Vector Field Analysis and Synthesis Using Three-Dimensional Phase Portraits

Paul A. Philippou , Robin N. Strickland
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引用次数: 19

Abstract

Tools from dynamical systems theory are used to decompose 3-D vector fields into simpler building blocks consisting of critical points and phase portraits. A robust critical point detector is developed for three dimensions. Samples from the vector field surrounding each critical point are then used to estimate the associated linear phase portrait, which is written as a 3 × 3 matrix. The estimated matrix may be categorized into one of seven canonical forms by its eigenvalues, which remain consistent under an arbitrary differentiable mapping of the region. The original vector field behavior is estimated using two methods. In one technique, the global behavior is reconstructed using a weighted superposition of phase portraits. For more complex field patterns, a regular partition is imposed prior to phase portrait representation, and each individual partition is decomposed into a separate phase portrait. These methods provide a means of extracting the relevant features and information from the vector field in the form of a higher level descriptor and provide a means of reconstructing the field qualitatively from those descriptors. The method is demonstrated on fluid flow data.

利用三维相位肖像进行矢量场分析与合成
使用动力系统理论的工具将三维矢量场分解为由临界点和相位肖像组成的更简单的构建块。研制了一种鲁棒的三维临界点检测器。然后使用每个临界点周围向量场的样本来估计相关的线性相位肖像,该肖像被写成3 × 3矩阵。估计矩阵的特征值在区域的任意可微映射下保持一致,可被划分为七种标准形式之一。用两种方法估计了原始矢量场的行为。在一种技术中,使用相位肖像的加权叠加来重建全局行为。对于更复杂的字段模式,在阶段肖像表示之前施加一个规则的分区,并且每个单独的分区被分解成一个单独的阶段肖像。这些方法提供了一种以更高层次描述符的形式从向量场提取相关特征和信息的方法,并提供了一种从这些描述符定性地重建字段的方法。用流体流动数据对该方法进行了验证。
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