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首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >Target guiding self-avoiding random walk with intersection algorithm for minimum exposure path problem in wireless sensor networks
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Target guiding self-avoiding random walk with intersection algorithm for minimum exposure path problem in wireless sensor networks

机译:目标引导自避免随机散步与无线传感器网络中最小曝光路径问题的交叉点算法

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摘要

To solve minimum exposure path (MEP) problem in wireless sensor networks more efficiently, this work proposes an algorithm called target guiding self-avoiding random walk with intersection (TGSARWI), which mimics the behavior of a group of random walkers that seek path to their destinations in a strange area. Target guiding leads random walkers move toward their end points, while self-avoiding prevents them from taking roundabout routes. Route intersections further accelerate the speed of seeking connected paths. Dijkstra algorithm (DA) is applied to solve MEP problem in a sub-network formed by multiple connected paths that walkers generate (called TGSARWI DA). Simulations show that the path exposure found by TGSARWI DA is very close to that by DA in the global network (Global DA), whereas the time complexity of computation is much lower. Compared with existing heuristic algorithms such as physarum optimization algorithm (POA), our algorithm shows higher generality and efficiency. This algorithm also exhibits good robustness to the fluctuations of parameters. Our algorithm could be very useful for the solution to MEP problem in fields with large-or high-density sensors.
机译:为了更有效地解决无线传感器网络中的最小曝光路径(MEP)问题,这项工作提出了一种称为目标指导自避免随机散步的算法,与交叉口(TGSARWI)模仿一组随机步行者的行为,这些行为可以寻求他们的道路一个奇怪的地区的目的地。目标指导导致随机助行者向其终点移动,而自我避免可防止他们采取环形交叉路口路线。路线交叉口进一步加速了寻求连接路径的速度。 Dijkstra算法(DA)应用于解决由WALKERS生成的多个连接路径(称为TGSARWI DA)形成的子网中的MEP问题。模拟表明,TGSARWI DA发现的路径曝光非常接近全球网络(全球DA)的DA,而计算的时间复杂程度要低得多。与现有的启发式算法(如PhySarum优化算法(POA)相比,我们的算法显示出更高的一般性和效率。该算法还对参数的波动表现出良好的鲁棒性。我们的算法对于具有大或高密度传感器的字段中的MEP问题非常有用。

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