Integrated Carbon Emission Estimation Method and Energy Conservation Analysis: The Port of Los Angles Case Study
Abstract
:1. Introduction
2. Literature Review
2.1. Port Carbon Emission Assessment
2.2. Port Carbon Emission Reduction
3. Methodology
3.1. LSTM and STIRPAT
3.2. ARIMA and ARIMAX Model
3.3. PCA–MLR
3.4. Proposed Method
4. Empirical Analysis
4.1. Introduction of Port of Los Angeles
4.2. Economic Indicator Selection
4.3. Port Throughput Forecast
4.4. Carbon Emission Factor Selection
- : CO2 emission intensity (btu/kg)
- : CO2 emission (kg)
- : Consumed energy (btu)
Descriptive Statistics | Range | Minimum | Maximum | Mean | Std. Deviation | Variance | |
---|---|---|---|---|---|---|---|
Statistic | Statistic | Statistic | Statistic | Std. Error | Statistic | Statistic | |
EC | 3.370 | 0.140 | 3.510 | 0.891 | 0.053 | 0.726 | 0.527 |
Emission Intensity | 3.552 | 66.838 | 70.390 | 68.238 | 0.077 | 1.058 | 1.119 |
TEU | 547,922.450 | 413,910.300 | 961,832.750 | 690,449.291 | 6868.992 | 93,932.049 | 8.82 × 109 |
4.5. Carbon Emission Forecast
4.6. Accuracy Assessment
5. Result Analysis
6. Energy Conservation Strategies in Port
6.1. Peak Shaving, Load Shifting, and Power Sharing
- (1)
- The port authority shall distinguish which non-critical energy loads can be optimized or even shut down from existing plans by using the peak-shaving method. Geerlings [46] pointed out that quay cranes (QCs) (i.e., ship-to-shore cranes) are one of the largest consumers of electricity in the port. Thus, limiting the number of simultaneous QC lifts can significantly reduce peak power demand and have less impact on working hours in the Port of Los Angeles. For example, the peak power consumption drops by 11.1% if one of six QCs is shut down. At the same time, the handling time will increase by 0.03%, and the waiting time per container will increase by 5.5 s. Using less handling equipment and running smoothly during peak hours would help reduce the peak energy consumption. For six QCs as one group, peak demand can be reduced by 19.8% when the maximum allowable electricity demand is set to 12 mw. At the same time, the average waiting time per container only increases by 3.4 s. There are 83 ship-to-shore container cranes in the Port of Los Angeles according to the statistical results from April 2022. Thus, the dynamic optimization of the maximum QCs in each work unit and adjusting the electricity demand are significant for port authorities in every loading/unloading mission of QC allocation.
- (2)
- It is possible to reschedule the berth activities by load shifting. As the second crest in October 2018 shows in Figure 8, gradually adjusting the activity schedule towards the troughs on both sides can reduce the imbalance between peak and low values. Van [44] showed that the load-shifting method reduced the peak freezer energy consumption by 62.8% on average by using a port refrigerated warehouse as an example of intermittent allocation of power between batches of cold storage. Therefore, the peaking method can also help reduce congestion in different areas of the port. For instance, energy efficiency can be improved during off-peak hours by encouraging reservation systems and truck arrivals in gate operations by using load shifting. Some evidence proved that the load-shifting method reduced the average peak load by 23.1% according to the build dual objectives functions with peak energy and minimum energy demand [47].
- (3)
- Energy peaks can be regulated by adding energy storage devices integrated with the peak-shaving and load-shifting methods. In addition, if there still exists an energy gap, the excess power in the trough can be stored, and the energy can be shared in the next peak by super-capacitors. For example, load shifting is used first to reduce peak energy demand by 42.8%. Then, the stored energy will be used during peak hours with a further 55% reduction in peak energy demand [43].
6.2. Other Effevtive Strategies
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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No | Study | Emissions | Data Resources | Field | Method | |
---|---|---|---|---|---|---|
Port | Shipping Routes | |||||
1 | Rodrigues et al., 2014 | CO2 | 6 ports in UK | √ | Origin-destination method | |
2 | Yan et al., 2020 | CO2 | Ship noon report | √ | Random forest regressor | |
3 | Yu et al., 2021 | Relative collision risk | 10-year collision data in North China, Korean Penisula, and Japan | √ | Beyesian spatio-temporal model | |
4 | Poulsen et al., 2018 | CO2, Ox, NOx, and PM | Port authorities in Europe and North America | √ | Interviews TIC and EV analysis | |
5 | Berechman and Tseng, 2012 | NOx, CO2, PM10, SO2, and VOC | Port of Kaohsiung in 2010 | √ | Bottom-up method | |
6 | Song et al., 2014 | CO2, CH4, N2O, PM10, PM2.5, NOx, SOx, CO, and HC | Collected from 6518 ship calls at Yangshan port in 2009 | √ | Origin-destination method | |
7 | Theodoropoulos et al., 2021 | CO2 | Collected from a 165,000-DWT tanker | √ | FFNN model RNN model | |
8 | Coraddu et al., 2017 | CO2 | Collected from a Handymax chemical/product tanker | √ | White box model Black box model Grey box model | |
9 | Linh et al., 2021 | CO2 | Vietnamese branch of a worldwide leading shipping company from February 2017 to January 2019 Vessel tracking the Copernicus Marine Environment monitoring service | √ | ANN model | |
10 | Panapakidis et al., 2020 | CO2 | Ro/Pax vessel shipping from Patras–Igoumenitsa–Bari itinerary | √ | FFNN model ENN model | |
11 | Rodrigues et al., 2014 | CO2 | 6 ports in UK | √ | Origin-destination method | |
12 | Yan et al., 2020 | CO2 | Ship noon report | √ | Random forest regressor |
Macroeconomic Indicator | Short Meaning |
---|---|
GDP | Gross domestic product |
Import (billions $) | Goods/services carried into one state from another state |
Export (billions $) | Goods manufactured in one state transported to another state |
Region | Country |
---|---|
NA | U.S., Canada, Mexico |
ASIA | China, Japan, Korea |
KMO and Bartlett’s Test | ||
---|---|---|
Kaiser-Meyer-Olkin Measure of Sampling Adequacy. | 0.941 | |
Bartlett’s Test of Sphericity | Approx. Chi-square | 17,594.292 |
df | 231.000 | |
Sig. | 0.000 |
Model | Unstandardized Coefficients | Standardized Coefficients | t | Sig. | |
---|---|---|---|---|---|
B | Std. Error | Beta | |||
(Constant) | 647618.5 | 5211.9 | 124.258 | 0.000 | |
REGR factor score | 90915.38 | 5222.397 | 0.742 | 17.409 | 0.000 |
Model Name | RMSE | MAPE | MDA | RMSE Diff | MAPE Diff |
---|---|---|---|---|---|
STIRPAT–ARIMAX–LSTM | 0.0145 | 7.9306 | 0.685 | / | / |
STIRPAT–ARIMAX | 0.0161 | 7.9421 | 0.629 | 11.08% | 0.15% |
ARIMA | 0.0163 | 8.9149 | 0.571 | 12.58% | 12.41% |
MLR | 0.1084 | 26.3284 | 0.429 | 648.40% | 231.99% |
BP | 0.1901 | 29.6243 | 0.486 | 1213.20% | 273.55% |
Gray | 0.1059 | 17.7568 | 0.429 | 631.15% | 123.90% |
LSTM | 0.0597 | 10.5881 | 0.629 | 271.45% | 33.32% |
Energy Source | Exhaust Gas Emission | |||||
---|---|---|---|---|---|---|
CO (%) | HC (%) | Fine Particulate Matter (%) | PbO (%) | Toxic Substance (%) | ||
Gasoline (no exhaust gas treatment) | 100 | 100 | 100 | 100 | 100 | 100 |
Gasoline (exhaust gas treatment) | 25–30 | 10 | 25 | / | / | 50 |
Diesel | 10 | 10 | 50–80 | 100 | / | 50 |
Diesel-natural gas | 8–10 | 8–10 | 50–70 | 20–40 | / | 3–10 |
LPG | 10–20 | 50–70 | 20–40 | / | / | 3–10 |
LNG | 0–1 | 1–3 | 10–20 | / | / | 3–10 |
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Yu, Y.; Sun, R.; Sun, Y.; Shu, Y. Integrated Carbon Emission Estimation Method and Energy Conservation Analysis: The Port of Los Angles Case Study. J. Mar. Sci. Eng. 2022, 10, 717. https://doi.org/10.3390/jmse10060717
Yu Y, Sun R, Sun Y, Shu Y. Integrated Carbon Emission Estimation Method and Energy Conservation Analysis: The Port of Los Angles Case Study. Journal of Marine Science and Engineering. 2022; 10(6):717. https://doi.org/10.3390/jmse10060717
Chicago/Turabian StyleYu, Yao, Ruikai Sun, Yindong Sun, and Yaqing Shu. 2022. "Integrated Carbon Emission Estimation Method and Energy Conservation Analysis: The Port of Los Angles Case Study" Journal of Marine Science and Engineering 10, no. 6: 717. https://doi.org/10.3390/jmse10060717
APA StyleYu, Y., Sun, R., Sun, Y., & Shu, Y. (2022). Integrated Carbon Emission Estimation Method and Energy Conservation Analysis: The Port of Los Angles Case Study. Journal of Marine Science and Engineering, 10(6), 717. https://doi.org/10.3390/jmse10060717