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Advance Predictions of critical digressions in a noisy industrial process- performance of Extreme Learning Machines versus Artificial Neural Networks

机译:嘈杂的工业过程中关键离题的超前预测-极限学习机与人工神经网络的性能比较

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Manmade continuous-time systems like vehicles, grids and industrial processes are susceptible to adverse digressions in performance which can result in losses to severe breakdowns. Traditionally, emergence of faults in systems was detected by algorithms based on specific sensory signals responding to the incipience of the fault. However, the fault itself is engendered by the fact that certain specific system state parameters acquire a specific combinatorial relationship preceding the fault, thus if the acquisition of this relationship can be detected immediately on formation, neutralization of the fault can be effected early – something particularly relevant to critical systems. The advent of the industrial IoT has made real time systemic data (state parameters) across a chain of processes available at computing platforms, and potentially enabled data-based algorithms – specifically Artificial Neural Networks – to predict such adverse digressions before actual initiation. However, most manmade systems are subject to drift, due to which ANNs trained on data acquired over a certain operational period lose accuracy going forward. Adaptive Critic systems are designed to enable ANNs to neutralize this drift effect, but these need frequent retraining hitting the constraint on computational time. Extreme Learning Machines have emerged as alternatives to ANNs with training times less by orders of magnitude, but their accuracy has to be tested against real noisy industrial data. This work investigates the accuracy of ELM performance versus that of ANNs for such data, and synthesizes ensembles of ELMs to provide accuracy at similar levels as ANNs. This facilitates the incorporation of ELM ensembles into Adaptive Critic frameworks for accurate pre-initiation prediction of faults and related control functions.
机译:诸如车辆,电网和工业流程之类的人造连续时间系统容易受到性能不利影响的损害,从而可能导致严重故障的损失。传统上,系统中的故障是通过基于响应故障发生的特定传感信号的算法来检测的。但是,故障本身是由以下事实引起的:某些特定的系统状态参数在故障之前获得了特定的组合关系,因此,如果可以在形成后立即检测到该关系,则可以尽早进行故障的中和-特别是某些情况与关键系统有关。工业物联网的出现使计算平台上可用的整个过程链上的实时系统数据(状态参数)和潜在启用的基于数据的算法(尤其是人工神经网络)能够在实际启动之前预测此类不利偏差。但是,大多数人造系统都可能会发生漂移,因此,在一定操作期内对经过训练的数据进行训练的人工神经网络将失去准确性。自适应批判系统旨在使人工神经网络抵消这种漂移效应,但是这些系统需要频繁的重新训练,从而影响了计算时间。极限学习机已经成为人工神经网络的替代产品,其训练时间缩短了几个数量级,但必须根据实际的嘈杂的工业数据测试其准确性。这项工作调查了ELM性能与ANN的准确性,并综合了ELM的集合以提供与ANN相似的准确性。这有助于将ELM集成器集成到Adaptive Critic框架中,以进行故障和相关控制功能的准确的预初始化预测。

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