铁路救援指挥系统中基于案例推理的智能决策支持系统研究

Xiaoping Li, Kangkang Yu
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引用次数: 4

摘要

研究了基于案例推理(CBR)、粗糙集和专家系统的决策支持方法,构建铁路救援指挥系统。为此,以铁路救援案例为基础,运用粗糙集理论建立案例指标和推理机制;它可以有效地减少知识,从中发现规律。对于新案例,利用相似度量理论,结合专家知识和救援规则,完成相似案例检索,得到最终的应急救援命令方法。实验结果表明,基于上述技术的决策支持系统在救援决策方面比基于规则推理(rule -based Reasoning, RBR)和决策过程经验知识具有明显的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The research of intelligent Decision Support system based on Case-based Reasoning in the Railway Rescue Command System
This article studies the Decision Support method that based on Case-based Reasoning (CBR), Rough Set and Expert System to construct the Railway Rescue Command System (RRCS). To do this, it takes the railway rescue case as the foundation and establishes case index and Reasoning mechanism using rough sets theory; it can effectively reduce the knowledge and discover regulation from it. For the new case, by completing the Similar Case Retrieval using Similarity Measurement theory, as well as Expert Knowledge and Rescue rules, a final Emergency Rescue Command method is obtained. The experimental results show that the decision support system which based on the above technology has obvious advantages in rescue decision-making than RBR (Ruler-based Reasoning) and experience knowledge of decision-making process.
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