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首页> 外文期刊>Journal of loss prevention in the process industries >Risk assessment of an oil depot using the improved multi-sensor fusion approach based on the cloud model and the belief Jensen-Shannon divergence
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Risk assessment of an oil depot using the improved multi-sensor fusion approach based on the cloud model and the belief Jensen-Shannon divergence

机译:基于云模型的改进的多传感器融合方法和詹森 - 香农分歧,利用改进的多传感器融合方法风险评估

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摘要

At present, enterprises have introduced the Internet of Things (IoT) technology to monitor and evaluate the safety status of oil depots, allowing for the collection of a substantial amount of multi-source monitoring data from factories. However, sensor monitoring data is often inaccurate and fuzzy. To improve the reliability of risk prevention and control based on multi-source sensor data, this study proposed a CM-BJS-DS model based on the cloud model (CM), the Belief Jensen-Shannon (BJS) divergence and Dempster-Shafer(D-S) evidence theory. First, the relevant evaluation factors of the accident and their threshold intervals of different risk levels were determined, and the fuzzy cloud membership functions (FCMFs) corresponding to different risk levels were constructed. Then, the sensor monitoring data were processed using the correlation measurement of the FCMF, and basic probability assignments (BPAs) were generated under the risk assessment frame of discernment. Finally, the BPAs were pre-processed by the improved evidence fusion model and the accident risk level was evaluated. Based on the monitoring data, a case study was performed to assess the risk level of vapor cloud explosion (VCE) accidents due to liquid petroleum gas (LPG) tank leaks. The results show that the proposed method presents the following characteristics: (i) The BPAs were constructed based on the monitoring data, which reduced the subjectivity of the construction process; (ii) Compared with single sensors, the multiple sensor fusion evaluation yielded more specific results; (iii) When dealing with highly conflicting evidence, the evaluation results of the proposed method exhibited a higher belief degree. This method can be used as a decision-making tool to detect potential risks and identify critical risk spots to improve the specificity and efficiency of emergency response.
机译:目前,企业介绍了物联网(物联网)技术来监测和评估油库的安全状况,允许收集来自工厂的大量多源监测数据。但是,传感器监控数据通常不准确和模糊。为了提高基于多源传感器数据的风险防治的可靠性,本研究提出了基于云模型(CM)的CM-BJS-DS模型,信仰Jensen-Shannon(BJS)发散和Dempster-Shifer( DS)证据理论。首先,确定了事故的相关评价因素及其不同风险水平的阈值间隔,构建了对应于不同风险水平的模糊云隶属函数(FCMF)。然后,使用FCMF的相关测量处理传感器监视数据,并在风险评估帧的识别框架下产生基本概率分配(BPA)。最后,通过改进的证据融合模型预先处理BPA,评估事故风险水平。根据监测数据,进行案例研究以评估由于液体石油气(LPG)罐泄漏的蒸气云爆炸(VCE)事故的风险水平。结果表明,该方法提出了以下特征:(i)基于监测数据构建BPA,这减少了施工过程的主体性; (ii)与单个传感器相比,多个传感器融合评估产生了更具体的结果; (iii)在处理高度冲突的证据时,所提出的方法的评估结果表现出更高的信念。该方法可用作决策工具,以检测潜在的风险,并确定临界风险点,以提高应急响应的特殊性和效率。

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