基于双高斯分布混合的可解释自适应鲁棒神经网络建模方法OA
An Interpretable and Adaptive Robust Neural Network Modeling Method Based on Dual Gaussian Mixture Distribution
工业过程数据常常受到混合噪声干扰,传统基于单一重尾分布的鲁棒建模方法在处理混合噪声问题时,在准确性与可解释性方面均存在一定局限.基于此,提出一种混合双高斯分布的可解释鲁棒自适应建模方法.该方法首先采用随机配置算法构建基础的随机配置网络学习模型,确定模型的隐含层节点数、输入权重和偏置;其次为保证模型对混合噪声的鲁棒性,构建双高斯分布(一大一小方差)加权组合而成的噪声表征模型;随后利用期望最大化算法自适应迭代学习随机配置网络输出权值和混合高斯模型噪声参数,最终形成基于双高斯分布混合鲁棒建模方法.该方法具有以下优势:噪声模型能够通过参数自适应学习逼近实际混合噪声特性,其中大方差高斯分量负责对异常噪声进行粗调,小方差高斯分量则用于精细拟合主体噪声,从而增强模型的可解释性;在网络模型输出权值估计过程中,通过为每个输出数据点自适应分配惩罚权重,保障模型的鲁棒性能.为验证所提方法的有效性,分别在函数仿真、基准数据集和工业实例上设计多组对比实验,结果均表明所提方法具备良好的可靠性与实用性.
Industrial process data are often contaminated by mixed noise interference.Traditional robust modeling methods based on single heavy-tailed distributions exhibit certain limitations in both accuracy and interpretability when dealing with mixed noise problems.To address these issues,an interpretable robust adaptive modeling method based on a mixed dual Gaussian distribution is proposed.First,the proposed method begins by constructing a base learning model by using the stochastic configuration network(SCN)framework to determine the number of hidden nodes,input weights,and biases.Secondly,to ensure robustness against mixed noise,a noise characterization mod-el is established through a weighted combination of dual Gaussian distribution with large and small variances.And then the expectation-maximization algorithm is employed to adaptively and iteratively learn both the output weights of the SCN and the parameters of the Gaussian mixture model,ultimately forming the robust stochastic configuration network model based on dual Gaussian distribution.The proposed method offers two main advant-ages:The noise model can approximate the characteristics of actual mixed noise through adaptive parameter learn-ing,where the large-variance Gaussian component handles coarse approximation of anomalous noise while the small-variance Gaussian component achieves fine-grained characterization of dominant noise,thereby enhancing inter-pretability;During the estimation of network output weights,the model ensures robust performance by adaptively assigning penalty weights to each output data point.To validate the effectiveness of the proposed method,multiple comparative experiments are conducted on function approximation,benchmark datasets,and an industrial case study.The results consistently demonstrate that the proposed method achieves satisfactory reliability and practicality.
刘鑫;李琪琪;代伟
中国矿业大学信息与控制工程学院 徐州 221116中国矿业大学信息与控制工程学院 徐州 221116中国矿业大学信息与控制工程学院 徐州 221116
随机配置网络双高斯分布混合鲁棒建模方法期望最大化算法
stochastic configuration networkdual Gaussian distribution mixturerobust modeling methodexpecta-tion-maximization algorithm
《自动化学报》 2026 (3)
463-480,18
国家自然科学基金(62573417,62373361,U24A20272),江苏省自然科学基金(BK20252089,BK20240102),中国博士后科学基金(2023M743776,2024T171003),江苏省研究生科研与实践创新计划(SJCX25_1396),中国矿业大学研究生创新计划(2025WLJCRCZL117)资助Supported by National Natural Science Foundation of China(62573417,62373361,U24A20272),Natural Science Foundation of Jiangsu Province(BK20252089,BK20240102),China Postdoctor-al Science Foundation(2023M743776,2024T171003),Postgradu-ate Research&Practice Innovation Program of Jiangsu Province(SJCX25_1396),and Graduate Innovation Program of China University of Mining and Technology(2025WLJCRCZL117)
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