Arnaud Jaegler, Gilles Gaonach
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摘要

水听器的相位和增益色散通过影响旁瓣电平对线阵列的传统波束方向有很大的影响。事实上,在强干扰机存在的情况下,高旁瓣电平威胁到弱信号源的检测。传感器故障更为关键。因此,传感器监视算法对阵列性能至关重要。它们通常包括选择有效的传感器,其功率谱密度在某个固定或估计的标准差内接近某个估计的平均值。这些统计估计首先假设没有传感器故障,并且需要参数设置。在回顾了传感器色散和传感器故障对传统波束方向的影响后,提出了无参数传感器监测算法。它们基于信息标准,如随机复杂性最小化或赤池信息标准。在综合数据和海试信号的基础上,与传统的传感器选择方法进行了比较。
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Information theory based sensor surveillance
Hydrophones phase and gain dispersions have a deep impact on conventional beampatterns of line arrays, by affecting the sidelobe level. Indeed, high sidelobe levels threaten the detection of weak sources in the presence of strong jammers. Sensors failures are even more critical. Sensors surveillance algorithms are therefore essential to the array performances. They often consist in selecting valid sensors whose power spectral densities are close to a certain estimated mean within a certain fixed or estimated standard deviation. These statistics estimations first take the assumption of no sensors failures, and require parameters settings. After having recalled the impact of sensors dispersions and sensors failures on conventional beampatterns, parameter free sensors surveillance algorithms are proposed. They are based on information criteria, such as Stochastic Complexity Minimization or Akaike Information Criteria. These sensors selection methods are compared to the more traditional methods described above on synthetic data and sea trial signals.
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