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Research on integrating different methods of neural networks with case-based reasoning and rule-based system to infer causes of notebook computer breakdown

机译:将神经网络的不同方法与基于案例的推理和基于规则的系统相结合以推断笔记本计算机故障的原因的研究

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Important issues for notebook computer companies include how to ascertain the problems of machines sent by customers, and then assigning those machines to the appropriate department for servicing; and how to maintain breakdown data to save both handling time and costs. However, in practical application, unreliable data decreases the model's accuracy, and thus, new methods are brought forward in rapid succession to increase accuracy when inferring causes of notebook computer breakdown. This study integrated several different methods, consisting of a neural network, with case-based reasoning (CBR) and a rule-based system (RBS) to propose a gradual model for inferring causes of notebook computer breakdown. It stressed that the model should have accuracy, elasticity, and transparent interpretability. The model contains three phases: data extracting, group indexing and knowledge creation. Initially, the data extraction phase uses a self-organizing map (SOM) and a revised learning vector quantization network method to reduce isomorphic data to similarity characteristic-based clustering, thus, improving data quality. Then, the group indexing phase establishes a clustering index prediction model based on a back-propagation network (BPN) and genetic algorithm (CA) to increase the efficiency of case selections. Then, the knowledge creation phase uses CBR and RBS to create a notebook computer breakdown case selection model to determine the breakdown cause. Finally, the experimental results show that data purification can actually improve the model's accuracy. The CBR with clustering index and rule-based reasoning has A better classification accuracy rate than either the CBR, without the clustering index and rule-based reasoning, or the traditional CBR, in addition, it provides a reference for inferring causes of notebook computer breakdown.
机译:对于笔记本计算机公司来说,重要的问题包括如何确定客户发送的机器问题,然后将这些机器分配给相应的部门进行维修;以及如何维护故障数据以节省处理时间和成本。然而,在实际应用中,不可靠的数据降低了模型的准确性,因此,在推断笔记本计算机故障的原因时,不断提出新的方法来提高准确性。这项研究集成了几种不同的方法,包括神经网络,基于案例的推理(CBR)和基于规则的系统(RBS),以提出一种逐步模型来推断笔记本计算机故障的原因。它强调该模型应具有准确性,弹性和透明的可解释性。该模型包含三个阶段:数据提取,组索引和知识创建。最初,数据提取阶段使用自组织映射(SOM)和修订的学习矢量量化网络方法将同构数据减少为基于相似性特征的聚类,从而提高数据质量。然后,组索引阶段基于反向传播网络(BPN)和遗传算法(CA)建立聚类索引预测模型,以提高案例选择的效率。然后,知识创建阶段使用CBR和RBS创建笔记本计算机故障案例选择模型,以确定故障原因。最后,实验结果表明,数据净化实际上可以提高模型的准确性。与没有聚类索引和基于规则的推理的CBR或传统CBR相比,具有聚类索引和基于规则的推理的CBR的分类准确率要高得多,此外,它还为推断笔记本计算机故障的原因提供了参考。

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