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Online Updating Belief Rule Based System For Pipeline Leak Detection Under Expert Intervention

机译:专家干预下基于在线更新信念规则的管道泄漏检测系统

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A belief rule base inference methodology using the evidential reasoning approach (RIMER) has been developed recently, where a new belief rule base (BRB) is proposed to extend traditional IF-THEN rules and can capture more complicated causal relationships using different types of information with uncertainties, but these models are trained off-line and it is very expensive to train and re-train them. As such, recursive algorithms have been developed to update the BRB systems online and their calculation speed is very high, which is very important, particularly for the systems that have a high level of real-time requirement. The optimization models and recursive algorithms have been used for pipeline leak detection. However, because the proposed algorithms are both locally optimal and there may exist some noise in the real engineering systems, the trained or updated BRB may violate some certain running patterns that the pipeline leak should follow. These patterns can be determined by human experts according to some basic physical principles and the historical information. Therefore, this paper describes under expert intervention, how the recursive algorithm update the BRB system so that the updated BRB cannot only be used for pipeline leak detection but also satisfy the given patterns. Pipeline operations under different conditions are modeled by a BRB using expert knowledge, which is then updated and fine tuned using the proposed recursive algorithm and pipeline operating data, and validated by testing data. All training and testing data are collected from a real pipeline. The study demonstrates that under expert intervention, the BRB expert system is flexible, can be automatically tuned to represent complicated expert systems, and may be applied widely in engineering. It is also demonstrated that compared with other methods such as fuzzy neural networks (FNNs), the RIMER has a special characteristic of allowing direct intervention of human experts in deciding the internal structure and the parameters of a BRB expert system.
机译:最近开发了使用证据推理方法(RIMER)的信念规则库推理方法,其中提出了新的信念规则库(BRB)来扩展传统的IF-THEN规则,并可以使用不同类型的信息来捕获更复杂的因果关系,不确定性,但是这些模型是离线训练的,训练和重新训练它们非常昂贵。因此,已经开发了递归算法来在线更新BRB系统,并且其计算速度非常高,这非常重要,特别是对于具有高度实时要求的系统而言。优化模型和递归算法已用于管道泄漏检测。但是,由于所提出的算法都是局部最优的,并且在实际的工程系统中可能存在一些噪声,因此经过训练或更新的BRB可能会违反某些应遵循的运行模式,从而导致管道泄漏。这些模式可以由人类专家根据一些基本的物理原理和历史信息来确定。因此,本文描述了在专家干预下递归算法如何更新BRB系统,以使更新后的BRB不仅可以用于管道泄漏检测,而且可以满足给定的模式。 BRB使用专家知识对不同条件下的管道运行进行建模,然后使用建议的递归算法和管道运行数据对其进行更新和微调,并通过测试数据进行验证。所有培训和测试数据都是从真实管道中收集的。研究表明,在专家干预下,BRB专家系统具有灵活性,可以自动调整以表示复杂的专家系统,并且可以在工程中广泛应用。还证明,与诸如模糊神经网络(FNN)之类的其他方法相比,RIMER具有一个特殊的特征,即允许人类专家直接干预来确定BRB专家系统的内部结构和参数。

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