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首页> 外文期刊>International journal of systems science >Fault diagnosis of nonlinear and large-scale processes using novel modified kernel Fisher discriminant analysis approach
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Fault diagnosis of nonlinear and large-scale processes using novel modified kernel Fisher discriminant analysis approach

机译:应用改进的核Fisher判别分析方法对非线性和大规模过程进行故障诊断

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摘要

It is pretty significant for fault diagnosis timely and accurately to improve the dependability of industrial processes. In this study, fault diagnosis of nonlinear and large-scale processes by variable-weighted kernel Fisher discriminant analysis (KFDA) based on improved biogeography-based optimisation (IBBO) is proposed, referred to as IBBO-KFDA, where IBBO is used to determine the parameters of variable-weighted KFDA, and variable-weighted KFDA is used to solve the multi-classification overlapping problem. The main contributions of this work are four-fold to further improve the performance of KFDA for fault diagnosis. First, a nonlinear fault diagnosis approach with variable-weighted KFDA is developed for maximising separation between the overlapping fault samples. Second, kernel parameters and features selection of variable-weighted KFDA are simultaneously optimised using IBBO. Finally, a single fitness function that combines erroneous diagnosis rate with feature cost is created, a novel mixed kernel function is introduced to improve the classification capability in the feature space and diagnosis accuracy of the IBBO-KFDA, and serves as the target function in the optimisation problem. Moreover, an IBBO approach is developed to obtain the better quality of solution and faster convergence speed. On the one hand, the proposed IBBO-KFDA method is first used on Tennessee Eastman process benchmark data sets to validate the feasibility and efficiency. On the other hand, IBBO-KFDA is applied to diagnose faults of automation gauge control system. Simulation results demonstrate that IBBO-KFDA can obtain better kernel parameters and feature vectors with a lower computing cost, higher diagnosis accuracy and a better real-time capacity.
机译:及时准确地进行故障诊断对于提高工业过程的可靠性具有重要意义。在这项研究中,提出了基于改进的基于生物地理学的优化(IBBO)的可变加权核Fisher判别分析(KFDA)进行的非线性和大规模过程的故障诊断,称为IBBO-KFDA,其中IBBO用于确定可变权重KFDA的参数,可变权重KFDA用于解决多分类重叠问题。这项工作的主要贡献是四方面,以进一步提高KFDA在故障诊断方面的性能。首先,开发了一种具有可变加权KFDA的非线性故障诊断方法,以使重叠的故障样本之间的分离最大化。其次,使用IBBO同时优化可变权KFDA的内核参数和特征选择。最后,创建了将错误诊断率与特征成本相结合的单个适应度函数,并引入了一种新的混合核函数以提高IBBO-KFDA在特征空间中的分类能力和诊断准确性,并将其用作目标函数。优化问题。此外,开发了IBBO方法来获得更好的解决方案质量和更快的收敛速度。一方面,提出的IBBO-KFDA方法首先用于田纳西伊士曼过程基准数据集,以验证可行性和效率。另一方面,IBBO-KFDA被用于诊断自动化仪表控制系统的故障。仿真结果表明,IBBO-KFDA能够以更低的计算成本,更高的诊断准确性和更好的实时能力获得更好的内核参数和特征向量。

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