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Probabilistic Hesitant Fuzzy Methods for Prioritizing Distributed Stream Processing Frameworks for IoT Applications

机译:用于优先考虑IOT应用程序的分布式流处理框架的概率犹豫模糊方法

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Distributed stream processing frameworks (DSPFs) are the vital engine, which can handle real-time data processing and analytics for IoT applications. How to prioritize DSPFs and select the most suitable one for special IoT applications is an open issue. To help developers of IoT applications to solve this complex issue, a novel probabilistic hesitant fuzzy multicriteria decision making (MCDM) model is put forward in this paper. To characterize the requirements for large-scale IoT data stream processing, a novel evaluation criteria system including qualitative and quantitative criteria is established. To accurately model the collective opinions from skilled developers and consider their psychological distance, the definition of probabilistic hesitant fuzzy sets (PHFSs) is used. To derive the importance degrees of criteria, a novel probabilistic hesitant fuzzy best-worst (PHFBW) method is proposed based on the score value. To prioritize the DSPFs and choose the most suitable one, a novel probabilistic hesitant fuzzy MULTIMOORA method is put forward. Finally, a practical case composed of four Apache stream processing frameworks, namely, Storm, Flink, Spark, and Samza, is studied. The obtained results indicate that throughput, latency, and reliability are considered to be the three most important criteria, and Flink is the most suitable stream framework.
机译:分布式流处理框架(DSPF)是重要引擎,可以处理IOT应用程序的实时数据处理和分析。如何优先考虑DSPFS并选择最适合特殊的IOT应用程序的一个是一个开放问题。为了帮助IOT应用程序的开发人员来解决这一复杂问题,本文提出了一种新颖的概率犹豫不决的模糊多种机构决策(MCDM)模型。为了表征大规模物联网数据流处理的要求,建立了包括定性和定量标准的新型评估标准系统。为了准确地模拟来自技术开发人员的集体意见并考虑其心理距离,使用概率犹豫不决的模糊套(PHFS)的定义。为了得出重要性标准,基于得分值提出了一种新颖的概率犹豫不决的最差最差(PHFBW)方法。为了优先考虑DSPFS并选择最合适的DSPF,提出了一种新颖的概率犹豫不决的模糊多因素方法。最后,研究了由四个Apache流处理框架组成的实际情况,即风暴,传递,火花和Samza。所获得的结果表明,吞吐量,延迟和可靠性被认为是三个最重要的标准,并且传递是最合适的流框架。

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