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Kinetic Mechanical Engineering, 2020, 1(1); doi: 10.38007/KME.2020.010101.

Design and Implementation of Automatic Control Acquisition System under Big Data Background

Author(s)

Hedjazi Mostafa

Corresponding Author:
Hedjazi Mostafa
Affiliation(s)

Univ Batna2, Comp Sci Dept, LaSTIC Lab, Batna 05078, Algeria

Abstract

In recent years, with the popularization of the computer and the application of automatic control system, the production efficiency has been greatly improved, but in the manufacturing industry, the information technology is relatively backward, rarely to the production activities of information processing. This paper mainly studies the design and implementation of automatic control acquisition system under the background of big data. In this paper, the overall design of the remote monitoring system for sewage treatment is completed by combining the functional requirements of the monitoring system for small sewage treatment plants. The whole monitoring system is divided into three modules: on-site execution module, data transmission module and client monitoring module. In the data acquisition module, five sub-functions are designed: data acquisition, real-time data, data statistics, historical data query, report forms and printing. Through the experimental test, we can know that the automatic control and collection system designed in this paper can meet the daily use needs of sewage treatment plant.

Keywords

Big Data, Automatic Control, Data Acquisition, System Design

Cite This Paper

Hedjazi Mostafa. Design and Implementation of Automatic Control Acquisition System under Big Data Background. Kinetic Mechanical Engineering (2020), Vol. 1, Issue 1: 1-9. https://doi.org/10.38007/KME.2020.010101.

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