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Parzen window distribution as new membership function for ANFIS algorithm-Application to a distillation column faults prediction

机译:Parzen窗口分布作为ANFIS算法的新隶属函数-在精馏塔故障预测中的应用

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In the domain of chemical engineering, the distillation column is one of the most important reactors in the operations unit. These chemical reactors can represent high maintenance costs and can disrupt production for long periods of time in addition to having risks of disastrous impacts. Unfortunately, preventive maintenance is both expensive and insufficient. Thus, the optimal solution is predictive maintenance; modeling a pre-crash control system that enables a greater comprehension of the future path of reactors. This research paper will present the Adaptive Neuro Fuzzy Inference System (ANFIS) as a superior technique for forecasting the future path of the distillation column system, then will propose Parzen windows distribution as a new membership function to improve ANFIS performance. Improvements can result from reducing consumption time and making the process more reflective of real-time application or by minimizing the Root Means Square Error (RMSE) between real and predictive data. The methodology was tested on real data obtained from a distillation column with the aim of forecasting potential failures in the automated continuous distillation process. A comparative study was necessary for the selection of the best membership function to be used for the ANFIS algorithm when applied to the distillation column data. Results reflected the effectiveness of the proposed technique and the Parzen windows was the smallest RMSE for several signals.
机译:在化学工程领域,蒸馏塔是操作单元中最重要的反应器之一。这些化学反应器可能会带来高昂的维护成本,并且除了可能造成灾难性影响外,还会长时间中断生产。不幸的是,预防性维护既昂贵又不足。因此,最佳解决方案是预测性维护。对碰撞前的控制系统进行建模,以更好地理解反应堆的未来发展路径。本研究论文将提出自适应神经模糊推理系统(ANFIS)作为预测蒸馏塔系统未来路径的一种高级技术,然后提出Parzen窗分布作为提高ANFIS性能的新成员函数。可以通过减少消耗时间并使过程更实时地反映实时应用,或通过最小化实际数据与预测数据之间的均方根误差(RMSE)来获得改进。该方法在从蒸馏塔获得的真实数据上进行了测试,目的是预测自动化连续蒸馏过程中的潜在故障。当施加到所述蒸馏塔的数据的比较研究是必要的最好的隶属函数将被用于所述ANFIS算法的选择。结果反映了所提出技术的有效性,Parzen窗口是几种信号的最小RMSE。

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