数据分层在精准养蜂中的应用:概念

N. Bumanis, O. Komasilova, V. Komašilovs, A. Kviesis, A. Zacepins
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引用次数: 0

摘要

利用新兴的物联网技术和数据处理方法,对蜂群的各种多层次状态进行监测和预测。使用多个传感器和设备提供多模态数据来监视单个活动变得越来越普遍。现代数据分析和数据处理程序包括一个数据融合的步骤,以便提供更准确的输入数据。然而,这需要实现机器学习和大型数据集,而收集实时和观察数据的大型数据集对于中小型养蜂场来说是一个常见的问题。这就是为什么数据融合方法在精密养蜂领域没有真正实现的原因。本文的目的是引入数据分层的概念,该概念旨在解决全球精密养蜂问题,而无需实现机器学习。利用花期数据、降水数据和蜜蜂活动数据这三个数据集,在觅食优化问题的范围内论证了这一概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Data Layering in Precision Beekeeping: The Concept
The monitoring and predictions of various multi-level states of honeybee colonies are performed using emerging Internet of Things technologies and data processing methods. It is become common to use multiple sensors and devices providing multi-modal data to monitor a single activity. Modern data analysis and data processing procedures include a step of data fusion in order to provide more accurate input data. This, however, requires implementation of machine learning and large data sets, whereas gathering large data sets of real time and observation data is a common problem for small to medium size apiaries. This why there are no real implementation of data fusion method in precision beekeeping field. The aim of this paper was to introduce the concept of data layering, which aims to solve the global precision beekeeping problems without implementation of machine learning. The concept was demonstrated within the scope of foraging optimization problem using three data sets: flowering calendar data, rainfall precipitation data and bee activity data.
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