Project Portfolio Optimization in a Changing Energy Landscape
Abstract
Portfolio analysis and optimization has for the past several decades been applied in the oil & gasindustry for asset allocation with the goal of maximizing corporate value creation. More recently,the traditional task of deciding between competing petroleum assets has evolved to include CCS(Carbon Capture and Storage) and renewable energy resource assets due to the change in theenergy landscape. Although oil & gas companies realize that the energy transition is inevitable,what fossil fuel assets to divest and when to divest them is still open to question as (i) the pace ofthe energy transition remains undetermined and (ii) even if oil & gas demand and prices werepredictable, the asset value consequences could vary as acting too slowly could lead to lossesfurther down the road in addition to reputational problems and acting too quickly could destroyvalue for shareholders without contributing to emission reductions.
In this work, we have implemented a multi-objective, time-dependent portfolio model to informand support an oil & gas company’s strategic decisions for successfully managing the energytransition. These decisions include several strategies such as reducing the fraction of the overallrevenues stemming from fossil fuels and increasing ownership in carbon reduction technologies.The model can easily be extended to include renewable geothermal and solar assets, investmentsin blue or green hydrogen or negative emission technologies. Given the high uncertainty in futuresupply and demand for both fossil and renewable energy, the optimal portfolio at any point in timeis highly uncertain and must be flexible enough to change over time whilst still meeting thespecified objectives.
The main contribution of the work is a decision framework and model to aid oil & gas companiesin their energy transition efforts. The portfolio optimization and management model has beendeveloped in Python. It identifies optimal portfolios from a pool of potential petroleum and carbonreduction projects. These projects include traditional oil & gas producing assets, wind farms andCCS (Carbon Capture and Storage) assets. Although upstream oil & gas portfolio optimizationmethods have been presented in the literature, none of these addresses the carbon reductionobjective and the ability to compare petroleum and non-petroleum assets in a portfolio context.Hence, the main advantage of this work is that it provides a unified and comprehensive frameworkfor inclusion of multiple energy related assets in a time-varying and multi-objective portfolio assessment model, with a focus on energy transition and meeting the net-zero carbon emissionambition of oil & gas companies.