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Study on Data Control System Design Method with Complex Data-Algorithm Data Processing  

Kim, Min Wook ((주)에스이랩 부설연구소)
Park, Yeon Gu ((주)에스이랩)
Yi, Jonghyuk ((주)에스이랩)
Lee, Jeong-Deok ((주)에스이랩 부설연구소)
Publication Information
Journal of Satellite, Information and Communications / v.10, no.3, 2015 , pp. 11-15 More about this Journal
Abstract
In this study, we present the architecture design of data control system in water hazard information platform with analyzing the complexity of the data processing. Generally, data control systems in data collection and analysis platforms base on the constant data-algorithm data processing meaning that data processing between data and algorithm is fixed. But the number of data processing in data control system is rapidly increasing because of increasing of complexity of system. To hold down the number of data processing, dynamic data-algorithm data processing is able to be applied to data control system. After comparison each data-algorithm data processing method, we suggest design method of the data control system optimizing water hazard information platform.
Keywords
Complex Data-Algorithm Data Processing; Data Control System Design; Water Hazard Information Platform;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
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