scholarly journals Big Data Analysis of Water Quality of Secondary Water Supply

2019 ◽  
Vol 154 ◽  
pp. 744-749
Author(s):  
Liu Ying ◽  
Shu Shihu ◽  
Wang Hongyu ◽  
Zhao Xin ◽  
Yan Qi
2020 ◽  
Vol 2020 ◽  
pp. 1-12
Author(s):  
Bo Zhao ◽  
Xiang Li ◽  
Jiayue Li ◽  
Jianwen Zou ◽  
Yifan Liu

In order to improve the credibility of big data analysis platform’s results in IoT, it is necessary to improve the quality of IoT data. Many detection methods have been proposed to filter out incredible data, but there are certain deficiencies that performance is not high, detection is not comprehensive, and process is not credible. So this paper proposes an area-context-based credibility detection method for IoT data, which can effectively detect point anomalies, behavioral anomalies, and contextual anomalies. The performance of the context determination and the data credibility detection of the device satisfying the area characteristics is superior to the similar algorithms. As the experiments show, the proposed method can reach a high level of performance with more than 97% in metrics, which can effectively improve the quality of IoT data.


2021 ◽  
Vol 22 (7) ◽  
pp. 1563-1573
Author(s):  
Wu-Chih Hu Wu-Chih Hu ◽  
Hsin-Te Wu Wu-Chih Hu ◽  
Jun-We Zhan Hsin-Te Wu ◽  
Jing-Mi Zhang Jun-We Zhan


Author(s):  
Rajanala Vijaya Prakash

The data management industry has matured over the last three decades, primarily based on Relational Data Base Management Systems (RDBMS) technology. The amount of data collected and analyzed in enterprises has increased several folds in volume, variety and velocity of generation and consumption, organizations have started struggling with architectural limitations of traditional RDBMS architecture. As a result a new class of systems had to be designed and implemented, giving rise to the new phenomenon of “Big Data”. The data-driven world has the potential to improve the efficiencies of enterprises and improve the quality of our lives. There are a number of challenges that must be addressed to allow us to exploit the full potential of Big Data. This article highlights the key technical challenges of Big Data.


Author(s):  
Rishi Bajpai ◽  
Rajesh Singh ◽  
Anita Gehlot ◽  
Pravin Singh ◽  
Praveen Patel

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