Dynamic Data-Driven Digital Twins for Blockchain Systems
- URL: http://arxiv.org/abs/2312.04226v1
- Date: Thu, 7 Dec 2023 11:18:57 GMT
- Title: Dynamic Data-Driven Digital Twins for Blockchain Systems
- Authors: Georgios Diamantopoulos, Nikos Tziritas, Rami Bahsoon and Georgios
Theodoropoulos
- Abstract summary: We show how DDDAS feedback loop can support the optimisation component of the trilemma benefiting from Reinforcement Learning agents and a simulation component to augment the quality of the learned model.
This paper examines how leveraging DDDAS feedback loop can support the optimisation component of the trilemma benefiting from Reinforcement Learning agents and a simulation component to augment the quality of the learned model.
- Score: 2.7030389009543887
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In recent years, we have seen an increase in the adoption of blockchain-based
systems in non-financial applications, looking to benefit from what the
technology has to offer. Although many fields have managed to include
blockchain in their core functionalities, the adoption of blockchain, in
general, is constrained by the so-called trilemma trade-off between
decentralization, scalability, and security. In our previous work, we have
shown that using a digital twin for dynamically managing blockchain systems
during runtime can be effective in managing the trilemma trade-off. Our Digital
Twin leverages DDDAS feedback loop, which is responsible for getting the data
from the system to the digital twin, conducting optimisation, and updating the
physical system. This paper examines how leveraging DDDAS feedback loop can
support the optimisation component of the trilemma benefiting from
Reinforcement Learning agents and a simulation component to augment the quality
of the learned model while reducing the computational overhead required for
decision-making.
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