4 research outputs found

    Identification of business intelligence in managing maintenance management for government office buildings in Putrajaya

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    A proper data management in maintenance practices are required to make the daily process smooth. With the ability of Information Technology (IT) will influence on maintenance management database system. However, this IT systems are challenged with massive increases in amount of data, the speed they are generated and the need to record, process and visualize those data in real time to the user. This rapid growth of information results in the pervasion of Big Data (BD) and Business Intelligence (BI). This research highlights Public Works Department or Jabatan Kerja Raya (JKR) as a key pillar in managing and store important data relating to maintenance management for each building in Putrajaya. JKR finds difficulties to create sustainable maintenance policy which require the right tools and equipment to achieve sustainable goals and objective. Last research attentions have been given to the use of big data and business intelligence in maintenance management industries particularly in government sector. Hence, this research presents an analysis of the complexities and requirement for maintenance that focuses on intelligent system that help to improve the intelligent management of maintenance in making informed decision and can be applied horizontally to address identified challenges in practices

    Big data analytical framework in managing maintenance management for government office buildings in Malaysia

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    The government sector in Malaysia faces major challenges in managing maintenance data. The development of technology and software for industry 4.0 has produced a vast volume of data, and the increase is very high. The sudden rise of Big Data has left real estate players unprepared to use it effectively. Furthermore, the Computerized Maintenance Management System (CMMS) and Sistem Pengurusan Fasiliti Berpusat (eSPFB) used in the government, especially in Putrajaya, are not working well. Based on the research and monitoring conducted, the data in the CMMS are still incomplete for analysis and projection to assist or support strategic decisions in managing facilities. Although it can produce dynamic dashboarding for decision-making, it does not involve Business Intelligence (BI) in providing real-time analysis or an interactive dashboard to the user, making it easier for newcomers to understand the system. Scattered, insufficiency and inaccuracy of maintenance data have become challenges for the maintenance department, making modelling the process or the management of maintenance activities enormously hard and complex. To mitigate this situation, the government must have a framework that can assist in managing the maintenance data management of public facilities, which encompasses an improvement tool through the dashboard simulation model for enhancing current conventional maintenance practices containing the necessary information to satisfy the stakeholder. Due to problems arising in the management of government building maintenance, especially during the decision-making stage, this research attempts to develop a new approach in managing dispersed and complex domain structures using Business Intelligence. Three objectives drove the study, firstly to identify data management challenges in maintenance management; secondly to determine the existing big data and business intelligence in federal government buildings, and thirdly to develop the big data analytical framework in maintenance management for federal government buildings. The Federal Territory of Putrajaya was chosen as the case study for this research. Three research methodologies were employed to achieve the research objectives, a literature review, a questionnaire survey and expert opinion. Firstly, the literature review identified four barriers to CMMS and eSPFB implementation and eight elements of data management challenges in government buildings. The respondents were asked to choose their level of agreement with the barriers and data management challenges. The respondent involved experts from the maintenance and asset management field, making them reliable and relevant for validating the barriers and data management challenges in maintenance management. Six experts were selected based on purposive sampling. Next, questionnaires were distributed to the target group of 35 supervisors who were selected through random sampling at the Jabatan Kerja Raya, Putrajaya. Data were analysed using IBM SPSS 23. The result showed that 73% of the respondents had difficulties collecting maintenance management data. Lastly, the big data analytical framework was developed, grounded by a dashboard simulation model and validated through expert opinions. The developed framework and dashboard simulation model was recommended as a new approach to replace the existing conventional method. In conclusion, this approach is an added value for the government in making structured knowledge in conveying maintenance data to the users for decision-making and better performance of public facilities by Jabatan Kerja Raya

    Identification of business intelligence in big data maintenance of government sector in Putrajaya

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    This paper contributes significantly, which focuses on an intelligent system that lets the government make an integral part of decision-making and can be applied horizontally to solve the problems in maintenance practice through business intelligence. Accordingly, a real-time data management system for maintenance management is proposed in this paper. It looks at a real case study highlighting the need for proper data management in the government sector. Our findings bridge the gap of information technology inserted in government office buildings, with maintenance management being the domain. This paper demonstrates the underlying structure of the developed simulation model

    Big data analytics for preventive maintenance management

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    Maintenance data for government buildings in Putrajaya, Malaysia, consists of a vast volume of data that is divided into different classes based on the functions of the maintenance tasks. As a result, multiple interactions from stakeholders and customers are required. This necessitates the collection of data that is specific to the stakeholders and customers. Big data can also forecast for predictive maintenance purposes in maintenance management. The current data practise relies solely on well-structured statistical data, resulting in static analysis and findings. Predictive maintenance under the Big Data idea will also use non-visible data such as social media and web search queries, which is a novel way to use Big Data analytics. The metamodel technique will be used in this study to evaluate the predictive maintenance model and faulty events in order to verify that the asset, facilities, and buildings are in excellent working order utilising systematic maintenance analytics. The metamodel method proposed a predictive maintenance procedure in Putrajaya by utilising the big data idea for maintenance management data
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