1. Introduction
In recent years, electric vehicle usage and popularity have been growing steadfastly. The Mobility Market Outlook report from Statista estimates that the worldwide sales of electric vehicles will reach
$384 billion by 2022 [
1]. According to the analysis, in 2027, it is predicted that the combined market value of electric vehicles will be
$869 billion, surpassing the sales of internal combustion engine vehicles. Global electric vehicles are too new to project a certain future trajectory, but the market is expected to accelerate exponentially due to their cost/energy efficiency, improved performance, and limited environmental impact. Over 3.2 million new plug-in vehicles were listed worldwide in the year’s first half [
2].
The increasing growth of electric vehicles has increased the significance of battery usages while also emphasising the need to develop their safety. Lithium-ion batteries are currently used in most of today’s electric vehicles due to excellent performance at high temperatures, low self-discharge, high power-to-weight ratio, and elevated energy efficiency [
3]. Research and development have proceeded to lower the cost of Li-ion batteries, increase their usable life, and solve overheating safety concerns.
While the batteries are intact and free of flaws, lithium batteries are usually secure and not likely to explode. Li-ion battery damage from a crash can happen quickly or gradually and present the risks of fire or explosion [
4]. The Li-ion battery in a moving vehicle always functions at different speeds and accelerations. A moving battery is subject to local stresses and deformations that, in extreme circumstances, such as car accidents, may cause local cell damage [
5]. An increase in battery temperature could set off more unfavourable mechanisms and result in thermal runaway, an uncontrollable situation where the battery produces too much heat [
6]. Therefore, safeguarding Li-ion cells from harm caused by crashes is a key challenge. Battery packs are positioned away from impact areas and from where foreign things could penetrate. However, for bigger electric vehicles, the floor battery pack arrangement exposes the battery to serious damage from ground impact, including localised indentation, piercing, and fracture of its bottom construction [
7].
Improving the protection system becomes a priority to limit deformation during impact and lower incident risk. A crashworthy battery protector should be extremely light to conserve energy, strong enough to prevent excessive deformation, and have excellent energy absorption capabilities. Many designs, including sandwich structures, have been researched as Li-ion battery shields. The sandwich structure consists of a pair of skins that is strong, thin, and stiff, which becomes a cover on the upper and lower parts; the thick but light core material is placed in the middle of the skins as a load transfer medium, usually using cell-shaped material with less rigid and ultra-low-density material. These structures’ light weight and high energy absorption capability make them popular in the construction and aerospace industries [
8,
9].
Different structures, including metastructure, can be placed within the sandwich structure’s core [
9]. Metastructures, which are lighter than comparable solid structures, form by repeatedly arranging unit cell structures. Metastructure can be classified using a variety of structures, with human bones and honeycomb-like beehive structures as two examples found in nature. Because of its lightweight characteristics and strength, metastructure has significant potential for high energy absorption. For this reason, the metastructure-filled sandwich structure make it a viable candidate for use as a battery protection system.
One of the smallest unit cells in the metastructure is the bi-stable element, which is becoming increasingly popular as a basic element due to its ability to easily support loads and be manufactured using additive manufacturing techniques [
10]. While other bi-stable unit cell components appear rigid, the curved section is first constructed as a curved clamped beam [
11]. Their multi-stability allows their curved shell designs to create newly architected metamaterials to trap energy [
12]. Due to the instability of the buckling that initiates the bi-stable snap-through behaviour, this structure with negative stiffness characteristics will experience greater deformation, preserve its deformed shape, and trap the crushing energy. As a result, it is very suitable as an energy-absorbing element.
Another type of metastructure is the auxetic structure [
13]. Due to its exact geometric configuration and mechanical deformation of its microstructures, auxetic material shrinks laterally when crushed because it has a negative Poisson’s ratio [
14]. As a result, this material exhibits exceptional shear stiffness, excellent fracture toughness, remarkable indentation resistance, and unusual energy absorption capabilities. Because the auxetic structure is drawn to the impact location, it also has a smaller peak crushing force, which lessens damage and harm to the protected object [
14]. With its remarkable and unique features, the auxetic structure has great potential for many applications, such as protection work and variable-type aerospace wingtips [
15]. The auxetic patterns explored in this research are star-shaped and double-U honeycomb (DUH).
Previous research has been focused on the optimisation design of different metastructure configurations with a wide range of optimisation methods, including topological, multi-objective, Design for Six Sigma (DFSS), machine learning-based, etc. Filho et al. [
16] performed a multi-objective optimisation of sustainable sandwich panels with perforated foam cores to withstand impact loads. The research by Francisco et al. [
17] centred on optimising the double arrowhead auxetic model using the multi-objective Lichtenberg algorithm. Nasrullah et al. [
18] explored the topology optimisation of lattice structure configuration design for crashworthy components. The study by Kirana [
19] carried out the optimisation of the bi-stable metastructure configuration subjected to explosive and compressive loads to present the energy-absorbing mechanism using the Taguchi method with an L16′ orthogonal array. Biharta et al. [
20] developed an auxetic-based 3D sandwich architecture to protect an electric vehicle pouch battery from ground impact stress. The auxetic structures were optimised using Taguchi’s DFSS method to increase the specific energy absorbed. Another relevant research is from Carakapurwa et al. [
21], who used machine learning to predict the best protection system for pouch batteries by optimising several 2D auxetic configurations (re-entrant, double-arrow, star-shaped, DUH), material, and geometric variables.
To address the gaps from previous research regarding application and design variables, this research will focus on optimising the electric vehicle prismatic battery protection system to resist ground impact using a sandwich metastructure configuration. Based on studies by Xia et al. [
7], the sandwich structure was positioned on the floor structure of the vehicle and simulated to withstand an impact from an oncoming impactor that came from below. The prismatic Li-ion battery modelled and experimentally tested in the study by Reynolds et al. [
22] formed the basis for the battery system used in this research.
Bi-stable [
19], star-shape [
23], and double-u honeycomb [
24] 3D configurations were the different types of geometry for the metastructure studied, while the material type was limited to SS304, Al6061, and ST37. The machine learning optimisation method was implemented to vary these variables to forecast the ideal configuration. To acquire the SEA for every sample in the data sampling process, 100 samples were constructed using LHS and manually simulated through FEM. The whole input and SEA values datasets were then processed through data training using ANN to develop a mathematical model that predicted SEA. As the final optimisation stage, the NSGA-II was used to iterate the variables in search of the maximum SEA.
The optimised metastructure design predicted by machine learning was modelled in an entire battery system simulation exposed to a dynamic impact to validate its accuracy and safety capability. The crashworthiness of the entire battery system and optimised structure was evaluated using a prismatic battery failure threshold, which fails when the deformation exceeds 10.423 mm [
22]. If the battery’s deformation is less than the failure limit, the system can safeguard against severe deformation.
The objective of the battery protection structure’s optimisation and analysis is to offer the best possible solution for the safety of electric vehicle Li-ion batteries. Future uses for electric vehicles may benefit from implementing the design of battery protection against thermal runaways presented in this research. Machine learning optimisation can also offer strong solutions to determine outstanding SEA value.
5. Conclusions
Preliminary modelling and validation of simulation were used to determine the valid modelling parameters and baseline performance using the optimised beam-type bi-stable metastructure from Kirana’s research [
19]. The simulation has shown that the baseline structure can absorb a crash energy of 58.7 J. The SEA value of the baseline model is 996.9 J/kg, given its mass of 0.0589 kg.
ANN and NSGA-II were used to predict the optimised metastructure configuration. It is found that the star-shaped auxetic cell can absorb the most crushing energy while having the least amount of mass, which results in the highest SEA. When subjected to a uniformly dispersed load, the cell structure has auxetic characteristics due to the crushing trend where the centre of the cell laterally shrinks in the transversal direction, as shown in
Figure 22.
The optimal cell (
Figure 12) has the following dimensions: 10.2 mm inner spacing, 2.9 mm thickness, and consists of 1 stack. With 0.049 kg of mass and 2772.38 J of absorbed energy, the optimal cell has a SEA value of 56,596.28 J/kg or 5577% higher than the baseline model, according to the numerical simulation results.
Furthermore, the best cell configuration is the second arrangement, based on the whole battery system simulation results and comparison analysis, (
Figure 17), in which the optimised cell is arranged in
cells for a total dimension of
mm. This dimension formed a 95,695.6
volume with 0.258 kg of mass. With this arrangement, the battery’s maximum deformation is 7.33 mm, significantly less than the deformation required for prismatic battery failure (10.423 mm).
Future research is suggested to improve this work by extending the data training process, investigating different machine learning methods, and also validating other shape-type options. The data training process can be developed by considering new geometrical shapes and additional materials such as composites, simulating additional impactor conditions, and other loading scenarios with manufacturing aspects in the simulation. Another optimisation method to be explored can conclude single-objective genetic algorithms that are Pareto-dominance-based.