Abstract

In the Internet of Things (IoT), the online performance of many online services is determined by their distribution resources, which are connected to many different devices. The expected performance of a resource service primarily depends on the optimal use of the service in satisfying end-to-end quality requirements to support its successful execution. Therefore, the performance of a resource service is dynamic and should be discovered as a benchmark to detect a performance anomaly online. A performance anomaly is referred to as a business anomaly because it depends on its usage. The performance is measured by the quality of service (QoS) that is possessed by a resource service. In this paper, an approach based on the resource service QoS is proposed to detect a business anomaly via mining business process data in collaborative tasks in the IoT. First, a resource-service chain (RSC) is considered to be an analysis object because resource services are employed as a “service flow” by a business process. The similarity between any two RSCs is measured according to the QoS indicator values of resource services. Based on the similarity, a clustering algorithm is presented to resolve clustering centers that are considered to be QoS benchmarks. Second, according to the QoS benchmarks of RSCs, the thresholds of QoS indicators of a business anomaly are determined. Third, an algorithm is presented to detect anomalies of the business process. Finally, the proposed approach is illustrated by a simulation experiment. The experimental results show that the approach can be used to effectively detect a business anomaly online.

Highlights

  • The Internet of Things (IoT) provides a new way for a wide range of manufacturing resources to optimize management and dynamic scheduling [1]

  • The detecting method that we propose is referred to as the DBAQoSB (Detecting Business Anomaly method of resource-service chain (RSC) based on quality of service (QoS) Benchmark)

  • A method for detecting a business anomaly based on the QoS benchmark DBAQoSB is presented for a collaborative task in the IoT environments in this paper

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Summary

INTRODUCTION

The Internet of Things (IoT) provides a new way for a wide range of manufacturing resources to optimize management and dynamic scheduling [1]. In [2], features of resource services in an RSC, as a QoS indicator, are selected to identify key RSCs. In [20], a similar QoS evaluation model is used to resolve the optimal compositions of resource services within a business process. In [8], dynamic QoS anomaly prediction to predict network anomalies, such as latency and backlog, is discussed; it is not applied to predict business anomalies Though in these methods, the QoSs of single resource service are usually used to detect various anomalies, multiple QoS-based sequence of resource services are rarely not considered. For the workflow Wf and a set of resource service R, we want to resolve the QoS benchmark of an RSC QoSB by analyzing business data DB and resolve the set of business anomalies AbnormalIndex.

SIMILARITY COMPARISON OF RSCs
DYNAMIC CALIBRATION OF THRESHOLD
CONCLUSION
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