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首页> 外文期刊>Applied Microbiology and Biotechnology >Radial basis function neural networks for modeling growth rates of the basidiomycetes Physisporinus vitreus and Neolentinus lepideus
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Radial basis function neural networks for modeling growth rates of the basidiomycetes Physisporinus vitreus and Neolentinus lepideus

机译:径向基函数神经网络用于模拟玻璃状担子菌​​和轻新孢子虫的生长速率

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摘要

A radial basis function (RBF) neural network was developed and compared against a quadratic response surface (RS) model for predicting the specific growth rates of the biotechnologically important basidiomycetous fungi, Physisporinus vitreus and Neolentinus lepideus, under three environmental conditions: temperature (10-30 °C), water activity (0.950-9.998), and pH (4-6). Both the RBF network and polynomial RS model were mathematically evaluated against experimental data using graphical plots and several statistical indices. The evaluation showed that both models gave reasonably good predictions, but the performance of the RBF neural network was superior to that of the classical statistical method for all three data sets used (training, testing, full). Sensitivity analysis revealed that of the three experimental factors the most influential on the growth rate of P. vitreus was water activity, followed by temperature and pH to a lesser extent. In contrast, temperature in particular and then water activity were the key determinants of the development of N. lepideus. RBF neural networks could be a powerful technique for modeling fungal growth behavior under certain parameters and an alternative to time-consuming, traditional microbiological techniques.
机译:开发了径向基函数(RBF)神经网络,并将其与二次响应面(RS)模型进行比较,以预测在以下三种环境条件下温度(10- 30°C),水活度(0.950-9.998)和pH(4-6)。 RBF网络和多项式RS模型均使用图形图和几个统计指标针对实验数据进行数学评估。评估表明,两个模型都给出了相当不错的预测,但是对于所有使用的三个数据集(训练,测试,完整),RBF神经网络的性能均优于经典统计方法。敏感性分析表明,在三个实验因素中,对玻璃体假单胞菌生长速度影响最大的是水分活度,其次是温度和pH。相反,特别是温度,然后是水的活性,是决定轻链猪笼草发展的关键因素。 RBF神经网络可能是在某些参数下对真菌生长行为进行建模的强大技术,并且是耗时的传统微生物技术的替代方法。

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