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Rough Set-based Heuristic Hybrid Recognizer And Its Applicationin Fault Diagnosis

机译:基于粗糙集的启发式混合识别器及其在故障诊断中的应用

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摘要

Rough set theory (RS) has been a topic of general interest in the field of knowledge discovery and pattern recognition. Machine learning algorithms are known to degrade in performance when faced with many features (sometimes attributes) that are not necessary for rule discovery. Many methods for selecting a subset of features have been proposed. However, only one method cannot handle the complex system with many attributes or features, so a hybrid mechanism is proposed based on rough set integrating artificial neural network (Rough-ANN) for feature selection in pattern recognition. RS-based attributes reduction as the preprocessor can decrease the inputs of the NN and improve the speed of training. So the sensitivity of rough set to noise can be avoided and the system's robustness is to be improved. A RS-based heuristic algorithm is proposed for feature selection. The approach can select an optimal subset of features quickly and effectively from a large database with a lot of features. Moreover, the validity of the proposed hybrid recognizer and solution is verified by the application of practical experiments and fault diagnosis in industrial process.
机译:粗糙集理论(RS)已经成为知识发现和模式识别领域中普遍关注的话题。已知机器学习算法会遇到许多规则发现不需要的功能(有时是属性)时,性能会下降。已经提出了许多用于选择特征子集的方法。然而,只有一种方法无法处理具有许多属性或特征的复杂系统,因此提出了一种基于粗糙集的人工神经网络混合算法,用于模式识别中的特征选择。基于RS的属性减少作为预处理器可以减少NN的输入并提高训练速度。因此,可以避免粗糙集对噪声的敏感性,并提高系统的鲁棒性。提出了一种基于RS的启发式算法用于特征选择。该方法可以从具有许多功能的大型数据库中快速,有效地选择最佳的功能子集。此外,通过在工业过程中的实际实验和故障诊断的应用,验证了所提出的混合识别器和解决方案的有效性。

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