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Contaminant source identification within a building: Toward design of immune buildings

机译:建筑物内的污染源识别:针对免疫建筑物的设计

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摘要

The level of protection of a building against the intentional or accidental release of chemical agents is crucial. Both scenarios could endanger life and safety of the buildings occupants. Equipping buildings with appropriate chemical sensors can alert the building occupants about the contaminant release. The readings of these sensors can be employed to trace the location of release, and help to take the appropriate actions to minimize the casualties. However, only a limited number of them can be installed due to their initial and operating cost. Moreover, there is no information about the source strength, release time and possible source location. This paper reports the development of a methodology to identify the source location using sensors reading from limited locations. The methodology uses the artificial neural network (ANN) as a statistical analysis integrated with a multi-zone airborne contaminant transport model, CONTAM. To evaluate the applicability of this method, the contaminant dispersion within a building was modeled and the results were integrated to an ANN for the source identification. The prediction made by the trained ANN was then evaluated by predicting the source of the contaminant in 40 extra cases, which had not been seen by the network during the training session. The model was able to predict the source location in more than 90% of the cases when the building was monitored by three or more sensors. The results show that the method can be used to help building designers decide the optimum configuration of the sensors required for a space based on the accuracy level of the source detection.
机译:防止有意或无意释放化学试剂的建筑物防护等级至关重要。两种情况都可能危及建筑物居民的生命和安全。为建筑物配备适当的化学传感器可以提醒建筑物居民污染物的释放。这些传感器的读数可用于追踪释放的位置,并有助于采取适当的措施以最大程度地减少人员伤亡。但是,由于它们的初始和运营成本,只能安装数量有限的它们。而且,没有有关放射源强度,释放时间和可能放射源位置的信息。本文报告了一种使用从有限位置读取的传感器来识别源位置的方法的发展。该方法使用人工神经网络(ANN)作为统计分析,并与多区域空气污染物传输模型CONTAM集成在一起。为了评估该方法的适用性,对建筑物内污染物的扩散进行了建模,并将结果集成到ANN中以进行源识别。然后,通过预测另外40种情况下污染物的来源来评估受过训练的ANN做出的预测,这在培训期间网络并未发现。当建筑物由三个或更多传感器监控时,该模型能够在超过90%的情况下预测源位置。结果表明,该方法可用于帮助建筑设计人员根据源探测的准确度确定空间所需的传感器的最佳配置。

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