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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part B. Journal of engineering manufacture >Integrating grey relational analysis and support vector machine for performance prediction of modular configured products
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Integrating grey relational analysis and support vector machine for performance prediction of modular configured products

机译:集成灰色关联分析和支持向量机,对模块化配置产品的性能进行预测

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摘要

Evaluating whether a newly configured product can satisfy the customers' Individual requirements or not Is crucially important for the modular configuration design. Product performance prediction at the end of the configuration process can estimate the performance parameter values through the soft computing method Instead of practical test experiments, which enables fast and accurate evaluation of configuration schemes. In this article, we propose a novel prediction approach based on the Integration of grey relational analysis and support vector machine through discovering the knowledge from the historical configuration Information. The Implementation process of the prediction is established, and the procedure in applying the prediction to the configuration design is presented. There are three key steps to achieve performance prediction. First, the module parameters that affect the performance need to be reduced using the grey relational analysis method and then a module parameter reduction is generated. Second, the relationship between the reduced module parameters and the performance parameter Is mined from the limited existing product data. A support vector machine model used for regression prediction is constituted. Third, when the values of the module parameter reduction are determined, the performance value of a newly configured product can be predicted by means of the support vector machine model. This methodology can ensure the performance prediction executed in a short period of time with a high degree of precision, even under the small-sample conditions. A design case of the plate electrostatic precipitator is studied to Illustrate and demonstrate the feasibility of the proposed method.
机译:评估新配置的产品是否可以满足客户的个性化需求对于模块化配置设计至关重要。在配置过程结束时进行产品性能预测可以通过软计算方法而不是实际的测试实验来估计性能参数值,从而可以快速,准确地评估配置方案。在本文中,我们通过从历史配置信息中发现知识,提出了一种基于灰色关联分析和支持向量机集成的新颖预测方法。建立了预测的实现过程,并给出了将预测应用于组态设计的过程。要实现性能预测,需要三个关键步骤。首先,需要使用灰色关联分析方法减少影响性能的模块参数,然后生成模块参数减少量。其次,从有限的现有产品数据中挖掘简化的模块参数和性能参数之间的关系。构成用于回归预测的支持向量机模型。第三,当确定模块参数减少的值时,可以借助支持向量机模型预测新配置产品的性能值。即使在小样本条件下,这种方法也可以确保在短时间内以高精度执行性能预测。以板式静电除尘器的设计案例为例,说明并证明了该方法的可行性。

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