Computing Exact Closed-Form Distance Distributions in Arbitrarily Shaped Polygons with Arbitrary Reference Point

Ross Pure, S. Durrani
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引用次数: 24

Abstract

We propose and implement an algorithm to compute the exact cumulative density function (CDF) of the distance from an arbitrary reference point to a randomly located node within an arbitrarily shaped (convex or concave) simple polygon. Using this result, we also obtain the closed-form probability density function (PDF) of the Euclidean distance between an arbitrary reference point and its ith neighbor node when N nodes are uniformly and independently distributed inside the arbitrarily shaped polygon. The implementation is based on the recursive approach proposed by Ahmadi and Pan [1] in order to obtain the distance distributions associated with arbitrary triangles. The algorithm in [1] is extended for arbitrarily shaped polygons by using a modified form of the shoelace formula. This modification allows tractable computation of the overlap area between a disk of radius r centered at the arbitrary reference point and the arbitrarily shaped polygon, which is a key part of the implementation. The obtained distance distributions can be used in the modeling of wireless networks, especially in the context of emerging ultra-dense small cell deployment scenarios, where network regions can be arbitrarily shaped. They can also be applied in other branches of science, such as forestry, mathematics, operations research, and material sciences.
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计算具有任意参考点的任意形状多边形的精确封闭形式距离分布
我们提出并实现了一种算法来计算从任意参考点到任意形状(凸或凹)简单多边形中随机位置节点的距离的精确累积密度函数(CDF)。利用这一结果,我们还得到了当N个节点均匀独立地分布在任意形状的多边形内时,任意参考点与其第1个相邻节点之间的欧几里得距离的封闭形式概率密度函数(PDF)。实现基于Ahmadi和Pan[1]提出的递归方法,以获得任意三角形相关的距离分布。利用鞋带公式的改进形式,将[1]中的算法扩展到任意形状的多边形。这种修改使得以任意参考点为中心的半径为r的圆盘与任意形状的多边形之间的重叠面积易于计算,这是实现的关键部分。所获得的距离分布可用于无线网络的建模,特别是在新兴的超密集小蜂窝部署场景中,网络区域可以任意形状。它们也可以应用于其他科学分支,如林业、数学、运筹学和材料科学。
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