确定发电设施电气安全等级的人工智能系统

N. Zaytseva
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引用次数: 1

摘要

本文介绍了一种用于发电设施电气安全水平专家评估的人工智能系统。该信息系统基于模糊逻辑方法,可以更精确地计算特定条件下土壤的电阻率。研究人员描述了建立专家系统数据库和知识库的技术,包括一套模型和算法。本文详细描述了不同类型土壤的电阻率模糊模型,这取决于土壤的湿度、盐度和温度(正负范围)。它提供了特定地区土壤的模糊气候模型,考虑了一年中深入地下的土壤变化。所创建的人工智能系统根据不同的算法评估电力设施的安全级别,用于计算接地、触摸和步进电压;它可以更精确地确定一年内土壤的深度。研究人员为专家系统提供的解决方案的验证添加了图形描述建模结果的选项。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence System to Determine Electrical Safety Level of Power Generation Facilities
The article presents a system of artificial intelligence, made for expert assessment of electrical safety level at power generation facilities. This information system, based on fuzzy logic methods, can more precisely calculate electrical resistivity of the soil in specific conditions. The researchers describe the technique of forming a database and a knowledge base of the expert system including a set of models and algorithms. The article provides a detailed description of fuzzy models of electrical resistivity $\rho$ for different types of soil depending on its humidity, salinity and temperature (both in positive and negative ranges). It offers fuzzy climatic models of soil in a specific area, taking into account changes of soil $\rho$ deep into the ground throughout a year. The created artificial intelligence system evaluates the security level of electric power facilities on the basis of different algorithms, used to calculate grounding, touch and step voltages; it can more precisely determine soil $\rho$ deep into the ground during a year. The researchers add an option of graphic depiction of modeling results for the validation of the solutions, offered by the expert system.
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