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Biological aerosol warning sensor model: An approach to model architecture and accelerated false alarm prediction

机译:生物气溶胶警告传感器模型:模型架构和加速误报预测的方法

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Models of optically-based biological aerosol sensors may help to predict baseline performance and support efficient sensor optimization. Reducing a sensor's false positive rate while maintaining sensitivity is an important performance goal that must be optimized. To that end, the capacity to theoretically test environmental backgrounds, in an accelerated fashion, would be valuable. Sensor false positives are presumed to occur as a result of complicated transient fluctuations in the environmental aerosol background. Simulating a sensor's response to such naturally occurring transients, with an appropriate model, is a mechanism for accelerating sensor characterization. These models complement and reduce the need for experimentally challenging interferant tests. Additionally, validated models include the ability to characterize sensor responses to harmful agents or rare materials while simultaneously adjusting many transient parameters. We describe a model of the Lincoln Laboratory Biological Agent Warning Sensor (BAWS), highlighting our general approach to sensor model architecture. The resulting model was utilized to simulate the sensor's response to a variety of individual background constituents as well as to time varying backgrounds with multiple constituents. The result of the simulation predicts the sensor's false positive rate to a simulated indoor and outdoor aerosol background, which can be compared to experimental data. Model applications and improvements will be discussed.
机译:基于光学的生物气溶胶传感器的模型可能有助于预测基线性能并支持高效的传感器优化。降低传感器的假阳性率,同时保持灵敏度是必须优化的重要性能目标。为此,以加速方式理论上测试环境背景的能力将是有价值的。由于环境气溶胶背景中的复杂瞬态波动,假定传感器误报。模拟传感器对这种天然存在的瞬态的响应具有适当的模型,是一种用于加速传感器表征的机制。这些模型补充并减少了实验挑战干扰试验的需求。此外,验证的模型包括能够在同时调整许多瞬态参数的同时表征对有害药剂或稀有材料的传感器响应。我们描述了林肯实验室生物剂警告传感器(BAWS)的模型,突出了传感器模型架构的一般方法。利用所得模型来模拟传感器对各种各个背景成分的响应以及与多个成分的变化背景。模拟结果将传感器的假阳性率预测到模拟室内和室外气溶胶背景,这可以与实验数据进行比较。将讨论模型应用和改进。

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