Accelerating the Energy Transition: Determining No-Regret Transition Pathways in the Port of Rotterdam
Jaron Davelaar (),
Jan van Schijndel,
Nort Thijssen (),
Marian Bijl,
Rutger de Mare,
Edwin Perdijk and
Harry van Dijk
Additional contact information
Jaron Davelaar: QuoMare
Jan van Schijndel: QuoMare
Nort Thijssen: QuoMare
Marian Bijl: QuoMare
Rutger de Mare: QuoMare
Edwin Perdijk: Provincie Zuid-Holland
Harry van Dijk: Deltalinqs
Chapter Chapter 18 in Operations Research Proceedings 2023, 2025, pp 137-145 from Springer
Abstract:
Abstract This paper outlines a Mixed-Integer Multi-Period Linear Programming approach to identify so-called no-regret energy transition pathways. The methodology presented is essentially a trilemma-solver that supports industry, network operators, and regional governments to decide upon efficient and effective investments to meet CO2 reduction targets. The decarbonization of an industrial cluster like the Port of Rotterdam (PoR) is presented as a case study to demonstrate the approach. Different scenarios are evaluated, such as ‘accelerated decarbonization’ of the Rotterdam industrial cluster. This scenario calculates the most cost-efficient way to accelerate the transition. In addition, the methodology identifies which levers are essential for decarbonization under different scenarios. One limitation of the approach is its implicit modeling of uncertainties, currently part of two separate PhD trajectories.
Keywords: Mixed-integer multi-period linear programming; Trilemma-solver; Energy transition acceleration; Optimal transition pathways; No-regret investments; Policy making (search for similar items in EconPapers)
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:spr:lnopch:978-3-031-58405-3_18
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DOI: 10.1007/978-3-031-58405-3_18
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