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Application of graph theory and filter based variable selection methods in the design of a distributed data-driven monitoring system

机译:图理论和基于滤波器的应用在分布式数据驱动监控系统设计中的应用

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摘要

Two methods that represent extensions of our previously developed methods for distributed data-driven monitoring are proposed. The first, Extended Forward Selection for Distributed Pattern Recognition, selects a decomposition for distributed pattern recognition such that diagnostic performance is near optimal subject to constraints. It uses a filter method to select sensors and allocates them among a minimum number of subsystems using graph theoretic algorithms. Its advantage over the Forward Selection for Distributed Pattern Recognition method is that it scales to systems with sensors in the order of 1,000. The second method, Extended Subsystem and Sensor Allocation, uses graph theoretic algorithms to find the minimum number of locations for distributed monitoring, the sensors that should transmit to each location, and the monitoring tasks at each location. Its main advantage over the original Subsystem and Sensor Allocation method is that it is applicable even when data is not available before plant operation begins.
机译:提出了两种代表我们先前开发的分布式数据驱动监控方法的扩展的方法。分布式图案识别的第一个扩展前向选择,选择分布式图案识别的分解,使得诊断性能接近最佳受限。它使用过滤器方法选择传感器并使用图形理论算法在最小数量的子系统中分配它们。它在分布式模式识别方法的前向选择方面的优势是它以1,000的顺序为具有传感器的系统。第二种方法,扩展子系统和传感器分配,使用图形理论算法找到分布式监视的最小数量,应该向每个位置传输的传感器以及每个位置的监视任务。它在原始子系统和传感器分配方法上的主要优势是它即使在工厂操作开始之前没有数据时也适用。

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