Abstract

Cloud services are proposed for real-time data acquisition, data classification, data processing and decision making, which are highly interconnected services for effective condition monitoring of electrical machines. The proposed Software as a Service, Storage as a Service and Platform as a Service layers address the challenges of data storage and scalability while making analysis on the cluster of machines in an Industrial Environment. An experimental setup consisting of two DC motors coupled to AC Generator operating at different locations is considered to evolve the proposed model for effective integrated monitoring and decision making. This cloud-based vibration monitoring model provides services for data acquisition from the IoT devices mounted on the shafts of the DC motors, data storage to store the enormous amount of acquired signal data from multiple sensors, data classification of vibration signals for effective statistical analysis to estimate adaptive cluster of thresholds and appropriate decision-making services on demand over the Internet to utilize the reliable service of the machines in a persistent way. The computational engine will do inherent statistical analysis of the vibration signals to estimate the cluster of thresholds adaptive to various operating conditions. The services have been deployed without any limitation in a cloud environment and the industrial applications can share information using the deployed services from anywhere on demand basis. The deployed cloud service for the enhanced statistical classification algorithm eliminates the false identification of failures, which not only increase the availability of machines for intended operations but also reduce the maintenance cost. The resulting threshold values are compared with that of the vibration analysis carried out on the machine beds locally using myRIO for data acquisition in LabVIEW and the proposed model ensures the integrity in appropriate decision making with assured scalability.

Highlights

  • The electrical machines find wide and crucial applications in various industries and power plants

  • The threshold values estimated using cloud services are compared with that of the vibration analysis carried out on the machine beds locally using myRIO for data acquisition in LabVIEW ensures the integrity of the cloud-based model with assured scalability

  • The DC motor shaft vibration pattern has been examined by acquiring the vibration signal through IoT2040 gateway using Python interface and myRIO using LabVIEW interface considering the same machine operating conditions

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Summary

Introduction

The electrical machines find wide and crucial applications in various industries and power plants. In the late 90’s, very few online condition monitoring applications came into existence with the primary motive to collect vibration signals from various machines operating at different locations, but the analysis has been made considering each local operating environment to make effective decisions This methodology leads to better preventive maintenance, but predictive maintenance is still a challenge. The proposed cloud based condition monitoring system collects the vibration data of machines from various locations and processes the same in the cloud by comparing the data of one machine with the data of other similar machines for reliable and effective decision making These features of interfaces are underlying factors for rapid adoption of cloud computing services in the condition monitoring applications

State of the art
Cloud services for effective condition monitoring
Proposed Cloud-based condition monitoring model: a layered approach
Creating, uploading and registering Cloud services for condition monitoring
Configuring condition monitoring services in Django Web framework
Templates
Deployment of vibration analysis based condition monitoring on Google Cloud platform
Execution of the application in the local development environment
Deploying the application on the Google App Engine Standard Environment
Statistical classification algorithm: computational engine
Integration and evaluation of the Cloud services based vibration analytics algorithm
From Starting to No Load Speed – Standalone Condition
From starting to no load speed with external disturbance
Load Changes at Standalone Condition
Results and discussion
Conclusion
Full Text
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