Space-Fluid Adaptive Sampling by Self-Organisation
A recurrent task in coordinated systems is managing (estimating, predicting, or controlling) signals that vary in space, such as distributed sensed data or computation outcomes. Especially in large-scale settings, the problem can be addressed through decentralised and situated computing systems: nod...
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Veröffentlicht in: | Logical methods in computer science 2023-12, Vol.19, Issue 4 |
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Sprache: | eng |
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Zusammenfassung: | A recurrent task in coordinated systems is managing (estimating, predicting,
or controlling) signals that vary in space, such as distributed sensed data or
computation outcomes. Especially in large-scale settings, the problem can be
addressed through decentralised and situated computing systems: nodes can
locally sense, process, and act upon signals, and coordinate with neighbours to
implement collective strategies. Accordingly, in this work we devise
distributed coordination strategies for the estimation of a spatial phenomenon
through collaborative adaptive sampling. Our design is based on the idea of
dynamically partitioning space into regions that compete and grow/shrink to
provide accurate aggregate sampling. Such regions hence define a sort of
virtualised space that is "fluid", since its structure adapts in response to
pressure forces exerted by the underlying phenomenon. We provide an adaptive
sampling algorithm in the field-based coordination framework, and prove it is
self-stabilising and locally optimal. Finally, we verify by simulation that the
proposed algorithm effectively carries out a spatially adaptive sampling while
maintaining a tuneable trade-off between accuracy and efficiency. |
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ISSN: | 1860-5974 1860-5974 |
DOI: | 10.46298/lmcs-19(4:29)2023 |