Abstract

The architecture design of industrial data analytics system addresses industrial process challenges and the design phase of the industrial Big Data management drivers that consider the novel paradigm in integrating Big Data technologies into industrial cyber-physical systems (iCPS). The goal of this paper is to support the design of analytics Big Data solutions for iCPS for the modeling of data elements, predictive analysis, inference of the key performance indicators, and real-time analytics, through the proposal of an architecture that will support the integration from IIoT environment, communications, and the cloud in the iCPS. An attribute driven design (ADD) approach has been adopted for architectural design gathering requirements from smart production planning, manufacturing process monitoring, and active preventive maintenance, repair, and overhaul (MRO) scenarios. Data management drivers presented consider new Big Data modeling analytics techniques that show data is an invaluable asset in iCPS. An architectural design reference for a Big Data analytics architecture is proposed. The before-mentioned architecture supports the Industrial Internet of Things (IIoT) environment, communications, and the cloud in the iCPS context. A fault diagnosis case study illustrates how the reference architecture is applied to meet the functional and quality requirements for Big Data analytics in iCPS.

Highlights

  • The Internet of Things (IoT) has been widely adopted by the industry [1], and its impact is transforming manufacturing

  • This paper aims at presenting an improvement in the design of Big Data analytics solutions for industrial cyber-physical systems (iCPS), and to provide support for the modeling of data elements, predictive analysis, inference of the key performance indicators, and real-time analytics, through the proposal of an architecture that will support the integration from Industrial Internet of Things (IIoT) environment, communications, and the cloud in the iCPS

  • This paper focuses on an architectural design that supports the integration of the IIoT environment, communications, and the cloud, in an analytics Big Data for data obtained from iCPS

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Summary

Introduction

The Internet of Things (IoT) has been widely adopted by the industry [1], and its impact is transforming manufacturing. This paper aims at presenting an improvement in the design of Big Data analytics solutions for iCPS, and to provide support for the modeling of data elements, predictive analysis, inference of the key performance indicators, and real-time analytics, through the proposal of an architecture that will support the integration from IIoT environment, communications, and the cloud in the iCPS. It presents the design of software-based solutions for iCPS with a case study for the fault diagnosis system domain that illustrates Big Data analytics on industrial cyber-physical systems. Key performance indicator Manufacturing execution system Manufacturing information systems Message queue telemetry transport Maintenance, repair and overhaul

Related Works
Industrial Big Data Design Architecture for Analytics
Data Management Architecture
Infrastructure Layer
Monitoring Layer
Presentation Layer
Component Deployment
Case Study
Real-Time Equipment Monitoring
Reference Architectures in Industrial Contexts
Big Data Analytics Architectures Design Applied in iCPS Contexts
Research Limitations
Further Work
Conclusions
Full Text
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