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Time Difference of Arrival to Blast Localization of Potential Chemical/Biological Event on the Move

机译:抵达时间差,以便在移动中爆炸潜在化学/生物事件的定位

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Integrating a sensor suite with ability to discriminate potential Chemical/Biological (CB) events from high-explosive (HE) events employing a standalone acoustic sensor with a Time Difference of Arrival (TDOA) algorithm we developed a cueing mechanism for more power intensive and range limited sensing techniques. Enabling the event detection algorithm to locate to a blast event using TDOA we then provide further information of the event as either Launch/Impact and if CB/HE. The added information is provided to a range limited chemical sensing system that exploits spectroscopy to determine the contents of the chemical event. The main innovation within this sensor suite is the system will provide this information on the move while the chemical sensor will have adequate time to determine the contents of the event from a safe stand-off distance. The CB/HE discrimination algorithm exploits acoustic sensors to provide early detection and identification of CB attacks. Distinct characteristics arise within the different airburst signatures because HE warheads emphasize concussive and shrapnel effects, while CB warheads are designed to disperse their contents over large areas, therefore employing a slower burning, less intense explosive to mix and spread their contents. Differences characterized by variations in the corresponding peak pressure and rise time of the blast, differences in the ratio of positive pressure amplitude to the negative amplitude, and variations in the overall duration of the resulting waveform. The discrete wavelet transform (DWT) is used to extract the predominant components of these characteristics from air burst signatures at ranges exceeding 3km. Highly reliable discrimination is achieved with a feed-forward neural network classifier trained on a feature space derived from the distribution of wavelet coefficients and higher frequency details found within different levels of the multiresolution decomposition. The development of an adaptive noise floor to provide early event detection assists in minimizing the false alarm rate and increasing the confidence whether the event is blast event or back ground noise. The integration of these algorithms with the TDOA algorithm provides a complex suite of algorithms that can give early warning detection and highly reliable look direction from a great stand-off distance for a moving vehicle to determine if a candidate blast event is CB and if CB what is the composition of the resulting cloud.
机译:将传感器套件集成,能够从高炸药(HE)的潜在化学/生物学(CB)事件中采用独立声学传感器的潜在化学/生物学(CB)事件,其中具有到达时差(TDOA)算法的时间差,我们开发了一种更大的电力密集型和范围的提示机制有限的传感技术。通过TDO将事件检测算法能够定位到BLAST事件,然后我们提供事件的进一步信息,作为发射/冲击,如果CB / HE。添加的信息被提供给范围有限的化学传感系统,用于利用光谱学以确定化学事件的内容。该传感器套件中的主要创新是系统将提供此动作的信息,而化学传感器将具有足够的时间来确定事件的内容,从安全的脱扣距离确定事件的内容。 CB / HE鉴别算法利用声学传感器来提供早期检测和识别CB攻击。不同的Airburst签名内出现了不同的特点,因为他的弹头强调了震荡和弹片效应,而CB弹头旨在将其内容物分散在大面积上,因此采用较慢的燃烧,更强烈的爆炸物混合和涂抹它们的内容。特征在于爆炸的相应峰值压力和上升时间的变化特征的差异,正压幅度与负幅度的比率的差异,以及所得波形的总持续时间的变化。离散小波变换(DWT)用于从超过3km的范围内的空气突发签名提取这些特征的主要组成部分。通过训练从来自多光分解的不同级别的小波系数和更高频率细节的特征空间培训的前馈神经网络分类器来实现高度可靠的歧视。在最小化误报率并增加事件是爆炸事件或背部地面噪声的频率,以提供早期事件检测的自适应噪声底部的开发辅助。这些算法与TDOA算法的集成提供了一种复杂的算法,可以从移动车辆的大脱扣距离提供预警检测和高度可靠的视图,以确定候选爆炸事件是否是CB,如果CB是什么是由此产生的云的组成。

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