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Selective Ensemble Random Neural Networks Based on Adaptive Selection Scope of Input Weights and Biases for Building Soft Measuring Model

机译:基于输入权重和偏差的自适应选择范围的选择性集成随机神经网络,用于构建软测量模型

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Random neural networks (RNNs) prediction model is built with a specific randomized algorithm by employing a single hidden layer structure. Duo to input weights and biases are randomly assigned and output weights are analytically calculated, it is widely used in different applications. Most of RNNs-based soft measuring models assign the random parameter scope to default range [- 1, 1]. However, this cannot ensure the universal approximation capability of the resulting model. In this paper, selective ensemble (SEN)-RNN algorithm based on adaptive selection scope of input weights and biases is proposed to construct soft measuring model. Bootstrap and genetic algorithm optimization toolbox are used to construct a set of SEN-RNN models with different random parameter scope. The final soft measuring model is adaptive selected in terms of the best generation performance among these SEN models. Simulation results based on housing benchmark dataset of UCI and dioxin concentration dataset of municipal solid waste incineration validate the proposed approach.
机译:随机神经网络(RNN)预测模型是采用特定的随机算法通过采用单个隐藏层结构构建的。输入权重和偏差的二重性是随机分配的,输出权重是通过解析计算的,它广泛用于不同的应用程序中。大多数基于RNN的软测量模型将随机参数范围分配给默认范围[-1、1]。但是,这不能确保所得模型的通用逼近能力。提出了基于输入权重和偏差的自适应选择范围的选择性集成(SEN)-RNN算法,构建了软测量模型。 Bootstrap和遗传算法优化工具箱用于构建具有不同随机参数范围的SEN-RNN模型集。根据这些SEN模型中的最佳生成性能,自适应选择最终的软测量模型。基于UCI的房屋基准数据集和城市垃圾焚烧二恶英浓度数据集的仿真结果验证了该方法的有效性。

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