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Big Data and Its Applications in Smart Real Estate and the Disaster Management Life Cycle: A Systematic Analysis

机译:大数据及其在智能房地产和灾害管理生命周期中的应用:系统分析

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Big data is the concept of enormous amounts of data being generated daily in different fields due to the increased use of technology and internet sources. Despite the various advancements and the hopes of better understanding, big data management and analysis remain a challenge, calling for more rigorous and detailed research, as well as the identifications of methods and ways in which big data could be tackled and put to good use. The existing research lacks in discussing and evaluating the pertinent tools and technologies to analyze big data in an efficient manner which calls for a comprehensive and holistic analysis of the published articles to summarize the concept of big data and see field-specific applications. To address this gap and keep a recent focus, research articles published in last decade, belonging to top-tier and high-impact journals, were retrieved using the search engines of Google Scholar, Scopus, and Web of Science that were narrowed down to a set of 139 relevant research articles. Different analyses were conducted on the retrieved papers including bibliometric analysis, keywords analysis, big data search trends, and authors’ names, countries, and affiliated institutes contributing the most to the field of big data. The comparative analyses show that, conceptually, big data lies at the intersection of the storage, statistics, technology, and research fields and emerged as an amalgam of these four fields with interlinked aspects such as data hosting and computing, data management, data refining, data patterns, and machine learning. The results further show that major characteristics of big data can be summarized using the seven Vs, which include variety, volume, variability, value, visualization, veracity, and velocity. Furthermore, the existing methods for big data analysis, their shortcomings, and the possible directions were also explored that could be taken for harnessing technology to ensure data analysis tools could be upgraded to be fast and efficient. The major challenges in handling big data include efficient storage, retrieval, analysis, and visualization of the large heterogeneous data, which can be tackled through authentication such as Kerberos and encrypted files, logging of attacks, secure communication through Secure Sockets Layer (SSL) and Transport Layer Security (TLS), data imputation, building learning models, dividing computations into sub-tasks, checkpoint applications for recursive tasks, and using Solid State Drives (SDD) and Phase Change Material (PCM) for storage. In terms of frameworks for big data management, two frameworks exist including Hadoop and Apache Spark, which must be used simultaneously to capture the holistic essence of the data and make the analyses meaningful, swift, and speedy. Further field-specific applications of big data in two promising and integrated fields, i.e., smart real estate and disaster management, were investigated, and a framework for field-specific applications, as well as a merger of the two areas through big data, was highlighted. The proposed frameworks show that big data can tackle the ever-present issues of customer regrets related to poor quality of information or lack of information in smart real estate to increase the customer satisfaction using an intermediate organization that can process and keep a check on the data being provided to the customers by the sellers and real estate managers. Similarly, for disaster and its risk management, data from social media, drones, multimedia, and search engines can be used to tackle natural disasters such as floods, bushfires, and earthquakes, as well as plan emergency responses. In addition, a merger framework for smart real estate and disaster risk management show that big data generated from the smart real estate in the form of occupant data, facilities management, and building integration and maintenance can be shared with the disaster risk management and emergency response teams to help prevent, prepare, respond to, or recover from the disasters.
机译:大数据是由于技术和互联网资源的日益使用而每天在不同领域中产生大量数据的概念。尽管取得了各种进步和希望有更好的理解的希望,但是大数据管理和分析仍然是一个挑战,需要进行更严格和详细的研究,并确定可以处理和充分利用大数据的方法和方式。现有研究缺乏讨论和评估以有效方式分析大数据的相关工具和技术的方法,这要求对已发表的文章进行全面而全面的分析,以总结大数据的概念并查看特定领域的应用。为了解决这一差距并保持近期关注,使用Google Scholar,Scopus和Web of Science的搜索引擎检索了过去十年发表的属于顶级和高影响力期刊的研究文章。 139条相关研究文章。对检索到的论文进行了不同的分析,包括文献计量分析,关键字分析,大数据搜索趋势以及在大数据领域贡献最大的作者的姓名,国家和附属机构。对比分析表明,从概念上讲,大数据位于存储,统计,技术和研究领域的交汇处,并以这四个领域的融合形式出现,这些方面相互关联,例如数据托管和计算,数据管理,数据提炼,数据模式和机器学习。结果进一步表明,可以使用七个V来总结大数据的主要特征,这七个Vs包括多样性,数量,可变性,价值,可视化,准确性和速度。此外,还探讨了现有的大数据分析方法,其缺点以及可能的方向,以利用技术来确保可以快速高效地升级数据分析工具。处理大数据的主要挑战包括对大型异构数据的有效存储,检索,分析和可视化,这可以通过Kerberos和加密文件之类的身份验证来解决,攻击日志记录,通过安全套接字层(SSL)和传输层安全性(TLS),数据归因,建立学习模型,将计算分为子任务,递归任务的检查点应用程序以及使用固态驱动器(SDD)和相变材料(PCM)进行存储。在大数据管理的框架方面,存在两个框架,包括Hadoop和Apache Spark,必须同时使用这两个框架来捕获数据的整体本质,并使分析有意义,迅速且快速。研究了在智能房地产和灾难管理这两个有前途和集成领域中大数据的其他特定于领域的应用程序,并且针对特定领域的应用程序框架以及通过大数据将这两个领域合并在一起的问题得到了研究。突出显示。提议的框架表明,大数据可以解决与智能房地产中信息质量低下或信息不足有关的客户后悔问题,从而可以使用可以处理和检查数据的中间组织来提高客户满意度由卖方和房地产经理提供给客户。同样,对于灾难及其风险管理,可以使用来自社交媒体,无人机,多媒体和搜索引擎的数据来处理自然灾害,例如洪水,丛林大火和地震,并计划应急响应。此外,智能房地产和灾难风险管理的合并框架表明,从智能房地产中产生的大数据,例如占用者数据,设施管理以及建筑物集成和维护,可以与灾难风险管理和应急响应共享。帮助预防,准备,响应灾难或从灾难中恢复的团队。

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