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Predicting complex events for pro-active IoT applications

机译:预测Pro-Active IoT应用程序的复杂事件

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The widespread use of IoT devices has opened the possibilities for many innovative applications. Almost all of these applications involve analyzing complex data streams with low latency requirements. In this regard, pattern recognition methods based on CEP have the potential to provide solutions for analyzing and correlating these complex data streams in order to detect complex events. Most of these solutions are reactive in nature as CEP acts on real-time data and does not exploit historical data. In our work, we have explored a proactive approach by exploiting historical data using machine learning methods for prediction with CEP. We propose an adaptive prediction algorithm called Adaptive Moving Window Regression (AMWR) for dynamic IoT data and evaluated it using a real-world use case. Our proposed architecture is generic and can be used across different fields for predicting complex events.
机译:IOT设备的广泛使用已开辟了许多创新应用的可能性。几乎所有这些应用程序都涉及分析具有低延迟要求的复杂数据流。在这方面,基于CEP的模式识别方法具有提供用于分析和关联这些复杂数据流的解决方案以检测复杂事件。大多数这些解决方案本质上是由于CEP在实时数据上作用并且不利用历史数据。在我们的工作中,我们通过利用CEP预测的机器学习方法利用历史数据探索了主动方法。我们提出了一种称为自适应移动窗口回归(AMWR)的自适应预测算法,用于动态IOT数据,并使用真实用例评估它。我们所提出的架构是通用的,可以在不同的字段中使用,以预测复杂事件。

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