Algorithm for estimating the energy distribution of radar signals scattering on acoustic disturbances created by UAVs

IF 0.2 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
V. Kartashov, V.A. Pososhenko, K.V. Kolesnik, V. Kolesnik, R.I. Bobnev, A. Kapusta
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Abstract

The task of estimating the energy distribution over the observation interval of radar signals scattered on atmospheric inhomogeneities, arising as a result of UAV operation, is considered. The solution to this problem is necessary to improve detection algorithms, to classify the detected UAVs according to additional informational features, to improve the resolution when detecting several devices located at the same range during the group application of UAVs, to clarify the time parameters of the evolution of the movement of UAVs in time and space. A similar problem arises due to the need to process useful radar signals with a low signal-to-noise ratio in order to achieve the maximum possible range of reliable UAV detection. Because of this, it becomes impossible to estimate directly the energy of useful signals by the method of comparison with reference physical quantities due to a large measurement error. Therefore, an evaluation algorithm is proposed, based on the methods of the theory of ordinal statistics, which provide, instead of comparing numerical realizations with a certain standard, to form a variational series from them under the condition of a priori knowledge of the distribution function of these realizations. At the same time, the fact is used that for certain distributions of a random variable, among which there are normal and all limited ones, the variance of the estimate in the form of a mathematical expectation of certain ordinal statistics is significantly less than the variance of a direct measurement at a low signal-to-noise ratio. In order to save time and computing resources during real-time processing of received signals, it is proposed to use pre-calculated arrays of numerical values of mathematical expectation and dispersion of ordinal statistics for various parameters of the density distribution of a random variable.
无人机声干扰下雷达信号散射能量分布估计算法
考虑了无人机操作引起的大气非均匀性散射雷达信号在观测区间内的能量分布估计问题。解决这一问题需要改进检测算法,根据附加信息特征对被检测的无人机进行分类,提高在无人机群应用过程中对位于同一距离的多个设备进行检测时的分辨率,明确无人机运动在时间和空间上演化的时间参数。由于需要用低信噪比处理有用的雷达信号,为了达到可靠的无人机探测的最大可能距离,出现一个类似的问题。因此,由于测量误差大,用与参考物理量比较的方法直接估计有用信号的能量是不可能的。因此,本文提出了一种基于有序统计理论方法的评价算法,该算法不将数值实现与某一标准进行比较,而是在先验了解这些实现的分布函数的条件下,由它们形成一个变分序列。同时,利用这样一个事实,即对于随机变量的某些分布,其中有正态分布和有限分布,在低信噪比下,某些有序统计量以数学期望形式估计的方差明显小于直接测量的方差。为了在接收信号的实时处理过程中节省时间和计算资源,提出对随机变量密度分布的各个参数,采用预先计算好的有序统计的数学期望和离散数值阵列。
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Visnyk NTUU KPI Seriia-Radiotekhnika Radioaparatobuduvannia
Visnyk NTUU KPI Seriia-Radiotekhnika Radioaparatobuduvannia ENGINEERING, ELECTRICAL & ELECTRONIC-
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