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دسته بندی:
داده های بزرگ - big data
سال انتشار:
2020
عنوان انگلیسی مقاله:
Cloud assisted big data information retrieval system for critical data supervision in disaster regions
ترجمه فارسی عنوان مقاله:
سیستم داده بازیابی اطلاعات داده های بزرگ به کمک ابر برای نظارت داده های حیاتی در مناطق بحرانی
منبع:
Sciencedirect - Elsevier - Computer Communications, 151 (2020) 548-555: doi:10:1016/j:comcom:2019:11:028
نویسنده:
Chunmei Wang a,∗, Fang Qin b, Dinesh Jackson Samuel R. c
چکیده انگلیسی:
Presently, the advancement of Cloud Assisted Big Data information retrieval system(CABDIRS) for heterogeneous
data management plays a significant role in disaster management framework. In the recent past,
facilitating disaster related activities such as Emergency information collection, sharing of exposed insights
data about the region, and integration with local groups as well as global scale across various communities’
need assistance for precise and timely information retrieval framework concerning about disaster management.
However, the available information retrieval system in the market has limited invariant integration model,
whereas it provides improper sharing and collaboration capabilities in dynamic environment about the disaster
areas. Hence, this research driving this exploration for powerful use of Cloud assisted big data system which
uses Regression based information retrieval measurable computational model (RBIRMM) that offers to foresee
the collection, sharing and integration of data in the disaster management regions. This paper features the
integration of Cloud assisted IoT(CIoT)and Big data system for information retrieval system which assist the
government in taking decisions during disaster conditions in an effective fasten manner. This paper feature
the fundamental research that moves through experimental validation which has been conducted and reported
with numerical data in a virtual environment. The RBIRMM achieves 98% of accuracy when compared to other
traditional methods.
Keywords: Big data system | Internet of things | Information retrieval measurable | computational model | Disaster management
قیمت: رایگان
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