不确定船舶抵达时间下电气化港口电力优化管理的鲁棒物流-电力框架

IF 6.9 Q1 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Ilias Sarantakos , Saman Nikkhah , Meltem Peker , Annabel Bowkett , Timur Sayfutdinov , Arman Alahyari , Charalampos Patsios , John Mangan , Adib Allahham , Eleni Bougioukou , Alan Murphy , Kayvan Pazouki
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引用次数: 0

摘要

由于港口和船舶对碳基能源的依赖,海运造成了大量的环境污染。随着港口电气化以减少碳排放的趋势日益明显,港口的运营将越来越依赖于电力网络。由于港口网络电力流的复杂性、船舶抵达时间的不确定性以及可再生能源发电量的波动性,这种互联带来了多重挑战。这些不确定性可能导致电力网络超载和货物装卸活动延迟,从而增加船舶装卸时间和环境排放。考虑到船舶抵达时间、电网需求和可再生能源发电的多重不确定性,本文提出了一个用于电气化港口优化运营和电力管理的物流-电力联合框架。本文针对现实生活中的港口开发了一种优化电力流方法,并考虑了货物装卸设备、冷藏箱和可再生能源等多种港口物流资产。所提出的模型可确保在稳健优化所定义的所有不确定性现实情况下港口运营的可行性,同时最大限度地降低运营成本。仿真结果表明,如果忽略港口运营中的不确定性,那么对于一个电气化的英国主要港口来说,违反网络约束的概率可高达 70%,这给港口活动带来了不可接受的中断风险。此外,如果船舶使用辅助发动机而不是岸电,这种不确定性会导致排放量增加 150%。数值研究表明,面对不确定性,只要将鲁棒性提高 0.3%,就能应对这些挑战,而在最坏情况下,成本增加不超过 4.7%。这表明所提出的方法能够有效地以最低成本提高对不确定性的稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A robust Logistics-Electric framework for optimal power management of electrified ports under uncertain vessel arrival time

Maritime transport is responsible for producing a considerable amount of environmental pollution due to the reliance of ports and ships on the carbon-based energy sources. With the increasing trend towards port electrification to reduce carbon emissions, the operation of ports will be increasingly relying on the electricity network. This interconnection creates multiple challenges due to the complexity of power flow in the port network, uncertainty of vessel arrival time and fluctuation of power generation of renewable energy sources. These uncertainties can lead to an overload in electricity networks and delays in cargo-handling activities, resulting in increased vessel handling times and environmental emissions. This paper presents a joint logistics-electric framework for optimal operation and power management of electrified ports, considering multiple uncertainties in the arrival time of vessels, network demand, and renewable power generation. An optimal power flow method is developed for a real-life port, with consideration for multiple port logistic assets such as cargo handling equipment, reefers, and renewable energy sources. The proposed model ensures feasible port operation for all uncertainty realisations defined by robust optimisation, while minimising operational costs. Simulation results demonstrate that the probability of a network constraint violation can be as high as 70% for an electrified major UK port if the uncertainty in the port operation is neglected, presenting an unacceptable risk of disruption to port activities. Furthermore, such uncertainty can cause 150% increase in emissions if the ships use their auxiliary engine instead of using shore power. The numerical study shows that such challenges can be handled by a 0.3% increase in the robustness in face of uncertainty, while the cost increase in the worst case does not exceed 4.7%. This shows the effectiveness of the proposed method enhancing robustness against uncertainty at the minimum cost.

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