Scalability Testing Approach for Internet of Things for Manufacturing SQL and NoSQL Database Latency and Throughput

Author:

Gamero David1,Dugenske Andrew2,Saldana Christopher1,Kurfess Thomas1,Fu Katherine1

Affiliation:

1. Georgia Institute of Technology George W. Woodruff School of, Mechanical Engineering, , 801 Ferst Drive, Atlanta, GA 30332

2. Georgia Institute of Technology Georgia Tech Manufacturing Institute, , 813 Ferst Drive, Atlanta, GA 30332

Abstract

Abstract The proliferation of low-cost sensors and industrial data solutions has continued to push the frontier of manufacturing technology. Machine learning and other advanced statistical techniques stand to provide tremendous advantages in production capabilities, optimization, monitoring, and efficiency. The tremendous volume of data gathered continues to grow, and the methods for storing the data are critical underpinnings for advancing manufacturing technology. This work aims to investigate the ramifications and design tradeoffs within a decoupled architecture of two prominent database management systems (DBMS): sql and NoSQL. A representative comparison is carried out with Amazon Web Services (AWS) DynamoDB and AWS Aurora MySQL. The technologies and accompanying design constraints are investigated, and a side-by-side comparison is carried out through high-fidelity industrial data simulated load tests using metrics from a major US manufacturer. The results support the use of simulated client load testing for comparing the latency of database management systems as a system scales up from the prototype stage into production. As a result of complex query support, MySQL is favored for higher-order insights, while NoSQL can reduce system latency for known access patterns at the expense of integrated query flexibility. By reviewing this work, a manufacturer can observe that the use of high-fidelity load testing can reveal tradeoffs in IoTfM write/ingestion performance in terms of latency that are not observable through prototype-scale testing of commercially available cloud DB solutions.

Funder

U.S. Department of Energy

Publisher

ASME International

Subject

Industrial and Manufacturing Engineering,Computer Graphics and Computer-Aided Design,Computer Science Applications,Software

Reference33 articles.

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2. Industrial Big Data as a Result of IoT Adoption in Manufacturing;Mourtzis,2016

3. A Survey on MQTT: A Protocol of Internet of Things (IoT);Soni,2017

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