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首页> 外文期刊>International Journal of Distributed Sensor Networks >Adaptive sensing scheme using naive Bayes classification for environment monitoring with drone:
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Adaptive sensing scheme using naive Bayes classification for environment monitoring with drone:

机译:使用朴素贝叶斯分类的自适应感测方案用于无人机环境监控:

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Environmental sensors are important for collecting data to understand environmental changes and analyze environmental issues. In order to effectively monitor environmental changes, high-density sensor deployment and evenly distributed spatial distance between sensors become the requirements and desired properties for such applications. In many applications, sensors are deployed in locations that are difficult and dangerous to reach (e.g. mountaintop or skyscraper roof). To collect data from those sensors, unmanned aerial vehicles are used to act as data mules to overcome the problem of collecting data in challenging environments. In this article, we extend the adaptive return-to-home sensing algorithm with a parameter-tuning algorithm that combines naive Bayes classification and binary search to adapt adaptive return-to-home sensing parameters effectively on the fly. The proposed approach is able to (1) optimize number of sensing attempts, (2) reduce oscillation of the distance for consecutive attempts, and (3) reserve enough power for drone to return-to-home. Our results show that the naive Bayes classification–enhanced adaptive return-to-home sensing scheme is able to avoid oscillation in sensing and guarantees return-to-home feature while behaving more cost-effective in parameter tuning than the other machine learning–based approaches.
机译:环境传感器对于收集数据以了解环境变化和分析环境问题非常重要。为了有效地监视环境变化,高密度传感器的部署以及传感器之间均匀分布的空间距离成为此类应用程序的要求和期望特性。在许多应用中,传感器部署在难以到达且危险的位置(例如,山顶或摩天大楼屋顶)。为了从那些传感器收集数据,无人驾驶飞机被用作数据mu,以克服在充满挑战的环境中收集数据的问题。在本文中,我们通过参数调整算法扩展了自适应返航传感算法,该算法将朴素贝叶斯分类和二进制搜索相结合,可以有效地实时自适应返航传感参数。所提出的方法能够(1)优化感测尝试的次数,(2)减少连续尝试的距离的振荡,以及(3)保留足够的动力以使无人机返回家中。我们的结果表明,朴素的贝叶斯分类增强的自适应返航感应方案能够避免感应振荡并保证返航功能,同时在参数调整方面比其他基于机器学习的方法更具成本效益。

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