BedreFlyt: Improving Patient Flows through Hospital Wards with Digital Twins
Journal:
arXiv
Published Date:
May 7, 2025
Abstract
Digital twins are emerging as a valuable tool for short-term decision-making
as well as for long-term strategic planning across numerous domains, including
process industry, energy, space, transport, and healthcare. This paper reports
on our ongoing work on designing a digital twin to enhance resource planning,
e.g., for the in-patient ward needs in hospitals. By leveraging executable
formal models for system exploration, ontologies for knowledge representation
and an SMT solver for constraint satisfiability, our approach aims to explore
hypothetical "what-if" scenarios to improve strategic planning processes, as
well as to solve concrete, short-term decision-making tasks. Our proposed
solution uses the executable formal model to turn a stream of arriving
patients, that need to be hospitalized, into a stream of optimization problems,
e.g., capturing daily inpatient ward needs, that can be solved by SMT
techniques. The knowledge base, which formalizes domain knowledge, is used to
model the needed configuration in the digital twin, allowing the twin to
support both short-term decision-making and long-term strategic planning by
generating scenarios spanning average-case as well as worst-case resource
needs, depending on the expected treatment of patients, as well as ranging over
variations in available resources, e.g., bed distribution in different rooms.
We illustrate our digital twin architecture by considering the problem of bed
bay allocation in a hospital ward.