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疾病预测中的有效随机算法。

Effective Stochastic Algorithm in Disease Prediction.

机构信息

Department of Informatics, Ionian University, Corfu, Greece.

出版信息

Adv Exp Med Biol. 2020;1194:293-301. doi: 10.1007/978-3-030-32622-7_27.

Abstract

Traditionally, the main process for olive fruit fly population monitoring is trap measurements. Although the above procedure is time-consuming, it gives important information about when there is an outbreak of the population and how the insect is spatially distributed in the olive grove. Most studies in the literature are based on the combination of trap and environmental data measurements. Strictly speaking, the dynamics of olive fruit fly population is a complex system affected by a variety of factors. However, the collection of environmental data is costly, and sensor data often require additional processing and cleaning. In order to study the volatility of correlation in trap counts and how it is connected with population outbreaks, a stochastic algorithm, based on a stochastic differential model, is experimentally applied. The results allow us to predict early population outbreaks allowing for more efficient and targeted spraying.

摘要

传统上,橄榄果蝇种群监测的主要过程是诱捕测量。尽管上述程序很耗时,但它提供了有关何时发生种群爆发以及昆虫在橄榄园中空间分布的重要信息。文献中的大多数研究都是基于诱捕器和环境数据测量的结合。严格来说,橄榄果蝇种群的动态是一个受多种因素影响的复杂系统。然而,环境数据的收集成本很高,传感器数据通常需要额外的处理和清理。为了研究诱捕器计数的相关性波动及其与种群爆发的关系,实验应用了一种基于随机微分模型的随机算法。这些结果使我们能够预测早期的种群爆发,从而实现更高效和有针对性的喷洒。

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