1. Introduction
The transportation sector, particularly heavy-duty trucks, plays a vital role in the global economy. However, the predominance of diesel-powered heavy-duty trucks has raised significant concerns due to their substantial contribution to carbon and greenhouse gas (GHG) emissions. In the United States, medium and heavy-duty trucks account for approximately 26% of the total GHG emissions from the transportation sector, while light-duty vehicles make up 57% of them [
1]. While heavy-duty trucks make up a smaller proportion compared to passenger vehicles in terms of volume, their emissions have a significant impact due to their high mileage and relatively lower energy efficiency measured in miles per gallon (mpg). As an example, heavy-duty diesel trucks generally have a fuel efficiency of 6–7 mpg (6 mpg ≈ 40 L/100 km, 7 mpg ≈ 33 L/100 km), whereas passenger vehicles typically average between 25–30 mpg (25 mpg ≈ 9.4 L/100 km, 30 mpg ≈ 7.8 L/100 km) [
2]. According to a report by the U.S. Department of Transportation, Federal Motor Carrier Safety Administration, in 2017, among the 272,480,899 total registered vehicles in the United States, 9,336,998 (3.42% of total) were single-unit trucks (straight trucks), and 2,892,218 (≈1% of total vehicles) were combination trucks (tractor-trailers) [
3]. In addition, in 2017, there were 3212.3 billion VMT by all motor vehicles, but large trucks traveled 297.6 billion of those miles (9.3 percent of the total) [
3]. This underscores the significant role that heavy trucks play in terms of total miles traveled and the potential impact on emissions reduction through electrification.
Diesel heavy-duty trucks also incur high maintenance and operational costs. These costs include fuel expenses, engine maintenance, and exhaust after-treatment systems required to comply with strict emission standards. For example, diesel particulate filters (DPFs) and selective catalytic reduction (SCR) systems require regular maintenance and can be costly to replace [
4]. Transitioning to autonomous electric heavy-duty trucks (AETs) can help alleviate these challenges by reducing maintenance and operational costs.
AETs also offer a promising solution to address the safety challenges associated with diesel trucks. Currently, heavy-duty trucks are involved in a significant number of accidents and fatalities; in 2020, approximately 4965 fatalities occurred in crashes involving large trucks in the US [
5]. The primary causes for these accidents include driver fatigue, distraction, and human error. Moreover, the trucking industry faces a driver shortage, with an estimated deficit of 60,800 drivers in 2020 [
6], which exacerbates the problem. Because the majority of driven miles for heavy-duty trucks occur on highways, where traffic patterns are more predictable and pedestrian interactions are minimal, heavy-duty truck highway driving automation is a simpler technological target when compared to urban driving scenarios.
The development of an AET fleet holds immense potential to reduce GHG emissions, enhance safety, and address the challenges faced by the trucking industry. However, the successful implementation of AETs requires careful consideration of the charging infrastructure. This study aims to investigate the key factors influencing the implementation of a charging infrastructure for AETs and proposes strategies to accelerate their adoption.
Building upon previous studies, this research endeavors to provide valuable insights into the development and analysis of the charging infrastructure for AETs. By addressing the identified gaps, this study contributes to the overall understanding and progress in the field.
The existing body of research broadly investigates charging infrastructure requirements for electric vehicles and their distribution grid impacts. Comprehensive reviews such as those in [
7,
8] have examined various aspects of this domain, including transport networks, charging technologies, spatial localization methodologies, and challenges in gathering empirical data.
Several studies have delved into energy/power requirements and the distribution grid impacts of heavy-duty electric vehicle charging, including micro-level and macro-level analyses. At a micro level, a study carried out by the National Renewable Energy Lab (NREL) sought to conduct time-series simulations on various connection points of a distribution feeder to understand charging impacts, given charging load profiles and charging locations [
9]. On a more macro scale, an NREL study developed synthetic depot charging load profiles for heavy-duty trucks from real-world operating schedules and applied depot charging load profiles to 36 distribution real-world substations within the Energy Reliability Council of Texas (ERCOT) network, concluding that most substations can accommodate high levels of heavy-duty EV charging without upgrades by optimizing charging times in order to take advantage of the off-shift dwell hours (average of 14.1 off-shift dwell hours) of the real world fleet data modeled [
10].
Another study by NREL leveraged scale vehicle telematics data (>205 million miles of driving) of diesel-based semi-trailer fleets to estimate charging behaviors and infrastructure requirements for the U.S. battery-electric semi-trailer trucks within three main operating segments: local, regional, and long-haul. Their finding suggests that existing charging standards (≤350 kW) meet the charging requirements for 35 to 77% of the total energy demand for local trips with an operating radius (OR) ≤ 100 miles and regional trips with 100 miles ≤ OR ≤ 300 miles [
11]. This assessment, again, was based on charging availability time windows due to the long dwell times of semi-trailers in these segments, which averaged 16.9 h/veh/day and 15.2 h/veh/day for local and regional truck segments, respectively.
Although these previous studies investigated the impact of added electrical loads on distribution systems, they did not explore the impacts of autonomous semi-trailer operations, which are analogous to electric semi-trailers. Existing research primarily focused on modeling electric semi-trailer duty cycles similar to their diesel counterparts, heavily relying on downtime for opportunities to meet charging requirements. However, the commercial trucking landscape is rapidly changing due to increased online purchases and same-day delivery. With 65% of U.S. consumable goods transported to market by trucks, between 12 and 15% of all U.S. purchases are now made from home. Amazon’s same-day delivery service, which is only a few years old, already accounts for 5% of all deliveries, and this figure could reach 15% by 2025 [
12]. This demand for goods and services delivery is fueling the accelerated innovation in the heavy-duty trucking industry to reduce operational costs. McKinsey research anticipates a 45% decline in operating costs for fully autonomous trucks, saving the U.S. for-hire trucking industry between
$85 billion and
$125 billion per year [
12]. A major contributor to these cost reductions is the industry trend known as “asset sharing,” which refers to businesses sharing capital-intensive assets such as trucks and warehouses to unlock unused asset capacity. This suggests that the industry will shift toward autonomous electric trucks (AETs), with them becoming shared assets among multiple shippers/businesses, significantly changing the logistical landscape. Fleet managers will aim to minimize truck downtime to maximize daily AET delivery numbers. In addition to driver shortage, regulatory authorities have put in place hours-of-service regulations and electronic-logging device mandates that limited the number of hours that a driver can be on the road [
12]. Fully autonomous trucks, however, are not likely to be subject to the same constraints and conditions, further strengthening the case for minimal down time.
Several studies have evaluated the adoption of shared autonomous electric vehicles (SAEV) [
13] and the charging infrastructure requirements in the context of providing ride sharing capabilities for commuter trips [
14]. The study in [
15] explored the operations of shared autonomous electric vehicles (SAEV) and their charging infrastructure requirements in a regional, discrete-time, agent-based model. The work in [
15] builds on the framework outlined in [
16] to include charging infrastructure estimations that are modeled based on charging characteristics, vehicle range, and fleet size. The work simulates the operation of SAEVs under various vehicle ranges and charging infrastructure scenarios in a gridded city model, with the optimization goal of maximizing the number of trip requests served by a given fleet size and charging station location distribution. These previous studies do not, however, fill the research gap for understanding the operations and charging infrastructure impacts of AETs.
This paper, therefore, aims to address this research gap by estimating the charging infrastructure required to accommodate a full or partial fleet of AETs at a macro scale within a geographical region. Leveraging a discrete-time model [
15,
16] and focusing on the state of Texas, we simulate daily trips of AETs and estimate the resulting charging infrastructure needs. This contribution extends the previous research by considering the minimal downtime and continuous operations that are characteristic of AETs, thereby offering a more contemporary model for the rapidly evolving heavy-duty trucking industry.
5. Conclusions
This study presented a data-driven approach to estimate charging infrastructure requirements for heavy duty electric trucks using a conceptual autonomous electric heavy duty trailer (semi) within the major cities across the state of Texas. By simulating daily trips and energy consumption patterns, we have provided a comprehensive analysis of the charging infrastructure needs for cities along the Texas highway corridors I-35, I-45, and I-10. In this study, we have analyzed the charging infrastructure requirements for heavy duty electric trucks in 19 cities, with summaries focused on the three major Texas cities that anchor the intersections between the major highway corridors: San Antonio, Houston, and Dallas. Our analysis considers various factors such as daily trip patterns, energy consumption, and equipment costs for charging stations with different capacities (50 kW, 150 kW, and 350 kW DCFC EVSE). The results show that the total charging energy and average charging power for these major cities ranges from 443 MWh/day to 533 MWh/day and 18.5 MW to 22 MW, respectively, while the total cost for setting up the necessary charging infrastructure ranges from $7.74 M to $15.93 M for each city, depending on the charging capacity and installation costs.
For San Antonio, we estimate that 370 50 kW DCFC EVSE units, 124 150 kW units, or 53 350 kW units are needed, with a total cost range of USD $7.74 million to $12.74 million. In Houston, 440 50 kW units, 147 150 kW units, or 63 350 kW units are necessary, with costs varying between USD $9.68 million to $15.93 million. Dallas requires 380 50 kW units, 127 150 kW units, or 55 350 kW units, with total costs ranging from USD $8.06 million to $13.24 million. San Antonio requires 370 50 kW units, 124 150 kW units, or 53 350 kW units, with total costs ranging from USD $7.7 million to $12.7 million.
Note that these estimates do not include the distribution grid infrastructure such as distribution transformers, feeder circuits, feeder breakers, or substation installation, as the requirements for these would have to be analyzed on a case-by-case basis in order to determine the need. In a future study, we plan to investigate the approaches and guidelines for developing and prescribing these types of distribution system upgrades.
Our data-driven approach can be replicated for other areas or regions by adapting the simulation parameters such as trip patterns, energy consumption, and equipment costs to the specific context. This will allow policymakers and stakeholders to assess the charging infrastructure requirements and related investments needed to support the transition to electric and autonomous heavy-duty trucking.
It is important to recognize that our estimates are subject to uncertainties and assumptions related to factors such as trip patterns, power demand distribution, energy consumption patterns, and equipment costs. To refine these estimates, future research should integrate real-world data, such as actual charging station usage, and examine the impact of different charging strategies on infrastructure requirements.
Overall, this study offers valuable insights into the charging infrastructure needs for AET-based operations and duty cycles for major cities in Texas along the major highway traffic corridors. The study takes into account the road network and the trip distance distributions, laying the groundwork for further research and policy development in the area of autonomous electric heavy-duty trucking. By utilizing data-driven methodologies, policymakers and stakeholders can make informed decisions to support the transition to electric mobility, ensuring a more sustainable and environmentally friendly future.