基于模糊聚类算法的油库火灾风险关键因素识别

Shuyi Xie, Shaohua Dong, Guangyu Zhang
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引用次数: 2

摘要

随着国民经济的快速发展,对石油的需求量越来越大。为了满足日益增长的能源需求,中国近年来建立了一批油库,最大的油库容量达数千万立方米。由于储油介质的易燃易爆性质,随着储油罐区储罐容量的增大,油库区发生火灾的风险急剧增加。油库的集约化和大型储油罐的发展,在给国家油库带来便利的同时,也带来了许多灾难性的后果。近年来,油库多次发生火灾、爆炸事故,造成重大人员伤亡和财产损失,严重危及生态环境和公共安全。在构建油库火灾风险指标体系的基础上,引入模糊c均值算法和模糊最大支持树聚类算法。通过两种模糊聚类数学模型,确定了所建立指标体系中的关键因素。首先,采用专家打分法对油库火灾风险指标体系中的指标进行评价,通过对专家意见的模糊分析,构建油库火灾风险因素的重要程度评价矩阵;然后,采用模糊c均值算法(FCM)和模糊聚类树算法对各风险指标进行聚类,识别油库火灾风险的关键因素;通过对两种模糊聚类方法的结果进行对比分析和交叉验证,保证了识别结果的准确性。最后,以某油库为例,发现被动防火能力和应急救援能力是油库火灾风险指标中需要关注的关键因素。本文采用的模糊聚类算法可以将专家的主观评价数字化,从而减少人为主观因素的影响。此外,采用两种模糊聚类算法对油库火灾风险的关键因素进行分析和验证,保证了聚类结果的可靠性。关键因素的识别可以使管理者提前预测油库火灾风险防控过程中的高危因素,从而采取相应的预防措施,最大限度地降低油库火灾风险,保证油库的安全运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Key Factors of Fire Risk of Oil Depot Based on Fuzzy Clustering Algorithm
With the rapid development of the national economy, the demand for oil is increasing. In order to meet the increasing energy demand, China has established a number of oil depot in recent years, whose largest capacity reaching up to tens of millions of cubic meters. Due to the flammable and explosive nature of the stored medium, the risk of fire in the oil depot area has increased dramatically as the tank capacity of the storage tank area has increased. The intensification of the oil depot and the development of large-scale oil storage tanks have brought convenience to the national oil depot, but also brought many catastrophic consequences. In recent years, there have been many fires and explosions in the oil depot, causing major casualties and property losses, which seriously endangered the ecological environment and public safety. Based on the constructed oil depot fire risk index system, the fuzzy C-means algorithm (FCM) and fuzzy maximum support tree clustering algorithm is introduced. Through the two fuzzy clustering mathematical models, key factors in the established index system are identified. Firstly, the expert scoring method is used to evaluate the indicators in the oil depot fire risk index system, and the importance degree evaluation matrix of oil depot fire risk factors is constructed through the fuzzy analysis of expert comments. Then, the fuzzy C-means algorithm (FCM) and the fuzzy clustering tree algorithm are used to cluster the various risk indicators, and the key factors of the oil depot fire risk are identified. Through the comparative analysis and cross-validation of the results of the two fuzzy clustering methods, the accuracy of the recognition results is ensured. Finally, using an oil depot as a case study, it is found that passive fire prevention capability and emergency rescue capability are key factors that need to be paid attention to in the oil depot fire risk index. The fuzzy clustering algorithm used in this paper can digitize the subjective comments of experts, thus reducing the influence of human subjective factors. In addition, by using two fuzzy clustering algorithms to analyze and verify the key factors of the oil depot fire risk, the reliability of the clustering results is guaranteed. The identification of key factors can enable managers to predict high-risk factors in advance in the fire risk prevention and control process of the oil depot, so as to adopt corresponding preventive measures to minimize the fire risk in the oil depot, and ensure the safety of the operation of the oil depot.
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