1. Introduction
This research aims to achieve multi-objective optimization of energy consumption and cost in rail transit by coordinating OESS’s and SESS’s capacity. Therefore, NSGA-II is applied and works well, as expected.
In general, the pantograph-catenary is the primary energy supply for a train’s operation in rail transit [
1,
2]. To improve the diversity and stability of energy supply in emergencies, renewable energy sources like photovoltaic power have also been introduced in rail transit [
3]. On the other hand, as a supplement to the primary energy supply system, one key area of focus is the recovery and efficient utilization of RBE in railway transit by ESS. Regarding the construction of ESS, there are three types: power-density ESS, energy-density ESS, and hybrid energy-storage systems (HESS). The rated output power divided by the storage device’s volume yields the power density (W/kg or W/liter). Power-density ESS like SMES and supercapacitors appropriate for high discharge current have quick response power quality applications. Similarly, stored energy divided by the volume refers to the energy density (Wh/kg or Wh/liter). Energy-density ESS like Li-ion holds higher energy density than conventional batteries, excelling in space reduction, mobility increase, and operating time extension [
4]. Ratniyomchai introduced the application of ESS in electrified railways, especially batteries, flywheels, electric double-layer capacitors, and HESS. The storage and reuse of RBE is managed by energy-storage devices depending on the purpose of each system [
5,
6]. By lowering the frequency of battery charge and discharge and controlling battery peak current, Li introduced HESS with Superconducting Magnetic Energy Storage (SMES) and batteries in electric buses, extending battery life [
7].
The efficient management and storage of energy have become integral to sustainability goals. In general, according to the allocation of ESS, there are also three types: SESS, OESS, and both. Unlike OESS, SESS is not confined to the train itself but is distributed strategically along the railway network. SESS plays a crucial role in capturing and storing the excess energy generated during regenerative braking events to improve efficiency and reliability in urban rail systems [
8]. Lamedica demonstrates the utilization of Particle Swarm Optimization (PSO) in developing an optimal siting and sizing methodology for designing a SESS tailored for railway lines and maximizing the investment’s financial return [
9]. On the other hand, Andres Ovalle proposed the optimal energy storage sizing formulation, taking the characteristics of different modern battery and supercapacitor technologies into account, and the objective function to minimize the trade-off between energy-storage capacity and charging rates based on a real-time simulation [
10]. At the same time, Dupré developed a methodology that divides installation into stages with different budgets and periods to obtain optimum installation of ESSs in a railway line, balancing energy saving and profit [
11]. Also, simulations in different conditions managed by different algorithms have been conducted by many authors, all of which prove that installing SESS will lead to energy saving for the railway system [
12,
13,
14,
15,
16]. Also, real examples have been commercially applied around the world [
17,
18,
19,
20]. This paper proposes the utilization of a hybrid energy-storage system (HESS) combining SMES and conventional batteries in rail transit.
SMES is a high-power-density energy-storage technology that relies on the principle of superconducting magnets. SMES takes advantage of the unique properties of superconducting materials, which exhibit zero resistance at low temperatures. A strong magnetic field is generated by passing an electric current through a superconducting coil, allowing for the storage of electrical energy. In addition, it exhibits a fast response in milliseconds. It is mainly applied for network stability applications [
21,
22]. While in rail transit, thanks to its unique characteristics, SMES is well-suited for recovering the intermittent and random nature of RBE. However, the negative impact of strong magnetic fields on the environment and their high cost are the main obstacles to deploying SMES devices.
Lithium-ion battery (LIB) presents a rechargeable characteristic. Electrical energy is stored and released through the embedding and de-embedding of lithium ions in its chemical reactions. This innovative technology has gained widespread adoption, positioning itself as one of the most prevalent energy-storage solutions available in commercial markets today. On the other hand, the high-energy-density characteristic distinguishes Lithium-ion batteries (LIBs) from SMES, which allows them to store more electrical energy in a light and small form. Consequently, LIB has become the preferred energy-storage technology for electric vehicles and mobile devices. Furthermore, successful commercialization and significant global investments have led to a considerable reduction in its cost. Although LIBs offer high energy density, they can still be relatively heavy compared to alternative ESS technologies like ultracapacitors [
4]. In railway transit applications, weight directly impacts energy consumption and vehicle performance.
By utilizing a combination of several energy-storage technologies, the HESS system effectively delivers and controls energy. The two complementary technologies that constitute HESS’s core are LIB and SMES. While LIB is distinguished by its high energy density and wide applicability, SMES is recognized for its quick reaction in milliseconds, exceptional power density of up to 2000 W/kg, and extended life expectancy. The HESS system may efficiently utilize the advantages of both LIB and SMES to accomplish efficient energy delivery and storage. Meanwhile, SMES can be regarded as a buffer for temporary energy storage to reduce the load of the battery, thus reducing the energy exchange frequency of the battery and extending its lifespan. One challenge is the specification of power-density ESS and energy-density ESS. Integrating both effectively requires careful design. In the meantime, higher capacity does not always lead to more significant energy savings [
23]. Optimal sizing is crucial.
A consistent power-supply infrastructure is frequently absent in remote or isolated regions. Under such circumstances, trains may face challenges relying directly on an external power source. OESS serves as a solution, enabling trains to provide energy independently in areas lacking power supply. OESS enables trains to capture RBE immediately and store it in real time. It also allows the train to utilize this energy as soon as needed. Batteries and supercapacitors are commonly applied in OESS [
24]. However, it is regarded that high input and output power models are only sometimes feasible for battery energy systems to operate at [
25]. In the meantime, OESS introduces an extra burden on the train along with more energy consumption [
26,
27]. In addition, the converter is a massive burden on driving range and design as well [
28]. Ahmad proposed a chopper topology that reduces mass and volume with high chopper efficiency [
29]. Miyatake investigated electric double-layer capacitors as an OESS due to their high energy density. A mathematical model is formulated using a widely applicable optimization technique known as sequential quadratic programming, which can determine optimal acceleration/deceleration and current commands at each sampling point, maintaining fixed transfer time and distance [
30]. Wu introduced OESS with on-route constraints to model the real-world scenario. Based on the proposed MILP model, degradation of the OESS influences discharge/charge strategy, and the energy consumption is reduced by 11.6% with the introduction of OESS recovering RBE [
31]. González-Gil considered Lithium-ion battery (LIB) and nickel-metal hydride (NiMH) batteries as viable options for OESS [
8]. In addition, Pulazza proposed that the energy transmission congestion resulting from renewable energy can be managed by installing OESS, which proves the advantage of the installation of OESS [
32]. Similarly, different types of OESS are also applied in commercial operation [
33,
34,
35,
36,
37,
38,
39].
On the other hand, the application of OESS improves the efficiency of train power delivery because the energy does not need to be delivered through the catenary to a SESS but is embedded directly in the train itself. It is important to note that this does not mean that SESS is useless. Combination applications of SESS and OESS are usually installed in smart grids, microgrids, wind farms, etc. [
25,
40,
41]. The cooperation between SESS and OESS is just part of this paper’s proposal. They can work together to optimize the recovery and utilization of RBE throughout the rail transit system. OESS can capture energy quickly on the train, while SESS can distribute stored energy more evenly throughout the rail network to be shared and utilized when needed. Considering that the weight of OESS influences the energy consumption of the train, LIB is adopted as OESS. From a cost–benefit perspective, due to the introduction of OESS, the quantity and capacity of all the SESSs will be decreased, compared with the case only equipped with SESS [
42], leading to substantial gains in energy savings and electricity cost reduction [
43].
Besides the concern of SESS and OESS, capacity optimization of ESS is of great significance. Pang applied NSGA-II to address the capacity configuration of Energy-Storage Systems (ESS) in rail transit, considering two objectives: minimizing braking resistor energy consumption and configuration cost [
44]. Similarly, Mundra also takes advantage of NSGA-II, achieving dual-objective optimization for the peak-to-average ratio of the total energy demand and electricity usage charge in smart grid [
45]. On the other hand, Qayyum adopted PSO to minimize the nano grid energy trading cost while meeting energy demand [
46]. Meanwhile, Li utilized Improved Particle Swarm Optimization (IPSO) to balance system economy and stability in the distribution grid [
47]. On the other hand, to enhance the coordination between Transit-Oriented Development (TOD) and station-area land use in developing a potential city transit, Pishro employed Multiple Linear Regression (MLR) to establish Node–Place–Ridership–Time (NPRT) equations. This approach surpasses the accuracy of the earlier Node–Place (NP) and Node–Place–Ridership (NPR) models, delivering more precise outcomes [
48]. Similarly, Pishro develops eight Multiple Linear Regression (MLR) equations for each hub by combining mathematical techniques and machine learning. It yields valuable insights that guide decision-making and facilitate the development of transportation systems [
49]. Boukerche proposed machine-learning (ML)-based methods for building traffic-prediction models that are less restrictive to the prediction task as they require less prior knowledge of the relationships between different traffic modes and can better fit the nonlinear features in the traffic data [
50]. Hitachi created and implemented an AI-driven hybrid railway traffic-management system to aid in the automation of the intricate process of planning train schedules [
51]. Essien suggested a novel urban traffic-prediction model using deep learning. The model integrates insights from tweets along with traffic and weather data to enhance accuracy and reliability in predicting urban traffic patterns [
52].
All in all, this paper adopts HESS configuration as SESS, combining high-power-density ESS, SMES, and high-energy-density ESS, LIB. To explore the combination of SESS and OESS in rail transit energy management, OESS utilizes LIB. To optimize the ESS capacity, minimize redundancy, and balance trade-offs between multi-objectives, cost, and energy consumption, NSGA-II is applied [
53]. This is because of its ability to achieve a notably enhanced distribution of solutions and improved convergence closer to the Pareto-optimal front across various problem scenarios. The Parallel Computing Toolbox has been introduced to save computation time.