Departamento de Botânica, Instituto de Biociências - Unesp - São Paulo State University, Cep 13506-900, Avenida 24-A, 1515, Bela Vista, Rio Claro-SP, Brazil.
J Insect Sci. 2010;10:58. doi: 10.1673/031.010.5801.
Bionomic features of blowflies may be clarified and detailed by the deployment of appropriate modelling techniques such as artificial neural networks, which are mathematical tools widely applied to the resolution of complex biological problems. The principal aim of this work was to use three well-known neural networks, namely Multi-Layer Perceptron (MLP), Radial Basis Function (RBF), and Adaptive Neural Network-Based Fuzzy Inference System (ANFIS), to ascertain whether these tools would be able to outperform a classical statistical method (multiple linear regression) in the prediction of the number of resultant adults (survivors) of experimental populations of Chrysomya megacephala (F.) (Diptera: Calliphoridae), based on initial larval density (number of larvae), amount of available food, and duration of immature stages. The coefficient of determination (R(2)) derived from the RBF was the lowest in the testing subset in relation to the other neural networks, even though its R(2) in the training subset exhibited virtually a maximum value. The ANFIS model permitted the achievement of the best testing performance. Hence this model was deemed to be more effective in relation to MLP and RBF for predicting the number of survivors. All three networks outperformed the multiple linear regression, indicating that neural models could be taken as feasible techniques for predicting bionomic variables concerning the nutritional dynamics of blowflies.
运用适当的建模技术,如人工神经网络,可以阐明和详细说明麻蝇的生态特征,人工神经网络是广泛应用于解决复杂生物学问题的数学工具。本研究的主要目的是使用三种著名的神经网络,即多层感知器(MLP)、径向基函数(RBF)和自适应神经网络模糊推理系统(ANFIS),来确定这些工具是否能够在预测实验种群(双翅目:Calliphoridae) Chrysomya megacephala(F.)(双翅目:Calliphoridae)的成虫(幸存者)数量方面优于经典统计方法(多元线性回归),基于初始幼虫密度(幼虫数量)、可用食物量和幼虫发育阶段的持续时间。RBF 的决定系数(R²)在测试子集中相对于其他神经网络最低,尽管其在训练子集中的 R² 几乎达到最大值。ANFIS 模型可以实现最佳的测试性能。因此,与 MLP 和 RBF 相比,该模型在预测幸存者数量方面更为有效。所有三个网络都优于多元线性回归,这表明神经网络模型可以作为预测与麻蝇营养动态有关的生态特征的可行技术。