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An Ingestion Based Analytics Framework for Complex Event Processing Engine in Internet of Things

机译:物联网中复杂事件处理引擎的基于摄取的分析框架

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Internet of Things (IoT) is the new paradigm that connects the physical world with the virtual world. The interconnection is generated by the optimal deployment of sensors which continuously generate data and streams it to a data store. The concept drift and data drift are integral characteristics of IoT data. Due to this nature, there is a need to process data from various sources and decipher patterns in them. This process of detecting complex patterns in data is called Complex Event Processing which provides near real-time analytics for various IoT applications. Current CEP deployments have a inherent capability to react to events instantaneously. This leaves room to develop CEPs which are proactive in nature which can take the help of various machine learning (ML) models to work together with CEP. In this paper, the usage of Complex Event Processing (CEP) engine is exhibited that allows the inference of new scenarios out of incoming traffic data. This conversion of historical data into actionable knowledge is undertaken by a Long Short Term Memory (LSTM) model so as to detect the occurrence of an event well before time. The experimental results suggest the rich abilities of Deep Learning to predict events proactively with minimal error. This allows to deal with uncertainties and steps for significant improvement can be made in advance.
机译:物联网(IoT)是将物理世界与虚拟世界连接起来的新范例。互连是通过传感器的最佳部署而产生的,这些传感器可以连续生成数据并将其流传输到数据存储。概念漂移和数据漂移是物联网数据的整体特征。由于这种性质,需要处理来自各种来源的数据并解密其中的模式。这种检测数据中复杂模式的过程称为“复杂事件处理”,可为各种物联网应用程序提供近乎实时的分析。当前的CEP部署具有对事件立即做出反应的固有能力。这为开发本质上具有前瞻性的CEP留下了空间,这些CEP可以借助各种机器学习(ML)模型与CEP一起工作。在本文中,展示了复杂事件处理(CEP)引擎的用法,该引擎允许从传入的流量数据中推断出新场景。将历史数据转换为可操作的知识的过程是通过长期短期记忆(LSTM)模型进行的,以便能够在时间之前检测到事件的发生。实验结果表明,深度学习具有以最小的错误主动预测事件的丰富功能。这样就可以处理不确定性,并且可以提前进行重大改进的步骤。

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