Literature DB >> 20863049

Real-time identification of indoor pollutant source positions based on neural network locator of contaminant sources and optimized sensor networks.

Vladimir Vukovic1, Paulo Cesar Tabares-Velasco, Jelena Srebric.   

Abstract

A growing interest in security and occupant exposure to contaminants revealed a need for fast and reliable identification of contaminant sources during incidental situations. To determine potential contaminant source positions in outdoor environments, current state-of-the-art modeling methods use computational fluid dynamic simulations on parallel processors. In indoor environments, current tools match accidental contaminant distributions with cases from precomputed databases of possible concentration distributions. These methods require intensive computations in pre- and postprocessing. On the other hand, neural networks emerged as a tool for rapid concentration forecasting of outdoor environmental contaminants such as nitrogen oxides or sulfur dioxide. All of these modeling methods depend on the type of sensors used for real-time measurements of contaminant concentrations. A review of the existing sensor technologies revealed that no perfect sensor exists, but intensity of work in this area provides promising results in the near future. The main goal of the presented research study was to extend neural network modeling from the outdoor to the indoor identification of source positions, making this technology applicable to building indoor environments. The developed neural network Locator of Contaminant Sources was also used to optimize number and allocation of contaminant concentration sensors for real-time prediction of indoor contaminant source positions. Such prediction should take place within seconds after receiving real-time contaminant concentration sensor data. For the purpose of neural network training, a multizone program provided distributions of contaminant concentrations for known source positions throughout a test building. Trained networks had an output indicating contaminant source positions based on measured concentrations in different building zones. A validation case based on a real building layout and experimental data demonstrated the ability of this method to identify contaminant source positions. Future research intentions are focused on integration with real sensor networks and model improvements for much more complicated contamination scenarios.

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Year:  2010        PMID: 20863049     DOI: 10.3155/1047-3289.60.9.1034

Source DB:  PubMed          Journal:  J Air Waste Manag Assoc        ISSN: 1096-2247            Impact factor:   2.235


  2 in total

1.  Rapid identification of multiple constantly-released contaminant sources in indoor environments with unknown release time.

Authors:  Hao Cai; Xianting Li; Zhilong Chen; Mingyang Wang
Journal:  Build Environ       Date:  2014-06-17       Impact factor: 6.456

2.  An improved particle swarm optimization method for locating time-varying indoor particle sources.

Authors:  Qilin Feng; Hao Cai; Fei Li; Xiaoran Liu; Shichao Liu; Jiheng Xu
Journal:  Build Environ       Date:  2018-10-05       Impact factor: 6.456

  2 in total

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