Performance evaluation of self organizing neural networks for clustering in ESM systems

Kenan Gençol, H. Tora
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引用次数: 1

Abstract

Electronic Support Measures (ESM) system is an important function of electronic warfare which provides the real time projection of radar activities. Such systems may encounter with very high density pulse sequences and it is the main task of an ESM system to deinterleave these mixed pulse trains with high accuracy and minimum computation time. These systems heavily depend on time of arrival analysis and need efficient clustering algorithms to assist deinterleaving process in modern evolving environments. On the other hand, self organizing neural networks stand very promising for this type of radar pulse clustering. In this study, performances of self organizing neural networks that meet such clustering criteria are evaluated in detail and the results are presented.
ESM系统中自组织神经网络聚类性能评价
电子保障措施(ESM)系统是电子战的一项重要功能,提供雷达活动的实时投影。这样的系统可能会遇到非常高密度的脉冲序列,而以高精度和最小的计算时间对这些混合脉冲序列进行脱交错是ESM系统的主要任务。这些系统严重依赖于到达时间分析,需要有效的聚类算法来辅助现代进化环境中的去交错处理。另一方面,自组织神经网络在这类雷达脉冲聚类中很有前景。在本研究中,对满足这些聚类标准的自组织神经网络的性能进行了详细的评估,并给出了结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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