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首页> 外文期刊>IEEE Transactions on Emerging Topics in Computational Intelligence >Partitioning of Intelligent Buildings for Distributed Contaminant Detection and Isolation
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Partitioning of Intelligent Buildings for Distributed Contaminant Detection and Isolation

机译:用于分布式污染物检测和隔离的智能建筑分区

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Intelligent buildings are responsible for ensuring indoor air quality for their occupants under normal operation as well as under possibly harmful contaminant events. An emerging environmental application involves the monitoring of intelligent buildings against harmful events by incorporating various sensing technologies and using sophisticated algorithms to detect and isolate such events. In this context, both centralized and distributed approaches have been proposed, with the latter having significant benefits in terms of complexity, scalability, reliability, and performance. This paper considers the automatic partitioning of the building into subsystems, which enables the distributed simulation, modeling, analysis, and management of the intelligent building while ensuring the effective detection and isolation of contaminants in the building interior. Specifically, we develop both a high-quality heuristic algorithm and an optimal mixed integer linear programming (MILP) formulation for the building partitioning problem. The MILP formulation is based on graph partitioning techniques, while the heuristic is based on matrix clustering techniques. Both approaches partition the building into subsystems while ensuring 1) maximum decoupling between the various subsystems, 2) strong connectivity between the zones of each subsystem, and 3) control of the size of the subsystems with respect to the number of allocated zones. A combination of the two approaches is also proposed for reconfiguring an initial partitioning composition in real time in order to accommodate partitioning needs that arise from dynamic system changes.
机译:智能建筑物负责确保正常操作以及可能有害的污染物事件下居住者的室内空气质量。新兴的环境应用程序通过结合各种传感技术并使用复杂的算法来检测和隔离此类事件,来监控智能建筑是否受到有害事件的影响。在这种情况下,已经提出了集中式和分布式方法,后者在复杂性,可伸缩性,可靠性和性能方面具有明显的优势。本文考虑了将建筑物自动划分为子系统的功能,该子系统可实现智能建筑物的分布式仿真,建模,分析和管理,同时确保有效检测和隔离建筑物内部的污染物。具体来说,我们针对建筑物划分问题开发了高质量的启发式算法和最佳混合整数线性规划(MILP)公式。 MILP公式基于图分区技术,而启发式算法则基于矩阵聚类技术。两种方法都将建筑物划分为多个子系统,同时确保1)各个子系统之间的最大解耦,2)每个子系统的区域之间的强大连接性以及3)相对于分配的区域数控制子系统的大小。还提出了两种方法的组合,用于实时地重新配置初始分区组合,以适应动态系统变化引起的分区需求。

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