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Microwave neural networks and fuzzy classifiers for ES systems

机译:用于ES系统的微波神经网络和模糊分类器

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摘要

This thesis introduces techniques to build novel ES systems. The main contributions are the microwave phase neuron and the fuzzy classifiers. Unlike most of the work available in literature, which present future ES by the sight of traditional methods, this thesis discusses two novel proposals. The first chapters formalise some theoretical points, while the last chapters describe and analyse the proposed novel designs. Chapter 1 introduces Electronic Warfare (EW). It also analyses the electromagnetic environment faced by a naval platform and the traditional ES systems. Chapter 2 makes use of fuzzy theory to provide a formal theoretical study of signal classification in EW. Chapter 3 analyses the heuristics applying fuzzy logics, fuzzy numbers and fuzzy aggregation connectives. Chapter 4 presents the microwave phase neurons. It describes the basic mathematical formulation and the evolution of this concept from its early stages. It also presents the results obtained from simulation of several phase-neuron topologies. The phase neuron is a completely new artificial neural network paradigm. Chapter 5 models fuzzy inference engines. It indicates how these systems work in several different situations and analyse the results of several simulations. It investigates data-fusion techniques and the demands of automatic target recognitors (ATR). This chapter introduces the fuzzy classifiers and the fuzzy identification filters (FIF). Each FIF combines the outputs of the several classifiers to calculate the degree of belief of each possible outcome. This new architecture is another main contribution of this work. Chapter 6 presents the work being presently conducted with microwave classifiers. The results from the simulation of some possible system architectures are commented. Chapter 7 presents the final conclusions and provides suggestions for further research.
机译:本文介绍了构建新型ES系统的技术。主要贡献是微波相位神经元和模糊分类器。与文献中的大多数工作(通过传统方法呈现未来的ES)不同,本文讨论了两个新颖的建议。前几章形式化了一些理论观点,而后几章则对所提出的新颖设计进行了描述和分析。第1章介绍电子战(EW)。它还分析了海军平台和传统ES系统所面临的电磁环境。第2章利用模糊理论对电子战中的信号分类进行了形式上的理论研究。第三章分析了应用模糊逻辑,模糊数和模糊聚合连接词的启发式方法。第4章介绍了微波相神经元。它描述了基本的数学公式以及该概念从早期开始的演变。它还提供了从几种相中子拓扑的仿真获得的结果。相神经元是一种全新的人工神经网络范式。第5章对模糊推理引擎进行建模。它说明了这些系统在几种不同情况下的工作方式,并分析了几种模拟的结果。它研究了数据融合技术和自动目标识别器(ATR)的需求。本章介绍模糊分类器和模糊识别过滤器(FIF)。每个FIF都会组合多个分类器的输出,以计算每个可能结果的置信度。这种新的体系结构是这项工作的另一个主要贡献。第6章介绍了目前使用微波分级机进行的工作。评论了一些可能的系统架构的仿真结果。第7章介绍了最终结论,并为进一步研究提供了建议。

著录项

  • 作者单位

    University of London, University College London (United Kingdom).;

  • 授予单位 University of London, University College London (United Kingdom).;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 1996
  • 页码 241 p.
  • 总页数 241
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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