Unveiling the Sensitivity Analysis of Port Carbon Footprint via Power Alternative Scenarios: A Deep Dive into the Valencia Port Case Study
Abstract
:1. Introduction
2. Materials and Methods
2.1. Literature Review
2.1.1. Theoretical Background in Sensitivity Analysis
2.1.2. Relevant Studies in Empirical Research: Renewable Energies in the Maritime Industry
- (i)
- Integration of hydrogen and renewable energy in marine applications: Gabbar et al. (2021) and Wang et al. (2023) delve into integrating nuclear–renewable hybrid energy systems and hydrogen-fueled ships, respectively. Gabbar et al. (2021) utilizes sensitivity analysis to evaluate various energy scenarios, aiming to reduce GHG emissions and optimize the energy mix for marine ships [23,24].Similarly, Wang et al. (2023) employ a life cycle assessment framework to quantify the environmental impact and economic feasibility of hydrogen-fueled ships, emphasizing sustainability and the reduction in the carbon footprint through renewable energy integration [24] Additionally, Berna-Escriche et al. (2023) focus on the potential of hydrogen as a renewable energy vector for marine applications. Sensitivity analysis is employed to assess the viability and impact of hydrogen integration on energy efficiency and carbon footprints [25].Thaler et al. (2023) optimize carbon capture and renewable energy systems in marine vessels, demonstrating the benefits of advanced renewable technologies like hydrogen through extensive sensitivity analysis [26]. Finally, Song et al. (2023) examines the maritime supply chains for emerging fuels such as hydrogen, ammonia, and methanol, comparing them to liquefied natural gas (LNG) [27].They conduct a sensitivity analysis on ambient temperature, storage time, and pipeline length. Their results show that methanol is the most energy-efficient when produced from renewable sources, followed by ammonia. Hydrogen, despite its potential, requires efficient boil-off gas handling systems to be competitive.
- (ii)
- Enhancing marine microgrids and offshore energy hubs: In maritime microgrids, Daraz (2023) offers an optimized cascaded controller that improves frequency stability. Sensitivity analysis provides consistent performance under changing load conditions, which is critical for the dependability of renewable energy systems in maritime applications [28].Meanwhile, Zhang et al. (2022) concentrate on modeling and assessing offshore energy hubs that incorporate a variety of renewable sources. Their sensitivity analysis reveals the best configurations and performance under various environmental and operational conditions, which is critical for developing clean offshore energy [29].
- (iii)
- Green strategies for ports and seaports: Integrating renewable energies in ports and seaports is a critical area of study. Vakili et al. (2022) benchmark fossil fuel reduction strategies in maritime logistics by utilizing sensitivity analysis to compare the effectiveness of various renewable energy technologies in reducing GHG emissions [30].Moreover, Gabbar et al. (2021) introduce nuclear–renewable hybrid energy systems (N-R HESs) as an effective solution for reducing GHG emissions in ocean-going ships. The study confirms the viability of N-R HESs as a cost-effective, reliable alternative for maritime energy, combining renewable energy with small-scale nuclear reactors [31]. Finally, Błażejewski T et al. (2021) demonstrate how a milk reusable packaging system using stainless-steel churns and glass bottles can significantly reduce CO2 emissions and resource depletion compared to single-use bottles. Sensitivity analysis underscores the robustness of these findings, revealing that recycling rates, water consumption for cleaning, reuse rates, and electricity sources critically influence environmental outcomes [32].
- (iv)
- Technological innovations and environmental sustainability: Chen et al. (2023) explore renewable energy solutions for marine applications using sensitivity analysis to evaluate the feasibility and benefits of integrating solar, wind, and hydrogen energy. Their research aims to enhance sustainability and reduce the carbon footprint of marine operations [33].Zhai et al. (2021) present a lifecycle assessment (LCA) of a wave energy converter, using sensitivity analysis to understand the uncertainties and impacts of various environmental factors on the lifecycle impact assessment results. Finally, the impact of control parameters in the DE algorithm is assessed using the Adaptive Differential Evolution (ADE) algorithm. A sensitivity analysis is carried out to assess the impact of different system parameters on this study’s findings [34].
- (v)
- Renewable methanol and onboard carbon capture: Thaler et al. (2023) investigate the use of synthetic fuels, particularly renewable methanol, in ship propulsion systems. They utilize a mixed-integer optimization framework and sensitivity analysis to evaluate the techno-economic performance of systems integrating onboard carbon-capture technologies. The results indicate significant cost advantages and emission reductions, demonstrating the potential for sustainable shipping solutions [26].
2.2. Methods
- A.
- Define the model and its inputs: Define the model and determine the critical input factors influencing its output. In this research case study, these input variables may be parameters, coefficients, or external elements that impact the model’s behavior, such as power generation or the use of renewable energies.
- B.
- Determine the range of values for each input variable: Determine the feasible range of values for each input variable. This range should represent the uncertainty or unpredictability of the input data and real-world situations, ranging from 0 to 100 percent of power generation by traditional resources, shown with generating electricity by renewables in this research study.
- C.
- Select a sensitivity analysis method: Based on the model’s properties and the research issue, choose an appropriate sensitivity analysis approach. Different methodologies have different strengths and weaknesses, and the context of the study determines the decision. This research project employs a model that can combine localized sensitivity analysis, variance-based methodology, and metamodel-based approaches, which will be discussed in the following sections.
- D.
- Perform the sensitivity analysis: Apply the selected model and its input variables. This might include running the model numerous times with varied input values or utilizing a computational tool to create random input situations.
- E.
- Analyze the results: Interpret the sensitivity study findings to identify the most crucial and feasible input variables, evaluate the model’s overall sensitivity, and analyze potential emission shares associated with uncertainty in input data.
- F.
- Draw conclusions: Based on the analysis findings, conclude the model’s robustness, suggest areas for additional exploration, and provide recommendations to improve the model’s dependability and applicability.
3. Sensitivity Analysis on the Case Study
3.1. Scenario “A”: Supplying the Whole Port’s Electrical Energy Needs with Renewables
Emission Source | EF (kg CO2eq/kWh) | Fuel Cons (kWh) | Electricity Cons (kWh) | Emissions (Kg) | |
---|---|---|---|---|---|
SCOPE 1 | 160,599.46 | ||||
SCOPE 2 | APV building lighting + power, APV roadway lighting, APV building: air conditioning system and other consumption | 0.2829 | - | 0 | 0 |
SCOPE 3 | Commercial service-oriented electricity, service-oriented electricity, and other electricity | 0.282 | 0 | - | 0 |
Other than electricity operation issues (Group A to commuters’ emissions) | 146,849,306.4 | ||||
Total Emission | 147,009,905.86 |
3.2. Scenario “B”: Supplying All Electricity Power in Scope 2 with Renewables
3.3. Scenario “C”: Supplying Half of the Entire Port’s Required Electricity from Renewables
3.4. Scenario “D”: Supplying 30% of the Entire Port’s Required Electricity from Renewables
4. Discussion
- Sensitivity: Scenario “A” is most sensitive to outside influences, followed by Scenario “C.” Scenario “D” is moderately sensitive, while Scenario “B” is least affected by changes.
- Emissions reduction share: Scenario “A” has the highest emissions reduction share. Scenario “C” has a slightly lower share, followed by Scenario “D.” Scenario “B” has the lowest emissions reduction share among the scenarios.
- -
- Scenario “A” with the amount of β = 16.5;
- -
- Scenario “B” with the amount of β = 0.793;
- -
- Scenario “C” with the amount of β = 3.747;
- -
- Scenario “D” with the amount of β = 2.052.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Emission Source | EF | Fuel Cons (kWh) | Electricity Cons (kWh) | Commuters Calculation Factor | Emissions (kg) | |
---|---|---|---|---|---|---|
SCOPE 1 | Emissions associated with diesel fuel | 2.703 kg CO2eq/L | 336,702.42 | - | - | 89,677.43 |
Emissions associated with gasoline | 2.196 kg CO2eq/L | 239,985.75 | - | - | 55,787.18 | |
Emissions associated with gas consumption (natural gas) | 0.202 kg CO2eq/kWh | 74,925 | - | - | 15,134.85 | |
SCOPE 2 | APV building lighting + power | 0.2829 kg CO2eq/kWh | - | 3,309,969.53 | - | 936,390.4 |
APV roadway lighting | - | 2,493,451.62 | - | 705,397.5 | ||
APV building: air conditioning system | - | 1,750,656.82 | - | 495,260.8 | ||
Other consumption | - | 1,320,876 | - | 373,675.8 | ||
SCOPE 3 | Commercial service-oriented electricity | 0.282 kg CO2eq/kWh | 52,895,613 | - | - | 14,916,563 |
Service-oriented electricity | 1,420,833 | - | - | 400,674.9 | ||
Other electricity | 1,814,322 | - | - | 511,638.8 | ||
Group A (Scope 3) | 0.27 kg CO2eq/kWh | 76,978,166 | - | - | 20,784,105 | |
Group B—commercial operations (Scope 3) | 121,392,432 | - | - | 32,775,957 | ||
Group B—service-oriented (Scope 3) | 5,523,956.8 | - | - | 1,491,468 | ||
Container carrier ship (maritime traffic) | 0.673 kg CO2eq/kWh | 88,305,890 | - | - | 59,429,864 | |
Cruise ships (maritime traffic) | 0.75 kg CO2eq/kWh | 3,077,724.6 | - | - | 2,308,293 | |
Ro-Ro and ferries (maritime traffic) | 0.721 kg CO2eq/kWh | 6,769,347.9 | - | - | 4,880,700 | |
Other ships (tankers, bulk carriers, general cargo carriers) (maritime traffic) | 0.686 kg CO2eq/kWh | 21,071,067 | - | - | 14,454,752 | |
Auxiliary tugs (maritime traffic) | 0.271 kg CO2eq/kWh | 36,305,933 | - | - | 9,838,908 | |
Commuters’ emissions | 2.196 kg CO2eq/L | - | - | 170,592.24 | 374,620.6 | |
Total Emissions | 164,838,868.2 |
Description | Value |
---|---|
Total GHG emissions in tons of CO2eq | 164,838.86 |
Total volume of goods traffic of the Port of Valencia in tons | 64,361,045 |
Carbon footprint (Kg of CO2eq/tons of transported goods) | 2.56 |
Carbon Footprint (t of CO2eq/tons of transported goods) | 0.00256 |
Emission Source | EF (kg CO2eq/kWh) | Fuel Cons (kWh) | Electricity Cons (kWh) | Emissions (Kg) | |
---|---|---|---|---|---|
SCOPE 1 | 160,599.46 | ||||
SCOPE 2 | APV building lighting + power, APV roadway lighting, APV building: air conditioning system and other consumption | 0.2829 | - | 0 | 0 |
SCOPE 3 | Commercial service-oriented electricity | 0.282 | 52,895,613 | - | 14,916,562.87 |
Service-oriented electricity | 1,420,833 | 400,674.906 | |||
Other electricity | 1,814,322 | 511,638.804 | |||
Other than electricity operation issues (Group A to commuters’ emissions) | 146,849,306.4 | ||||
Total Emissions | 162,838,782.44 |
Emission Source | EF (kg CO2eq/kWh) | Fuel Cons (kWh) | Electricity Cons (kWh) | Emissions (Kg) | |
---|---|---|---|---|---|
SCOPE 1 | 160,599.46 | ||||
SCOPE 2 | APV building lighting + power | 0.2829 | - | 1,654,984.65 | 468,195.15 |
APV roadway lighting | 1,246,725.81 | 352,698.73 | |||
APV building: air conditioning system | 875,328.41 | 247,630.4 | |||
Other consumption | 660,438 | 186,837.9 | |||
SCOPE 3 | Commercial service-oriented electricity | 0.282 | 26,447,806.5 | - | 7,458,281.43 |
Service-oriented electricity | 710,416.5 | 200,337.45 | |||
Other electricity | 907,161 | 255,819.40 | |||
Other than electricity operation issues (Group A to commuters’ emissions) | 146,849,306.4 | ||||
Total Emissions | 156,179,707.32 |
Emission Source | EF (kg CO2eq/kWh) | Fuel Cons (kWh) | Electricity Cons (kWh) | Emissions (Kg) | |
---|---|---|---|---|---|
SCOPE 1 | 160,599.46 | ||||
SCOPE 2 | APV building lighting + power | 0.2829 | - | 2,316,978.67 | 655,473.26 |
APV roadway lighting | 1,745,416.13 | 493,778.22 | |||
APV building: air conditioning system | 1,225,459.77 | 346,682.56 | |||
Other consumption | 924,613.2 | 261,573.07 | |||
SCOPE 3 | Commercial service-oriented electricity | 0.282 | 37,026,929 | - | 10,441,593.97 |
Service-oriented electricity | 994,583 | 280,472.4 | |||
Other electricity | 1,270,025.4 | 358,147.16 | |||
Other than electricity operation issues (Group A to commuters’ emissions) | 146,849,306.4 | ||||
Total Emissions | 159,847,626.5 |
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Issa-Zadeh, S.B.; Esteban, M.D.; López-Gutiérrez, J.-S.; Garay-Rondero, C.L. Unveiling the Sensitivity Analysis of Port Carbon Footprint via Power Alternative Scenarios: A Deep Dive into the Valencia Port Case Study. J. Mar. Sci. Eng. 2024, 12, 1290. https://doi.org/10.3390/jmse12081290
Issa-Zadeh SB, Esteban MD, López-Gutiérrez J-S, Garay-Rondero CL. Unveiling the Sensitivity Analysis of Port Carbon Footprint via Power Alternative Scenarios: A Deep Dive into the Valencia Port Case Study. Journal of Marine Science and Engineering. 2024; 12(8):1290. https://doi.org/10.3390/jmse12081290
Chicago/Turabian StyleIssa-Zadeh, Seyed Behbood, M. Dolores Esteban, José-Santos López-Gutiérrez, and Claudia Lizette Garay-Rondero. 2024. "Unveiling the Sensitivity Analysis of Port Carbon Footprint via Power Alternative Scenarios: A Deep Dive into the Valencia Port Case Study" Journal of Marine Science and Engineering 12, no. 8: 1290. https://doi.org/10.3390/jmse12081290
APA StyleIssa-Zadeh, S. B., Esteban, M. D., López-Gutiérrez, J. -S., & Garay-Rondero, C. L. (2024). Unveiling the Sensitivity Analysis of Port Carbon Footprint via Power Alternative Scenarios: A Deep Dive into the Valencia Port Case Study. Journal of Marine Science and Engineering, 12(8), 1290. https://doi.org/10.3390/jmse12081290