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-update project acknowledgement
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paper/paper.md

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@@ -58,7 +58,7 @@ A unique feature of the `ASSUME` toolbox is its integration of **Deep Reinforcem
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Various open-source agent-based models have been developed for studying energy markets, such as PowerACE [@bublitzAgentbasedSimulationGerman2014] and AMIRIS [@schimeczekAMIRISAgentbasedMarket2023].
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Yet, the possible integration of reinforcement learning methods into the behavioral strategies of market agents is currently unique to `ASSUME` and is build upon prior research on multi-agent reinforcement learning [@harderFitPurposeModeling2023].
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Simulations which solely rely on rule-based bidding strategy representation, limit the ability to represent future markets or alternative markets designs, as in reality bidding agents would adapt to the new market design.
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Most notably, `ASSUME` enables the highest number of simultanelously learning market agents in literature [@miskiwExplainableDeepReinforcement2024].
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Most notably, `ASSUME` enables the highest number of simultanelously learning market agents in literature [@miskiwExplainableDeepReinforcement2024].
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This feature allows for the exploration of new market designs and emergent dynamics in energy markets using a common open-source simulation framework.
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Further unique features of `ASSUME` are the extensive market abstraction which allows to define complex multi-market scenarios as shown in [@maurerMarketAbstractionEnergy2023].
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Even redispatch markets and nodal markets are supported, making it possible to represent network constraints and market coupling.
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# Acknowledgements
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Kim K. Miskiw, Nick Harder and Manish Khanra thank the German Federal Ministry for Economic Affairs and Climate Action for the funding of the `ASSUME` project under grant number BMWK 03EI1052A.
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This work was conducted as part of the project "ASSUME: Agent-Based Electricity Markets Simulation Toolbox," funded by the German Federal Ministry for Economic Affairs and Energy under grant number BMWK 03EI1052A.
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We express our gratitude to all contributors to ASSUME.
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# References
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# References

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