Roadknight C M, Balls G R, Mills G E, Palmer-Brown D
Dept. of Comput., Nottingham Trent. Univ.
IEEE Trans Neural Netw. 1997;8(4):852-62. doi: 10.1109/72.595883.
Artificial neural networks (ANNs) are used to model the interactions that occur between ozone pollution, climatic conditions, and the sensitivity of crops and other plants to ozone. A number of generic methods for analysis and modeling are presented. These methods are applicable to the modeling and analysis of any data where an effect (in this case damage to plants) is caused by a number of variables that have a nonlinear influence. Multilayer perceptron ANNs are used to model data from a number of sources and analysis of the trained optimized models determines the accuracy of the model's predictions. The models are sufficiently general and accurate to be employed as decision support systems by United Nations Economic Commission for Europe (UNECE) in determining the critical acceptable levels of ozone in Europe. Comparison is made of the accuracy of predictions for a number of modeling approaches. It is shown that the ANN approach is more accurate than other methods and that the use of principal components analysis on the inputs can improve the model. The validation of the models relies on more than simply an error measure on the test data. The relative importance of the causal agents in the model is established in the first instance by summing absolute weight values. This indicates whether the model is consistent with domain knowledge. The application of a range of conditions to the model then allows predictions to be made about the nonlinear influences of the individual principal inputs and of combinations of two inputs viewed as a three-dimensional graph. Equations are synthesized from the ANN to represent the model in an explicit mathematical form. Models are formed with essential parameters and other inputs are added as necessary, in order of decreasing priority, until an acceptable error level is reached. Secondary indicators substituting for primary indicators with which they are strongly correlated can be removed. From the synthesized equations both known and novel aspects of the process modeled can be identified. Known effects validate the model. Novel effects form the basis of hypotheses which can then be tested.
人工神经网络(ANNs)用于模拟臭氧污染、气候条件以及农作物和其他植物对臭氧的敏感性之间发生的相互作用。文中介绍了一些通用的分析和建模方法。这些方法适用于对任何数据进行建模和分析,在这些数据中,一种效应(在这种情况下是对植物的损害)是由多个具有非线性影响的变量引起的。多层感知器人工神经网络用于对来自多个来源的数据进行建模,对经过训练的优化模型进行分析可确定模型预测的准确性。这些模型足够通用且准确,可被联合国欧洲经济委员会(UNECE)用作决策支持系统,以确定欧洲臭氧的临界可接受水平。文中对多种建模方法的预测准确性进行了比较。结果表明,人工神经网络方法比其他方法更准确,并且在输入上使用主成分分析可以改进模型。模型的验证不仅仅依赖于对测试数据的误差度量。首先通过对绝对权重值求和来确定模型中因果因素的相对重要性。这表明模型是否与领域知识一致。然后对模型应用一系列条件,从而可以对各个主要输入以及两个输入组合(视为三维图)的非线性影响进行预测。从人工神经网络合成方程,以显式数学形式表示模型。使用基本参数形成模型,并按优先级从高到低依次添加其他必要输入,直到达到可接受的误差水平。可以去除与主要指标高度相关的替代主要指标的次要指标。从合成方程中可以识别出所建模过程的已知方面和新方面。已知效应验证模型。新效应构成假设的基础,然后可以对其进行检验。