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Bacterial-inspired feature selection algorithm and its application in fault diagnosis of complex structures

机译:细菌启发特征选择算法及其在复杂结构故障诊断中的应用

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Feature selection is an important preprocessing technique for data analysis and data mining. One of main challenge for feature selection is to overcome the curse of dimensionality. Bacterial algorithms, like Bacterial Foraging Optimization (BFO), have been well-exploited as the metaheuristics for addressing the optimization problems. In this paper, an extended bacterial algorithm named as Bacterial-Inspired Feature Selection Algorithm (BIFS) is proposed. In BIFS, the searching process of bacteria consists of two main mechanisms: interactive swimming (or running) strategy used in Bacterial Colony Optimization (BCO), and random tumbling strategy embedded in Bacterial Foraging Optimization (BFO). The rule controlled foraging mode in BCO has been used in BIFS to overcome the high computational cost problem in most BFOs. Meanwhile, the `roulette wheel weighting' strategy is employed to weight the influence of features on the fitness functions and evaluate the distribution of the features within the large search space. Experiments on six benchmark datasets show that the proposed algorithm (i.e. BIFS) achieves higher classification accuracy rate in comparison to the four bacterial based algorithms and other three evolutionary algorithms. Furthermore, an additional real application of the proposed bacterial-inspired feature selection algorithm for fault diagnosis of complex structures in engineering has been developed. The results show that the proposed bacterial-inspired algorithm is capable of selecting the most sensitive sensors to detect and isolate the fault of complex structures.
机译:特征选择是用于数据分析和数据挖掘的重要预处理技术。特征选择的主要挑战之一是克服维数的诅咒。诸如细菌觅食优化(BFO)之类的细菌算法已被广泛地用作解决优化问题的元启发法。本文提出了一种扩展的细菌算法,称为细菌启发特征选择算法(BIFS)。在BIFS中,细菌的搜索过程包括两个主要机制:细菌菌落优化(BCO)中使用的交互式游泳(或跑步)策略,以及细菌觅食优化(BFO)中嵌入的随机翻滚策略。 BFS中的规则控制觅食模式已在BIFS中使用,以克服大多数BFO中的高计算成本问题。同时,采用“轮盘加权”策略来加权特征对适应度函数的影响,并评估特征在大型搜索空间中的分布。在六个基准数据集上进行的实验表明,与四种基于细菌的算法和其他三种进化算法相比,该算法(即BIFS)实现了更高的分类准确率。此外,已经开发了所提出的细菌启发性特征选择算法在工程中复杂结构故障诊断中的另一种实际应用。结果表明,所提出的细菌启发式算法能够选择最敏感的传感器来检测和隔离复杂结构的故障。

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