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Ensemble Dual Recursive Learning Algorithms for Identifying Custom Tanks Flow with Leakage

机译:合奏双重递归学习算法,用于识别自定义坦克流动泄漏

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In industrial process, pipes and tank may leak and sensors may have biased since corrosion, measuring noise and instrument faults exist. In order to maintain production and to prevent accident from happen it is crucial to develop reliable method of a nalyses of flammable gas release and dispersion. Relative mass release of the leakage is introduced as the input for the simulation model and the data from the simulation model is taken at real time (on-line) to feed into the recursive algorithms. The objective of this paper is to introduce a combination of advantages of different algorithm scheme into one learning algorithm. For this purpose, three models is developed, first using recursive least square algorithm (RLS), second using recursive instrument variable (RIV) algorithm and lastly using combination of this two algorithms. This paper proposed that, combination of two algorithms into one learning algorithm for predicting mass flow rate of a flow with leakage resulting in a better mass prediction error as compared to a model with single learning algorithm.
机译:在工业过程中,管道和罐可能会泄漏,传感器可能已经偏置,因为存在腐蚀,测量噪声和仪器故障。为了维持生产并防止事故发生,开发可燃气体释放和分散的不稳定方法至关重要。引入泄漏的相对质量释放作为模拟模型的输入,并且来自仿真模型的数据是实时(在线)拍摄的,以进入递归算法。本文的目的是将不同算法方案的优点与一种学习算法引入了一种学习算法的结合。为此目的,开发了三种模型,首先使用递归最小二乘算法(RLS),第二种使用递归仪器变量(RIV)算法,最后使用这两个算法的组合。本文提出,与具有单一学习算法的模型相比,两种算法组合到一种用于预测具有泄漏的流量的质量流量的一种学习算法。

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