论文标题
通过自我组织进行空间流体自适应抽样
Space-Fluid Adaptive Sampling by Self-Organisation
论文作者
论文摘要
协调系统中的重复任务是管理(估计,预测或控制)信号,这些信号在空间上有所不同,例如分布式感应的数据或计算结果。尤其是在大规模设置中,可以通过分散和位置的计算系统解决问题:节点可以在本地感知,过程和对信号行事,并与邻居协调以实施集体策略。因此,在这项工作中,我们设计了分布的协调策略,以通过协作自适应抽样来估算空间现象。我们的设计基于将空间动态分配到竞争和增长/收缩以提供准确的聚集样本的区域的想法。因此,这样的区域定义了一种“流体”的虚拟空间,因为其结构适应了基本现象所施加的压力力。我们在基于现场的协调框架中提供了一种自适应采样算法,并证明它是自动稳定的,并且在本地最佳。最后,我们通过模拟验证了所提出的算法有效地进行了空间自适应采样,同时保持了准确性和效率之间的可调折衷。
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.