基于D-S证据理论的多智能体温度状态识别

Guo Qi-yi, Zhuo Chunyang
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引用次数: 0

摘要

体温状态模式是最重要的指标,它能反映地铁车辆大功率加载装置的正常与异常运行状态,以便及时、快速、准确地识别目标装置的体温状态,降低虚警概率。利用神经网络系统智能体和专家系统智能体同时识别目标设备的体温状态并进行概率模式识别,并将D-S证据理论和权重因子应用到步骤中,将多个智能体融合为一个联合智能体,最终得出智能决策结果。实际结果表明,该方法大大增强了器件温度状态模式识别能力的可靠性,且易于扩展。
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Multi-Agent Temperature State Recognition Based on D-S Evidence Theory
Body temperature state pattern is the most important index, which can reflect normal and abnormal running state of the high power loading devices for the vehicle on subway, in order to timely, quickly and accurately recognize body temperature state of the objective device, and reduce false alarming probability, make use of neural network system intelligent Agent and expert system intelligent Agent which simultaneously recognize body temperature state of the objective devices and get probability pattern recognition, and applies D-S evidence theory and weight factor into steps which fuse several intelligent agents into one union intelligent agent, finally make a intelligent decision result. The practical results show that this method greatly strengthens reliability of recognition ability for device temperature state pattern, and also is easy to expandable.
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