Impact of Emerging Transport Technologies on Freight Economic and Environmental Performance: A System Dynamics View
Abstract
:1. Introduction
- First, what are the potential impacts of the economic transformation in port hinterlands on the operation of road freight enterprises? The Kinetic Conversion from Old to New Industries initiative aims to reduce traditional coal- and metal-related industries while stimulating new high-value-added industries in Shandong Province. This transition in the structure of the hinterland economy will influence the throughput of Qingdao port and further influence the freight demand of road freight enterprises.
- Second, how does the adoption of ETTs affect the operational efficiency, profitability, and environmental performance (primarily in terms of greenhouse gas (GHG) emissions) of road freight enterprises? The adoption of ETTs changes the structure of transport costs and further affects road freight companies’ competitive position in the freight market. Thus, its systematic influence on the profitability and environmental performance of road freight companies deserves dedicated investigation.
2. Literature Review
2.1. Factors Influencing the Economic and Environmental Performance of Road Freight Enterprises
2.2. ETTs and Their Potential to Increase Transport Efficiency
- Eco-driving. Road freight enterprises retrofit freight vehicles with fuel-efficiency improvement systems to instruct alternative fuel-efficient driving behaviors. Barth and Boriboonsomsin [6] applied simulations and field experiments to explore the effect of eco-driving. They found that the fuel consumption of trucks decreases by 10–20% with eco-driving.
- Vehicle utilization. This ETT refers to increasing the load rate of trucks and reducing empty vehicles. This involves the utilization of information technologies to form a vertical collaborative relationship between shippers and road freight enterprises [8]. As a result, the utilization rates of vehicles can be increased by sharing freight information. Mulholland et al. [1] reported an average of a 7.3–12.8% increase in the vehicle utilization rate by vertical collaborations between shippers and road freight enterprises.
- Optimized vehicle design. Via optimized vehicle design (adoption of pneumatics, improved tire design, and lightweight vehicle bodies) and transmission system improvements, energy use intensity during freight transport is reduced [9]. Delgado et al. [25] reported a 20–33% reduction in the energy use intensity for heavy-duty trucks in China by 2035.
- Renewable energy trucks. Chu and Majumdar [10] summarized the merits, challenges, and progress of alternative fuels in the transportation sector. In response to the need for a higher transport mileage and faster fuel refilling, Shandong Province emphasized the cultivation and application of hydrogen energy for heavy-duty trucks in The Kinetic Conversion from Old to New Industries initiative [13].
2.3. Research Gap
3. Methodology
3.1. Theoretical Basis
3.2. System Dynamics Model
3.3. Input Parameters
3.4. Scenarios Regarding ETTs
4. Results
4.1. Model Validation
4.2. Impact of Macroeconomic Uncertainty on Road Freight Profit and GHG Emissions
4.3. Impact of ETTs on Road Freight Profit and GHG Emissions
4.4. Prioritization of ETTs Based on Sensitivity Analysis
5. Discussion
- In a growing economy, it is difficult to coordinate the demand for freight delivery and the goal of GHG reduction. Economic growth in Shandong Province will lead to increased freight demand in Qingdao port. The environmental issues arising from freight traffic are a major challenge for road freight companies and port authorities. In this circumstance, the adoption of ETTs is an effective means to satisfy freight demands while mitigating negative environmental impacts.
- ETTs are conducive to improving transport efficiency and reducing operational costs. However, their adoption cannot fully offset the cost of equipment installation. Thus, economic incentives are necessary to raise freight companies’ intention to adopt ETTs. General policy levers include subsidies or carbon trading schemes.
- Regarding the case of this study, optimizing vehicle design and improving the efficiency of vehicle use are currently plausible options. In contrast, the adoption of eco-driving and fleet platooning is either too costly or only being piloted. Nevertheless, companies can partially realize the benefits of both options through driver training [51].
6. Conclusions
- With regional macroeconomic growth, the throughput of Qingdao port increases. This leads to an increase in the aggregate freight demand for local freight companies. As a result, the profit of the road freight enterprises affiliated with Qingdao port will reach USD 2.38–2.76 billion by 2035, which is an increase of 58–83% compared to the profit in 2020. Meanwhile, GHG emissions from road freight will increase to 3.8–4.5 million tons by 2035, an increase of 34.5–45.4% compared to the emissions in 2020 due to the growth in freight demand.
- All of the candidate ETTs exhibit a positive effect on reducing GHG emissions from road transport, but they also cause profit losses due to a high application cost, even though they reduce transport operating costs by providing fuel savings.
- Both road freight profit and GHG emissions are most sensitive to macroeconomic development because economic growth leads to an increase in freight demand and transport activities. GHG reductions are sensitive to the adoption of ETTs.
- A prioritization of the candidate ETTs is necessary for road freight enterprises, whose expenditure is usually limited; this entails the introduction of a carbon-based compensation mechanism. Vehicle utilization, optimized vehicle design, and eco-driving take the first three priorities during adoption by road freight enterprises. Other ETTs may be more feasible over a longer time horizon.
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Parameter | Value | Unit | Source |
---|---|---|---|
Throughput of Qingdao Port in 2020 | 540 | million ton | [38] |
Hinterland macroeconomic data | with lookup | - | [39] |
Average freight mileage | 326 | km | Average data weighted by regional economy |
Average truck payload | 35 | ton | Onsite survey |
Average annual mileage of heavy trucks | 120,000 | km | Onsite survey |
Heavy truck stock in 2020 | 50,000 | vehicle | Extrapolated |
Purchased heavy trucks in 2020 | 9000 | vehicle | Extrapolated |
Vehicle acquisition costs | 40,000 | USD/vehicle | Onsite survey |
Staff salaries | 1400 | USD/person/month | Onsite survey |
Diesel price | 1086 | USD/ton | Onsite survey |
Road charges | 0.2 | USD/km | Onsite survey |
Shipper perceived time value | 0.72 | USD/ton/hour | Interview findings |
Highest speed of trucks | 80 | km/hour | Onsite survey |
Fuel consumption for road transport | 18 | tce/million tkm | Energy consumption [40] |
GHG emission factor of Road | 2.146 | ton/tce | [41] |
Freight rail speed | 100 | km/hour | Documents on railway construction standards |
Average dwelling time for railway collections | 2 | day | Onsite survey |
Scenario | Parameter Changed | Penetration | Parameterization | Cost | Source | ||
---|---|---|---|---|---|---|---|
Baseline | Low | High | |||||
Economic trends | economic growth | / | 5% | 5.5% | 6% | / | [13] |
Eco-driving | energy intensity | 100% | 0 | 10% | 20% | USD 30,000 | [6] |
Fleet platooning | energy intensity | 100% | 0 | 3% | 25% | USD 40,000 | [7] |
Vehicle utilization | freight activity | 100% | 0 | 7.3% | 12.8% | / | [1] |
Optimized vehicle design | energy intensity | / | 2% | Baseline + 0.5% | Baseline + 1% | Cost-efficiency improvement curves [42] | [25] |
Renewable Energy | energy mix | Hydrogen 10% LNG 10% | / | / | / | Hydrogen trucks: USD 240,000 LNG trucks USD 50,000 | / |
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Guo, T.; Chen, J.; Liu, P. Impact of Emerging Transport Technologies on Freight Economic and Environmental Performance: A System Dynamics View. Int. J. Environ. Res. Public Health 2022, 19, 15077. https://doi.org/10.3390/ijerph192215077
Guo T, Chen J, Liu P. Impact of Emerging Transport Technologies on Freight Economic and Environmental Performance: A System Dynamics View. International Journal of Environmental Research and Public Health. 2022; 19(22):15077. https://doi.org/10.3390/ijerph192215077
Chicago/Turabian StyleGuo, Taolei, Junjie Chen, and Pei Liu. 2022. "Impact of Emerging Transport Technologies on Freight Economic and Environmental Performance: A System Dynamics View" International Journal of Environmental Research and Public Health 19, no. 22: 15077. https://doi.org/10.3390/ijerph192215077
APA StyleGuo, T., Chen, J., & Liu, P. (2022). Impact of Emerging Transport Technologies on Freight Economic and Environmental Performance: A System Dynamics View. International Journal of Environmental Research and Public Health, 19(22), 15077. https://doi.org/10.3390/ijerph192215077