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Acoustic analysis methods for particle identification with superheated droplet detectors

机译:用过热液滴检测器识别颗粒的声学分析方法

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A superheated droplet detector (SDD) consists of a uniform dispersion of over-expanded, micrometric-sized halocarbon droplets suspended in a hydrogenated gel, each droplet of which functions as a mini-bubble chamber. Energy deposition by irradiation nucleates the phase transition of the superheated droplets, generating millimetric-sized bubbles that are recorded acoustically. A simple pulse shape validation routine was developed in which each pulse is first amplitude demodulated and the decay constant then determined through an exponential fit. Despite this, low amplitude (< 3 mV) events embedded at naked eye in the noise level are not counted for calibration purposes with neutron and alpha sources. The solution found was to filter the data with a low band-pass filter in the region that the bubbles nucleate (typically from 450 to 750 Hz). After this, a peak finding algorithm to count all the events was implemented. The performance demonstrates better than a factor 40 reduction in noise and an extra factor 10 reduction with the filtering application. The lowering of noise and discovery of low signal amplitudes by the acoustic instrumentation and acoustic analysis permits a capability of discriminating nucleation events from acoustic backgrounds and radiation sources and, having a 95% confidence level on identifying and counting events in substantial data sets like in calibrations.
机译:过热液滴检测器(SDD)由悬浮在氢化凝胶中的过膨胀,微米级卤代烃液滴的均匀分散体组成,每个液滴均充当微型气泡室。通过辐射进行的能量沉积使过热的液滴的相变成核,从而生成毫米级的气泡,这些气泡在声学上被记录下来。开发了一种简单的脉冲形状验证程序,其中首先对每个脉冲进行幅度解调,然后通过指数拟合确定衰减常数。尽管如此,使用中子源和α源进行校准时,仍未将肉眼可见的低幅度(<3 mV)事件嵌入计数。找到的解决方案是在气泡成核的区域(通常为450至750 Hz)中使用低带通滤波器对数据进行滤波。此后,实施了对所有事件进行计数的峰值查找算法。在滤波应用中,该性能证明比将噪声降低40倍,将噪声降低10倍更好。通过声学仪器和声学分析可降低噪声并发现低信号幅度,从而能够区分成核事件与声学背景和辐射源,并具有95%的置信度,可在诸如校准等大量数据集中识别和计数事件。

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