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Efficient computational model for energy propagation in geometrically represented large environments

机译:在几何表示的大型环境中进行能量传播的高效计算模型

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摘要

Current radio propagation algorithms are very narrowly focused to specific types of input models and do not scale well to an increase in the number of receiver locations or the number of polygons in an input model. In this dissertation, we look at the problem of efficiently computing energy propagation at radio frequencies in a range of geometrically defined environments and for various transmitter and receiver characteristics. To achieve this goal, we propose a unified approach to radio propagation for different types of input models and their combinations as well, by representing the geometry as a binary space-partitioning tree and broadcasting energy from the source. The approach is both scalable to large input models as well as dynamically adapts to its scale without incurring unreasonable computational cost. The proposed approach is equally effective for acoustic modeling as well.;We present a new adaptive ray-beam tracing algorithm which initially tessellates the surface of a transmitter into four-sided polygons. Each polygon is cast as a beam which avoids arbitrarily large gaps or overlaps between adjacent beams. For fast intersection computation each beam carries information of its medial ray as well. As the computation proceeds a ray-beam is adaptively subdivided depending on various parameters. The proposed algorithm has sublinear-time complexity in terms of the number of receiver locations.;Modeling diffraction off an edge of a wedge is important to compute radio signal that reaches the shadow region of the wedge. Storing these edges explicitly in a data structure can be very expensive for large input models and especially for terrain-based models that have significant elevation variations. We present a new runtime edge-detection algorithm instead of storing the edges statically and its adaptation to binary space-partitioning tree represented environments.;We have developed a propagation prediction system called Propagate using these algorithms with good statistical correlation between predicted and measured results for a number of different input models. The proposed algorithms have been used to model several other important computations related to a cellular network of transmitters such as signal strength and path loss, delay spread, angular spread, carrier-to-interference ratio, and modeling of different antenna diversity schemes.
机译:当前的无线电传播算法非常狭窄地集中于特定类型的输入模型,并且不能很好地扩展以适应接收器位置数量或输入模型中多边形数量的增加。在本文中,我们着眼于有效地计算在一系列几何定义的环境中以及针对各种发射器和接收器特性的情况下,射频能量传播的问题。为了实现此目标,我们提出了一种统一的方法,用于将不同类型的输入模型及其组合用于无线电传播,方法是将几何体表示为二进制空间划分树,并从源中广播能量。该方法既可扩展到大型输入模型,又可动态适应其规模,而不会引起不合理的计算成本。所提出的方法对于声学建模同样有效。我们提出了一种新的自适应射线束跟踪算法,该算法最初将发射器的表面细分为四边形多边形。每个多边形被投射为一个梁,避免了相邻梁之间的任意大的间隙或重叠。为了进行快速相交计算,每个光束还携带其中间射线的信息。随着计算的进行,根据各种参数自适应地细分射线束。就接收器位置的数量而言,所提出的算法具有亚线性时间复杂性。对楔形边缘的衍射进行建模对于计算到达楔形阴影区域的无线电信号很重要。对于大型输入模型,尤其是对于具有明显海拔变化的基于地形的模型,将这些边沿显式存储在数据结构中可能非常昂贵。我们提出了一种新的运行时边缘检测算法,而不是静态地存储边缘及其对二进制空间划分树表示的环境的适应性;我们已经开发了一种称为Propagate的传播预测系统,使用这些算法在预测和测量结果之间具有良好的统计相关性。许多不同的输入模型。所提出的算法已被用于对与发射机的蜂窝网络有关的其他几个重要计算进行建模,例如信号强度和路径损耗,延迟扩展,角度扩展,载波干扰比以及不同天线分集方案的建模。

著录项

  • 作者

    Rajkumar, Ajay.;

  • 作者单位

    New York University.;

  • 授予单位 New York University.;
  • 学科 Computer science.;Electrical engineering.
  • 学位 Ph.D.
  • 年度 1999
  • 页码 173 p.
  • 总页数 173
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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