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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Distributed parallel deep learning of Hierarchical Extreme Learning Machine for multimode quality prediction with big process data
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Distributed parallel deep learning of Hierarchical Extreme Learning Machine for multimode quality prediction with big process data

机译:大工艺数据的多模质量预测分配平行深度学习

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摘要

In this work, the distributed and parallel Extreme Learning Machine (dp-ELM) and Hierarchical Extreme Learning Machine (dp-HELM) are proposed for multimode process quality prediction with big data. The efficient ELM algorithm is transformed into the distributed and parallel modeling form according to the MapReduce framework. Since the deep learning network structure of HELM is more accurate than the single layer of ELM in feature representation, the dp-HELM is further developed through decomposing the ELM-based Auto-encoders (ELM-AE) of deep hidden layers into a loop of MapReduce jobs. Additionally, the multimode issue is solved through the "divide and rule" strategy. The distributed and parallel K-means (dp-K-means) is utilized to divide the process modes, which are further trained in a synchronous parallel way by dp-ELM and dp-HELM. Finally, the Bayesian model fusion technique is utilized to integrate the local models for online prediction. The proposed algorithms are deployed on a Hadoop MapReduce computing cluster and the feasibility and efficiency are illustrated through building a real industrial quality prediction model with big process data.
机译:在这项工作中,提出了分布式和并行的极端学习机(DP-ELM)和分层极端学习机(DP-HELM),用于大数据的多模过程质量预测。根据MapReduce框架,高效的ELM算法转换为分布式和并行建模表单。由于Helm的深度学习网络结构比特征表示中的单层ELM更精确,因此通过将深隐层的基于ELM的自动编码器(ELM-AE)分解为循环来进一步开发DP-Helm mapreduce乔布斯。此外,通过“鸿沟和规则”策略来解决多模问题。分布和并行k均值(DP-K-is)用于将过程模式分开,该过程模式通过DP-ELM和DP-Helm以同步并行方式训练。最后,利用贝叶斯模型融合技术集成了本地模型进行在线预测。所提出的算法部署在Hadoop MapReduce计算集群上,通过构建具有大工艺数据的真正工业质量预测模型来说明可行性和效率。

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