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Data-driven state of health modelling—A review of state of the art and reflections on applications for maritime battery systems

Erik Vanem, Clara Bertinelli Salucci, Azzeddine Bakdi, Øystein Åsheim Alnes

2021Journal of Energy Storage90 citationsDOIOpen Access PDF

Abstract

Battery systems are becoming an increasingly attractive alternative for powering ocean going ships, and the number of fully electric or hybrid ships relying on battery power for propulsion and manoeuvring is growing. In order to ensure the safety of such electric ships, it is of paramount importance to monitor the available energy that can be stored in the batteries, and classification societies typically require that the state of health of the batteries can be verified by independent tests — annual capacity tests. However, this paper discusses data-driven state of health modelling for maritime battery systems based on operational sensor data collected from the batteries as an alternative approach. Thus, this paper presents a comprehensive review of different data-driven approaches to state of health modelling, and aims at giving an overview of current state of the art. More than 300 papers have been reviewed, most of which are referred to in this paper. Moreover, some reflections and discussions on what types of approaches can be suitable for modelling and independent verification of state of health for maritime battery systems are presented.

Topics & Concepts

Battery (electricity)State of healthState (computer science)Systems engineeringPropulsionElectric power systemEngineeringComputer scienceState of artOperations researchPower (physics)Risk analysis (engineering)Reliability engineeringData scienceAerospace engineeringMedicinePhysicsAlgorithmQuantum mechanicsAdvanced Battery Technologies ResearchMaritime Transport Emissions and EfficiencyFuel Cells and Related Materials