1. Introduction
The Kuwaiti government plans to produce 15% of its total domestic energy demand from renewable energy sources by the year 2030 [
1]. This ambitious strategy is a response to fears over the surge in the national energy supply from hydrocarbon sources in Kuwait since 1990. By the end of 2019, Kuwait installed fossil power plants with a combined capacity of 19.3 GW, of which renewable energy accounts for only 106 MW, or less than 1% of total capacity [
2]. At the same time, Kuwait is experiencing an exponential growth in internal combustion engine vehicles as a result of the low prices of these types of vehicles and the low cost of fuel [
3]. The transport infrastructure is under stress due to high demand, where car ownership exceeds 3.3 per capita [
4]. A recent study emphasised that one of the main causes of high pollution levels in Kuwait is vehicle traffic congestion, visualised by an ever-increasing number of cars queuing on major highways such as the King Abdulaziz (Fahaheel) and the 5th and 6th Ring Roads [
3,
4]. Previous studies have recommended the development of new strategies that aim to reduce and manage the pollution impact of road traffic congestion. Unfortunately, the classic way to combat traffic congestion in Kuwait has been to increase the road capacity by adding new roads or lanes to the transport networks as opposed to reducing vehicle numbers [
3].
To reduce the reliance on fossil fuels and mitigate greenhouse gas emissions, electric vehicles (EVs) have gained significant attention in recent years [
5]. Globally, the number of EVs on the road exceeded more than 10 million by the middle of 2021, and this figure is expected to reach 120 million by 2030 [
6,
7]. This acceleration in sales is driven by many factors, including breakthroughs in lithium-ion battery technology, cost reductions and increasing range, stability and lifetime. These milestones, coupled with the drive to net zero, allowed many traditional vehicles manufacturers to enter the market, resulting in a cheaper and wider range of EVs to be commercially available [
8]. In addition, such development reduced customers’ anxiety, resulting in a higher number of EV technology adopters globally.
The harsh climatic conditions in Kuwait will have implications for the energy consumption of EVs and therefore will affect the provision of charging infrastructure. While a number of relevant studies were found in a review of the literature, the
real-world performance of EVs in harsh environmental conditions, specifically in hot countries, remains little studied. In Liu et al. [
5], for example, the maximum ambient temperature recorded was 37 °C, a temperature regularly exceeded by a large margin for many months of the year in countries such as Kuwait.
Previous literature overlooked the parameter affecting energy consumption in EVs related to the climate [
5], even though ambient temperature has a significant effect. Literature of studied EV performance in warm to hot weather is limited [
8]. In 2017, Taggart [
8] used real-world fleet dataset from Tesla, Inc. covering over 10,000 individual vehicles, with an average trip distance of 22,000 miles per car. The study showed that energy consumption of EV driving is at the lowest level at moderate temperatures (20–30 °C), with the largest energy consumption for extreme cold (below the freezing point). The study illustrated that the average energy consumption over trip length is inversely related to trip distance. For instance, short trips (0–10 miles) noticeably incurred remarkably high energy comparison compared to trips over 25 miles. Dost et al. [
9] monitored the behaviour of a representative sample of 500 people in Germany in a field test. Twenty-four electric cars were used to measure the parameters affecting energy consumption over 700,000 km. The work showed that high energy consumption (increased by 60%) related to driving in moderate wintry weather of 10 °C and highlighted the need to introduce more efficient heating air conditioning units in vehicles.
Yuksel and Michalek [
10] tested the Nissan Leaf EV to develop a general functional relationship between ambient temperature and energy consumption efficiency. The research concluded that this EV uses 15% energy per mile related to weather data and found that yearly average energy consumption (per mile) for this type of EV is 15% higher in the relatively cold states in the USA compared to warmer states on the Pacific Coast. The paper relied on 7000 real-world trips, compared to a fixed estimation of the expected range of the Nisan Leaf’s battery capacity of 21 kWh. This confirmed the sole relationship between differences in climate and energy utilisation. Liu et al. [
5] modelled the effect of ambient temperature on EV energy consumption. The work emphasised the overexaggerated common concept that energy consumption in hot weather is extremely high, and vice versa. They considered the factors affecting energy consumption of EVs in a real-world field study and used GPS trajectory data for 68 EVs in Japan for 2 years up to January 2013. The research concluded that the most economic temperature to drive in is around 23 °C and observed that in high-energy-consuming trips, the heater and air conditioner are used simultaneously; thus, they recommended to automatically prevent the use of the two functions at the same time to prevent wasting energy. This work aims to provide additional empirical data on these effects by analysing real field data of an EV operating in high-temperature Kuwait.
Table 1 shows the average daily ambient air temperature in Kuwait, which is warm to extremely hot all year. The maximum average daily ambient air temperature varies between 39.5 °C in July and a minimum of 15 °C in December. The daytime temperatures are extreme in summer months, with a maximum average of 46 °C in July and August, and are mostly high at the time of coming back from work and school. During these times, in-vehicle air conditioning loads of cars working on fossil fuel could increase the energy consumption by up to 10% [
11], especially on short trips with an average speed of less than 30 mph. Therefore, a significant concern for consumers purchasing electric cars in Kuwait is the relationship between hot temperature, energy intensity (the energy consumption per kilometre travelled) and the available range of an EV on a single charge.
This study investigates the viability of utilising electrical vehicles (EVs) in the hot climate of Kuwait. We aim to contribute to knowledge and improve the understanding of temperature-related effects on the range of EVs under the hot and arid conditions encountered in Kuwait, but with implications for other similar climates around the world. The paper is organised as follows: the next section describes the methodology, followed by the data collection, the results and discussion and then the conclusions of the study.
2. Methodology
The statistical modelling presented in this study investigated the relationship between temperature and energy intensity, defined as the energy consumption per kilometre travelled. The modelling used ordinary least squares (OLS) regression to examine the relationship between ambient temperature recorded by the vehicle at the start of each journey and the energy intensity. The dependent variable, the average energy intensity for each trip (
EIi), is a measure of the electrical energy used to travel one kilometre. The metric was calculated from data collected for energy use at the start (
Estarti) and end (
Eendi) of each trip and the distance travelled (
Di), represented by Equation (1).
In fitting the data of energy intensity against temperature, a number of polynomial models were used, and the model with the best balance between simplicity and explanatory power was selected. The model optimal relationship was a third-degree polynomial of the form (y = β
0 + β
1·x + β
2·x
2 + β
3·x
3), where y is the predicted energy intensity of a trip (in Wh/km) and x is the starting ambient temperature measured by the car (in degrees Celsius, °C). The model fit, coefficients (β
1, β
2, and β
3) and intercept (β
0) are reported in
Section 4.
3. Data Collection and Description
As driving is linked with the daily activities of the residents in the country, the data should match various activities a typical Kuwaiti household may carry out. Considering the parameters that impact EVs’ energy consumption, a Chevrolet Bolt EV–2019 car (
Figure 1) was driven to simulate the five main trip scenarios in Kuwait: (i) home–office (morning), (ii) office–home (afternoon), (iii) peak hours (high traffic), (iv) short trips near home (late evening and night) and (v) long trips (random drives). The car used in the study has a range of 238 miles on a full charge, estimated by the Environmental Protection Agency in the USA (EPA) [
12]. The Bolt EV’s 60 kilowatt-hour (kWh) lithium-ion battery pack is made up of 288 individual cells. An available DC (direct current) fast charging system enables the battery to be charged to a range of up to 90 miles in 30 min. The car uses a 200 hp/150 kW permanent magnetic drive single motor and gear set [
13,
14].
Table 2 shows the specifications of the Chevrolet Bolt EV that was used in the study.
Data collection of the use of the vehicle began in July 2019 and is ongoing. This research reports on the analysis of data collected between 1 August 2019 and 31 October 2021. It must be noted that this period included several months of government-mandated restrictions on activities and movements (e.g., curfews of varying lengths) of the population due the COVID-19 pandemic. Partial lockdowns, generally applied during the evening and overnight hours, were in operation from 22 March 2020 to 9 May 2020 and 31 May 2020 to 29 August 2020. A full lockdown was in operation between 10 May and 30 May 2020 and consisted of a 24-h curfew [
15].
The vehicle user collected details for each journey manually. The date, time, vehicle odometer and temperature readings were recorded at the beginning and end of each journey alongside information from the vehicle status display, which contained information on the charge status of the vehicle battery, amount of energy used and ambient temperature measurement (
Figure 1). The latter was measured using the standard measurement device installed by the vehicle manufacturer. While the sensor does not provide a reliable measurement of ambient conditions, it does provide a useful proxy measurement for the operating conditions at the start of the journey. The limitations of this method are acknowledged in
Section 5. These details were recorded using photographs and subsequently entered into a data spreadsheet.
The data from the vehicle status display provided the following metrics, measured since the last time the vehicle was fully charged: energy used in kilowatt-hours, distance travelled in kilometres, proportion (%) of energy consumption used for driving, proportion (%) of energy consumption used for air conditioning and proportion (%) of energy consumption used for battery conditioning. From these measurements, the energy used (in kWh) and distance travelled (in km) were calculated for each trip. Disaggregating the total energy used into components for driving, air conditioning and battery conditioning was performed using the values for proportion of energy consumption recorded by the vehicle status screen. Standardised energy intensity was also calculated for each by dividing the energy used by trip distance, giving overall Watt-hours per kilometre (Wh/km) as well as disaggregated values for driving, air conditioning and battery conditioning.
Data Cleaning and Validation Checks
Any trip with missing odometer reading(s) (from either the start or end of the journey) was removed prior to analysis, leaving data from 2024 trips made on 577 days within the study period. The dataset contained two separate measurements for trip distance: (a) collected via the car’s odometer reading, accurate to 1 km, and (b) collected via the distance shown on the vehicle status display, accurate to 0.1 km. Using these two measurements, it was straightforward to run a check for data entry errors. To check the quality of the data recorded, we inspected the correlation between the two measures of trip distance recorded in the dataset. The resulting scatter plot is shown in
Figure 2.
We observe that, generally, the two measures are very closely correlated; data points appearing on the black line represent trips where the distance obtained from the odometer reading matches the distance obtained from the charging readings. The scatter plot shows several points plotted away from the line, indicating errors in data collection. We exclude data points that diverge from this line, using a tolerance of odometer distance ± 1% and ±1 km (shown as red lines), as we have lower confidence that these data points are valid. This check removed 53 observations from the dataset.
Other validation checks were also performed to exclude observations with clear data entry errors. First, trips recorded with zero and negative distances were removed. Trips with erroneously long distances were also removed with a filter applied to exclude any trip recorded over 200 km. Trips with missing or erroneous start or finish times were also excluded. Finally, the energy use and calculated values for energy intensity were examined. Trips with negative values for energy use were excluded (six observations), along with trips with average energy intensity of greater than 500 Watt-hours per kilometre (eight observations). The remaining data contained 1822 trips recorded from 530 days.
5. Conclusions, Limitations and Future Work
This research investigated the impact of high ambient temperatures on vehicle efficiency from journeys made in a region with higher ambient temperatures (>50 °C) compared to those recorded by Liu et al. [
5] (<35 °C). It presents empirical data collected through real-world usage of a single electric vehicle in Kuwait under environmental conditions that would be expected under typical use in the country. As would be expected, the data show a strong correlation between journey distance and energy use. Modelling of the data also shows a significant relationship between the car temperatures recorded at the start of journeys with the measured average energy intensity for journeys.
The results gained in this real-world vehicle in use case study (in contrast to lab conditions) indicate that there is a significant efficiency penalty when driving the EV in the hot conditions experienced in Kuwait and that hot conditions are common for journeys encountered. This has implications for EV range in such climates and is important in relation to customer perception—more specifically, travel range anxiety. The reduction in range resulting from increased energy intensity of use in higher temperatures also has implications for charging infrastructure.
Due to the unreliability of the disaggregated energy use of different systems within the vehicle, it was not possible to directly investigate the contribution of air conditioning or battery conditioning to the increase in energy intensity at higher temperatures. Nevertheless, the results show that energy intensity increases with temperature measured by the EV at the start of journeys. However, how much of the increased energy intensity is attributable to driver and passenger comfort preferences and to the response of vehicle performance to operating temperature cannot be ascertained from this study. Directly monitoring the energy consumption of these systems in the future would provide valuable data with which to further investigate the components of the temperature effect found in this case study. Combined with further instrumentation of the cabin (e.g., temperature and humidity measurement) and more detailed measurements of ambient environmental conditions, such data would allow some disentanglement of the cause of temperature effects on vehicle energy intensity due to vehicle performance and/or passenger comfort preferences.
While the ambient temperature measured by the car provides an indication of the operating conditions of the vehicle during each journey, it does not provide detailed information on the ambient conditions both prior to, and during, operation. Further investigation is required to understand the effect of different vehicle storage and parking arrangements on the relationship between ambient temperature, car operating temperatures and cabin conditions, and by extension, energy intensity and vehicle range. For example, carpark shading and/or cabin pre-cooling while charging would decrease cabin temperatures at journey start, reducing the energy demand for air conditioning and thereby improving energy intensity and increasing range. Such measures may also improve driver and occupant comfort.
Providing further measurements of vehicle driving parameters (such as speed, acceleration) and route information (such as road type, gradient [
16]) would allow future work to investigate and control for variables related to road conditions, traffic and driving style.