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Leaf Wetness Evaluation Using Artificial Neural Network for Improving Apple Scab Fight

机译:利用人工神经网络评估叶片湿润度以改善苹果黑ab病

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Precision agriculture represents a promising technological trend in which governments and local authorities are increasingly investing. In particular, optimising the use of pesticides and having localised models of plant disease are the most important goals for the farmers of the future. The Trentino province in Italy is known as a strong national producer of apples. Apple production has to face many issues, however, among which is apple scab. This disease depends mainly on leaf wetness data typically acquired by fixed sensors. Based on the exploitation of artificial neural networks, this work aims to spatially extend the measurements of such sensors across uncovered areas (areas deprived of sensors). Achieved results have been validated comparing the apple scab risk of the same zone using either real leaf wetness data and estimated data. Thanks to the proposed method, it is possible to get the most relevant parameter of apple scab risk in places where no leaf wetness sensor is available. Moreover, our method permits having a specific risk evaluation of apple scab infection for each orchard, leading to an optimization of the use of chemical pesticides.
机译:精准农业代表着一个有希望的技术趋势,政府和地方当局正在不断投资。特别是,优化农药的使用并具有局部植物病害模型是未来农民的最重要目标。意大利的特伦蒂诺省(Trentino)被称为苹果的重要国家。苹果生产必须面对许多问题,其中包括苹果黑星病。该病主要取决于通常由固定传感器获取的叶片湿度数据。基于对人工神经网络的利用,这项工作旨在将此类传感器的测量范围扩展到未覆盖区域(缺少传感器的区域)。使用真实的叶片湿度数据和估计的数据,比较相同区域的苹果黑星病风险,已经验证了所取得的结果。由于所提出的方法,可以在没有叶片湿度传感器的地方获得与苹果黑relevant病风险最相关的参数。此外,我们的方法可以对每个果园进行苹果sc疮感染的特定风险评估,从而优化化学农药的使用。

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