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On the Estimation of Pollen Density on Non-target Lepidoptera Food Plant Leaves in Bt-Maize Exposure Models: Open Problems and Possible Neural Network-Based Solutions

机译:Bt-玉米暴露模型中非目标鳞翅目食物植物叶片花粉密度的估计:开放性问题和可能的基于神经网络的解决方案

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Sometimes, mathematical modelling in ecology requires approximation assumptions, on the model at hand, in order to meet domain constraints, thus making the mathematical construction unrealistic. To this end, the paper analyzes a model representing the Btmaize pollen density on non-target Lepidoptera food plant leaves by a differential equation. The exact solution of the differential equation is provided, showing that the solution behavior, when the time goes to infinity, does not vanish, differently from what assumed in the model, consequently undermining the theoretical model soundness. In order to solve this drawback, the paper proposes a neuro-fuzzy model capable to obtain a robust pollen density estimate directly from data, thus avoiding unnecessary and unfeasible model approximations.
机译:有时,生态学中的数学建模需要手头模型上的近似假设才能满足域约束,从而使数学构造不切实际。为此,本文通过微分方程分析了一个模型,该模型代表非目标鳞翅目食用植物叶片上的Btmaize花粉密度。提供了微分方程的精确解,表明当时间达到无穷远时,解行为不会消失,这与模型中假设的行为不同,因此会破坏理论模型的稳健性。为了解决这个缺点,本文提出了一种神经模糊模型,该模型能够直接从数据中获得鲁棒的花粉密度估计值,从而避免了不必要和不可行的模型近似。

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