that by 2050, consumption will exceed 10.5 MTOE, representing a 75% increase compared to 2018, and as a result of the widespread use of electric vehicles, the demand for fuel will be around 7.2 MTOE. Liu et al. [
33] proposed a new approach to predicting transportation energy demand using an artificial neural network with an improved red fox optimizer. The research findings demonstrated that the proposed method could accurately predict transportation energy demand, helping decision-makers make informed decisions and develop policies regarding energy management and sustainability. Javanmard and Ghaderi [
5] have predicted energy demand in Iran for the transportation sector and other sectors using six different machine learning approaches optimized with PSO and the Grey-Wolf Optimizer (GWO). With models that achieved a 6% MAPE in the transportation sector, future forecasts have been made up to the year 2040, indicating a 75% increase compared to 2019, with an expected energy demand of 900 MKWh. Javanmard et al. [
4] have predicted energy demand and CO
2 emissions in the transportation sector by optimizing eight ML approaches using the whale optimization algorithm, and they have made projections until the year 2048. They anticipate that energy demand will increase by approximately 37% and CO
2 emissions by 50% compared to the year 2019. Gharaibeh and Alkhatatbeh [
34] estimated transportation energy consumption in Jordan based on the number of registered vehicles, income level, ownership level, and fuel prices using an ANN approach. With the proposed method, they achieved a prediction with a MAPE error of 2.19% and made projections up to the year 2030. It is anticipated that transportation energy consumption in Jordan will be approximately 4.1 MTOE by 2030. Qiao et al. [
35] have predicted energy consumption and CO
2 emissions in transportation in the UK using an interpretable multi-stage forecasting framework approach. This framework produced energy consumption forecasting with a MAPE of 0.915 and CO
2 forecasting with a MAPE of 0.907, and they showed that the approach improved data quality by eliminating irrelevant and unnecessary features.
In the literature, it can be observed that energy demand is predicted using general models, but the parameters of transportation modes are not considered, meaning that the effects of the modes are not examined. In Turkey, road transport is the preferred mode of transportation, with a share exceeding 90%. However, in recent years, significant attention has been paid to railway investments in Turkey, with applications such as the expansion of the railway network and the popularization of high-speed train lines increasing the accessibility of and preference for the railway mode. Therefore, the impact of the shift in demand from road to rail transportation on energy consumption should be taken into account. Considering the effect of demand distribution in the model will enable more realistic predictions compared to previous studies.