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A Levenberg-Marquardt Neural Network Model with Rough Set for Protecting Citrus from Frost Damage

机译:一种Levenberg-Marquardt神经网络模型,具有粗糙的毛霜损伤保护柑橘

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The protection of citrus from night frosts is a recurrent and important issue that has been researched for many years. Although some feasible methods can be used to protect against and prevent frost, they should be implemented before the frost actually occurs. Therefore, how to accurately predict the temperature change in advance is a core problem for protecting citrus from frost damage. This paper proposes a new method, which combines the neural network with rough set based on the conditional information entropy, in order to improve the accuracy of temperature prediction. Utilizing attribute reduction drawing on the theory of rough set, the weak interdependency in the neural network can be decreased and the prediction accuracy can be increased. Some experiments show that the ability of a neural network to accurately predict minimum temperature can be improved through attribute reduction.
机译:从夜间霜冻的保护是一种经常性和重要的问题,已经研究了多年。 虽然可以使用一些可行的方法来防止和防止霜冻,但它们应该在霜冻实际发生之前实施。 因此,如何准确预测预先预测温度变化是保护柑橘免受霜冻损伤的核心问题。 本文提出了一种新方法,其基于条件信息熵基于粗糙集合的神经网络,以提高温度预测的准确性。 利用粗糙集理论上的属性减少图,可以减少神经网络中的弱相互依赖性,并且可以增加预测精度。 一些实验表明,通过减少属性可以改善神经网络准确预测最小温度的能力。

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