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Intelligent signal processing for detection system optimization

机译:智能信号处理,优化检测系统

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A wavelet-neural network signal processing method has demonstrated similar to 10-fold improvement over traditional signal processing methods for the detection limit of various nitrogen and phosphorus compounds from the output of a thermionic detector attached to a gas chromatograph. A blind test was conducted to validate the lower detection limit. All 14 of the compound spikes were detected when above the estimated threshold, including all 3 within a factor of 2 above the threshold. In addition, two of six spikes were detected at levels of half the concentration of the nominal threshold. Another two of the six would have been detected correctly if we had allowed human intervention to examine the processed data. One apparent false positive in five nulls was traced to a solvent impurity, whose presence was subsequently identified by analyzing a solvent aliquot evaporated to 1% residual volume, while the other four nulls were properly classified. We view this signal processing method as broadly applicable in analytical chemistry, and we advocate that advanced signal processing methods should be applied as directly as possible to the raw detector output so that less discriminating preprocessing and postprocessing does not throw away valuable signal.
机译:对于从连接到气相色谱仪的热电子检测器的输出中检测各种氮和磷化合物的极限值而言,小波神经网络信号处理方法已证明比传统信号处理方法具有类似的十倍改进。进行盲测以验证下检测限。当超过估计阈值时,将检测到所有14个化合物峰,包括在阈值之上2倍内的所有3个。此外,在标称阈值浓度一半的水平上检测到六个峰值中的两个。如果我们允许人工干预来检查所处理的数据,则可以正确检测出六个中的另外两个。在五个无效值中一个明显的假阳性被追溯到一种溶剂杂质,随后通过分析蒸发到1%残留体积的溶剂等分试样来确定其存在,同时对其他四个无效值进行了正确分类。我们认为这种信号处理方法广泛适用于分析化学,我们主张应将高级信号处理方法尽可能直接地应用于原始检测器的输出,以使较少区分的预处理和后处理不会丢弃有价值的信号。

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