Spatially-extended hybrid methods: a review
Cameron A. Smith, Christian A. Yates

TL;DR
This review paper surveys spatially-extended hybrid methods used in multiscale modeling across disciplines, providing comparisons, practical algorithms, and real-world applications to guide future research and development.
Contribution
It consolidates and compares various hybrid methods, offers canonical examples with code, and discusses their applications and future directions in multiscale modeling.
Findings
Compiled a comprehensive list of hybrid methods.
Provided algorithms and code examples for practical implementation.
Demonstrated utility through applications in biological and physical problems.
Abstract
Many biological and physical systems exhibit behaviour at multiple spatial, temporal or population scales. Multiscale processes provide challenges when they are to be simulated using numerical techniques. While coarser methods such as partial differential equations are typically fast to simulate, they lack the individual-level detail that may be required in regions of low concentration or small spatial scale. However, to simulate at such an individual-level throughout a domain and in regions where concentrations are high can be computationally expensive. Spatially-coupled hybrid methods provide a bridge, allowing for multiple representations of the same species in one spatial domain by partitioning space into distinct modelling subdomains. Over the past twenty years, such hybrid methods have risen to prominence, leading to what is now a very active research area across multiple…
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Taxonomy
TopicsFractional Differential Equations Solutions · Differential Equations and Numerical Methods
