基于多参数信息融合数据聚类的优化模型研究

Jie Sun, Tiejun Zhang
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引用次数: 0

摘要

在复杂的工业生产过程中,需要处理大量、多维的数据,生成复杂的数据。如果间接使用神经网络控制,很容易导致一些缺点,如结果不准确,神经网络的训练阶段缺乏收敛性等。针对这些情况,提出了数据优化处理算法的集成模型,即动态k均值改进聚类算法与模糊c均值聚类的优胜劣汰。通过两个聚类对复杂数据进行处理,以获得准确的聚类数量和隶属度。最后通过对煤矿产品数据的仿真,验证了模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Study of Optimizing Model Based on Data Cluster of Information Fusion of Multiple Parameters
In complex process of industrial production, it need deal with a large number of data, multiple dimensions, and generate complex data. If the neural network control indirect used, it is easy that lead to some shortcomings, such as inaccurate results and training stage of neural network lack convergence and so forth. In response to these circumstances, the integration model of data optimize processing algorithms is put forward, which is the survival of the fittest each other of dynamic K-means improve cluster algorithm and fuzzy c mean value clustering. Through two clusters to process complex data, in order that obtain accurate cluster quantity and membership. Finally through the simulation of the coal mining product data, the results proof the validity of the model.
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