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首页> 外文期刊>Scientific reports. >An Amazon stingless bee foraging activity predicted using recurrent artificial neural networks and attribute selection
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An Amazon stingless bee foraging activity predicted using recurrent artificial neural networks and attribute selection

机译:使用经常性人工神经网络和属性选择预测的亚马逊无刺蜂觅食活动

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Bees play a key role in pollination of crops and in diverse ecosystems. There have been multiple reports in recent years illustrating bee population declines worldwide. The search for more accurate forecast models can aid both in the understanding of the regular behavior and the adverse situations that may occur with the bees. It also may lead to better management and utilization of bees as pollinators. We address an investigation with Recurrent Neural Networks in the task of forecasting bees' level of activity taking into account previous values of level of activity and environmental data such as temperature, solar irradiance and barometric pressure. We also show how different input time windows, algorithms of attribute selection and correlation analysis can help improve the accuracy of our model.
机译:蜜蜂在农作物和各种生态系统中发挥关键作用。近年来有多个报告,说明蜂群体在全球下降。搜索更准确的预测模型可以帮助了解常规行为和蜜蜂可能发生的不利情况。它也可能导致蜜蜂作为粉丝器的更好管理和利用。我们在考虑到以前的活动水平和环境数据等价值的预测蜜蜂的活动水平的任务中与经常性神经网络进行调查,如温度,太阳辐照度和气压等。我们还展示了如何不同的输入时间窗口,属性选择和相关分析的算法可以有助于提高模型的准确性。

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