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首页> 外文期刊>Kybernetes: The International Journal of Systems & Cybernetics >Self-organizing data mining research on the decision support system for environmental evolution analysis
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Self-organizing data mining research on the decision support system for environmental evolution analysis

机译:用于环境演化分析的决策支持系统的自组织数据挖掘研究

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Purpose - The purpose of this paper is to select the main impact factors of environment change automatically and identify and analyze the potential environmental impact factors with time delay by computer simulation, analyzing the impact rate of environmental impact factors. Then, the environmental impact factors analysis decision support system based on self-organizing data mining model is designed. Design/methodology/approach - Applying data mining methods in the analysis and decision making of regional environmental impact factors will have broad perspective. Self-organization data mining is a new modeling method of complex systems modeling with strong modeling capability. It was first presented by A.G. Ivakhnenko, based on the principle of self-organization of biological cybernetics and Kolmogoorov-Gabor polynomial function. In this paper, the impact factors of regional environment quality evolution based on self-organization data mining method is studied, selecting the main impact factors of environment change automatically by computer simulation, analyzing the impact contribution rate of environmental impact factors. Findings - The environmental impact factors analysis decision support system based on self-organizing data mining model is designed. Research limitations/implications - Accessibility and availability of data are the main limitations affecting which model will be applied. Practical implications - The paper has important theoretical and practical significance for the sustainable development of regional environment, resource, economy system and the constitution of environmental protection and management measures. Originality/value - This paper not only exploits new application domains of self-organization data mining, but also explores new ways for regional environment impact factors analysis.
机译:目的-本文的目的是自动选择环境变化的主要影响因素,并通过计算机模拟来识别和分析具有潜在时延的潜在环境影响因素,分析环境影响因素的影响率。然后,设计了基于自组织数据挖掘模型的环境影响因素分析决策支持系统。设计/方法/方法-将数据挖掘方法应用于区域环境影响因素的分析和决策将具有广阔的前景。自组织数据挖掘是一种具有强大建模能力的复杂系统建模的新建模方法。它由A.G. Ivakhnenko首次提出,其依据是生物控制论的自组织原理和Kolmogoorov-Gabor多项式函数。本文研究了基于自组织数据挖掘方法的区域环境质量演变影响因素,通过计算机模拟自动选择环境变化的主要影响因素,分析了环境影响因素的影响贡献率。调查结果-设计了基于自组织数据挖掘模型的环境影响因素分析决策支持系统。研究限制/含义-数据的可访问性和可用性是影响将应用哪种模型的主要限制。实践意义-本文对于区域环境,资源,经济体系的可持续发展以及环境保护和管理措施的制定具有重要的理论和实践意义。原创性/价值-本文不仅探索了自组织数据挖掘的新应用领域,而且还探索了区域环境影响因素分析的新方法。

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