Digitalisation for operational efficiency and GHG emission reduction at container ports

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Title
Digitalisation for operational efficiency and GHG emission reduction at container ports

CoPED ID
6d02637a-59b6-4810-9293-f4f87656cf05

Status
Closed


Value
£213,025

Start Date
Feb. 1, 2022

End Date
Jan. 31, 2023

Description

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Ports are regarded as concentrated areas producing air pollutants and greenhouse gas (GHG) emissions. Container ports play an important role in the global economy as they handle over 50% of seaborne world trade by value. Due to surging trade volume, disruptive events, and lack of coordination across relevant stakeholders, container ports often experience inefficiency and severe congestion. Port congestion creates the requirements for extra and unproductive moves when containers are stacking or retrieving, resulting in longer turnaround times for vessels and trucks.

According to the Environmental Report 2019-20 produced by the Port of Felixstowe, about 60% GHG emissions (equivalent to 34.3K tons of CO2) from port operations originate from fossil fuelled yard cranes and internal trucks. The deployed fleet of trucks travels more than 14 million km a year, consuming about 4.2 million litres of diesel fuel per year and producing 26.5K tons of CO2 per year. The fleet of cranes consumes around 6.0 million litres of diesel fuel per year and generates nearly 7.8K tons of CO2 yearly. The port acknowledges that nearly 30% crane movement is unproductive, and improvements in yard management, reducing the empty travel time, can dramatically reduce both fuel consumption and GHG emissions (potentially by 15%, i.e. 1.5 million litres of fuel and 6.1K tons of CO2). This project applies digital technologies such as machine learning and optimisation techniques to develop a new decision support system to reduce unproductive crane movement and truck travel distance. As a result, the product productivity and efficiency will be improved, more containers can be handled within time windows, and vessel and truck turnaround times will be reduced. GHG emissions from trucks, ocean-going vessels and cargo handling equipment will be reduced. The project will directly benefit container ports, by improving ocean freight efficiency. The decision support system will work as a part of a physical and digital ecosystem which will facilitate the development of maritime autonomy and support the UK's transition towards 'zero-emission' shipping. The project will also indirectly benefit other stakeholders including shipping lines, rail operators and shippers, by automating process, reducing their costs, boosting trading volume and economic growth.

Our innovation focuses on: (i) the pioneering attempt to apply digital technologies to predict import containers' out-terminals at the point when they are discharged from vessels to improve stacking operations; (ii) using the ground-breaking approach of combining predictive models with prescriptive models to support yard container allocation decisions; (iii) advance the knowledge on the relative importance of determinant factors (container attributes) to predict containers' out-terminals and quantify the contributions made by each factor to the prediction. The quantifiable information will inform maritime policy making, for example, introducing appropriate regulations or incentive programs, to encourage information sharing between ports and the stakeholders, so as to improve operational efficiency and reduce GHG emissions at ports.

Dongping Song PI_PER
Ying Xie COI_PER

Subjects by relevance
  1. Emissions
  2. Harbours
  3. Maritime navigation
  4. Greenhouse gases
  5. Container transport
  6. Climate changes
  7. Machine learning
  8. Shipping
  9. Carbon dioxide
  10. Optimisation
  11. Marine traffic
  12. Logistics

Extracted key phrases
  1. Container port
  2. GHG emission reduction
  3. Yard container allocation decision
  4. Port congestion
  5. Port operation
  6. Operational efficiency
  7. Container attribute
  8. Ghg emission
  9. Digitalisation
  10. Truck turnaround time
  11. Ocean freight efficiency
  12. Truck travel distance
  13. Unproductive crane movement
  14. New decision support system
  15. Long turnaround time

Related Pages

UKRI project entry

UK Project Locations