• 제목/요약/키워드: Data-Driven Planning

검색결과 56건 처리시간 0.027초

식음료 프랜차이즈 기업의 CSR 활동 동기에 대한 지각이 진정성 및 태도에 미치는 영향 (Effects of CSR Motives on Authenticity and Attitude in the Food and Beverage Franchise Sectors)

  • 이현;이용기;김재율
    • 한국프랜차이즈경영연구
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    • 제14권4호
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    • pp.1-16
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    • 2023
  • Purpose: Previous studies show that perceived CSR motives have a significant impact on company evaluations. However, consumer responses to CSR motives vary depending on CSR motives. From this perspective, this study investigates the impact of CSR motives on consumers' responses in the context of food and beverage franchise companies using a scenario. Research design, data, and methodology: For achieving the purposes of the study, an example of a domestic food and beverage franchise company actively carrying out CSR activities was presented. Data was collected from 304 respondents aged 20 or older who were aware of CSR activities. The respondents answered the questionnaire after reading the scenario. The data was analyzed with SPSS 28.0 and SmartPLS 4.0 program. Result: Values-driven motive and strategic motive influence authenticity, while stakeholder-driven motive and egoistic motive did not influence authenticity. Values-driven motive influences on attitude, while stakeholder-driven motive, strategic motive and egoistic motive didn't. Lastly, authenticity influences attitude. Conclusions: Companies need to be aware that consumers may infer different motives for their CSR activities, and pay close attention to consumers' perceived motives from the planning stage of CSR activities. In particular, companies should focus on the values-driven motive and the strategic motive when planning CSR activities.

The efficient data-driven solution to nonlinear continuum thermo-mechanics behavior of structural concrete panel reinforced by nanocomposites: Development of building construction in engineering

  • Hengbin Zheng;Wenjun Dai;Zeyu Wang;Adham E. Ragab
    • Advances in nano research
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    • 제16권3호
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    • pp.231-249
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    • 2024
  • When the amplitude of the vibrations is equivalent to that clearance, the vibrations for small amplitudes will really be significantly nonlinear. Nonlinearities will not be significant for amplitudes that are rather modest. Finally, nonlinearities will become crucial once again for big amplitudes. Therefore, the concrete panel system may experience a big amplitude in this work as a result of the high temperature. Based on the 3D modeling of the shell theory, the current work shows the influences of the von Kármán strain-displacement kinematic nonlinearity on the constitutive laws of the structure. The system's governing Equations in the nonlinear form are solved using Kronecker and Hadamard products, the discretization of Equations on the space domain, and Duffing-type Equations. Thermo-elasticity Equations. are used to represent the system's temperature. The harmonic solution technique for the displacement domain and the multiple-scale approach for the time domain are both covered in the section on solution procedures for solving nonlinear Equations. An effective data-driven solution is often utilized to predict how different systems would behave. The number of hidden layers and the learning rate are two hyperparameters for the network that are often chosen manually when required. Additionally, the data-driven method is offered for addressing the nonlinear vibration issue in order to reduce the computing cost of the current study. The conclusions of the present study may be validated by contrasting them with those of data-driven solutions and other published articles. The findings show that certain physical and geometrical characteristics have a significant effect on the existing concrete panel structure's susceptibility to temperature change and GPL weight fraction. For building construction industries, several useful recommendations for improving the thermo-mechanics' behavior of structural concrete panels are presented.

EPC 플랜트 프로젝트의 초기 공정계획을 위한 통합 데이터 활용 방안 (Data-driven Interactive Planning Methodology for EPC Plant Projects)

  • 왕한겸;최재현
    • 한국건설관리학회논문집
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    • 제20권2호
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    • pp.95-104
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    • 2019
  • EPC 플랜트 프로젝트는 규모와 복잡성 측면에서 시공 이전 단계의 계획 업무가 프로젝트 성패에 큰 영향을 미치기 때문에 프로젝트에 참여하는 주체간의 긴밀한 협력과 의사소통이 필수적이다. 본 연구는 이러한 필요성을 기반으로 플랜트 프로젝트에서 자산데이터를 활용하여 공정계획의 요소정보를 추출하고, 이를 패키지로 구성하여 초기 공정계획을 수행하는 방법론을 상호계획 (IAP, Interactive Planning)의 개념을 통해 제시한다. 프로젝트 초기단계에서 효과적인 IAP를 수행하기 위하여 자산 데이터로부터 공정요소정보를 추출하고 작업 패키지 단위의 공정 계획을 작성하며 작성된 공정계획을 평가하는 세 가지 단계를 제시하였으며 이를 샘플 프로젝트 사례에 적용하였다. 제시된 IAP 방법론을 통해 자산 데이터 활용성 증진과 공정 리스크 사전식별 및 대응책 개발을 도모할 수 있으며 이는 프로젝트를 성공적으로 완료하기 위한 공정 전략 수립의 기반이 될 수 있다.

데이터 중심의 정보 시스템 도입 방법론: 고객관계관리 시스템에의 적용 사례 (Data driven approach for information system adoption: Applied in CRM case)

  • 박종한;이석기
    • Journal of the Korean Data and Information Science Society
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    • 제21권2호
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    • pp.251-262
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    • 2010
  • 최근 대부분의 기업이 정보시스템 개발을 아웃소싱에 의존하면서, 도입하고자 하는 정보시스템을 효과적으로 활용하는데 필요한 데이터와 현재 기업이 가지고 있는 데이터간의 차이에 대한 사전 분석이 성공적인 정보시스템 도입을 위해 반드시 필요하다. 그 예로 고객관계관리 시스템의 도입 사례의 경우 가장 큰 실패 요인이 사전에 기업이 가지고 있는 데이터에 대한 분석을 간과한 것에 기인하고 있다. 하지만, 아직까지 데이터 관점에서 정보시스템 도입 방법론을 체계적으로 제안한 연구가 존재하지 않았다. 본 연구에서 정보시스템 도입과 관련된 데이터 비용을 사전에 분석하여 도입 의사결정에 활용할 수 있는 정보시스템 도입 방법론을 제안하고 실제 사례에서 어떻게 활용 될 수 있는지를 사례 시뮬레이션을 통해 보여주고자 한다. 제안된 방법론을 이용해 실제 기업의 정보시스템 도입 의사결정자들은 기업의 전략에 따라 다양한 정보시스템을 디자인하고 그에 따른 데이터 관련 비용을 장, 단기적인 계획 하에서 분석 가능하므로, 도입 단계에서 숨어있는 데이터 관련 비용에 의해 발생할 수 있는 정보시스템 도입 실패에 대한 위험 부담을 사전에 방지할 수 있다.

ISP 방법론 비교 선정을 위한 프레임워크 (A framework for selecting information systems planning (ISP) approach)

  • Sung Kun Kim;Soon Sam Hwang
    • Journal of Information Technology Applications and Management
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    • 제9권3호
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    • pp.129-139
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    • 2002
  • There exist a number of information systems planning (ISP) methodologies. Historically these methodologies have been evolving to reflect new technologies and business requirements. In fact, it is an uneasy task to select a methodology that fits a business need. Though there have been a number of studies proposing new ISP approaches, we are unable to find much research doing a comparative analysis on existing ISP methodologies. Our study, therefore, is to present a classification scheme for ISP approaches and to provide a guideline framework for selecting an approach most suitable to a particular firm's need. Our classification utilizes types of components covered in ISP deliverables and the peculiarity of these components. Such classification scheme and selection framework would help derive an IT-driven new enterprise model more effectively.

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STL 메쉬를 이용한 자유곡면의 레이저 측정경로 생성 연구 (STL mesh based laser scan planning system for complex freeform surfaces)

  • 손석배;김승만;이관행
    • 한국정밀공학회:학술대회논문집
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    • 한국정밀공학회 2002년도 추계학술대회 논문집
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    • pp.595-598
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    • 2002
  • Laser scanners are getting used more and more in reverse engineering and inspection. For CNC-driven laser scanners, it is important to automate the scanning operations to improve the accuracy of capture point data and to reduce scanning time in industry. However, there are few research works on laser scan planning system. In addition, it is difficult to directly analyze multi-patched freeform models. In this paper, we propose an STL (Stereolithography) mesh based laser scan planning system for complex freeform surfaces. The scan planning system consists of three steps and it is assumed that the CAD model of the part exists. Firstly, the surface model is approximated into STL meshes. From the mesh model, normal vector of each node point is estimated. Second, scan directions and regions are determined through the region growing method. Also, scan paths are generated by calculating the minimum-bounding rectangle of points that can be scanned in each scan direction. Finally, the generated scan directions and paths are validated by checking optical constraints and the collision between the laser probe and the part to be scanned.

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AI-Based Project Similarity Evaluation Model Using Project Scope Statements

  • Ko, Taewoo;Jeong, H. David;Lee, JeeHee
    • 국제학술발표논문집
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    • The 9th International Conference on Construction Engineering and Project Management
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    • pp.284-291
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    • 2022
  • Historical data from comparable projects can serve as benchmarking data for an ongoing project's planning during the project scoping phase. As project owners typically store substantial amounts of data generated throughout project life cycles in digitized databases, they can capture appropriate data to support various project planning activities by accessing digital databases. One of the most important work tasks in this process is identifying one or more past projects comparable to a new project. The uniqueness and complexity of construction projects along with unorganized data, impede the reliable identification of comparable past projects. A project scope document provides the preliminary overview of a project in terms of the extent of the project and project requirements. However, narratives and free-formatted descriptions of project scopes are a significant and time-consuming barrier if a human needs to review them and determine similar projects. This study proposes an Artificial Intelligence-driven model for analyzing project scope descriptions and evaluating project similarity using natural language processing (NLP) techniques. The proposed algorithm can intelligently a) extract major work activities from unstructured descriptions held in a database and b) quantify similarities by considering the semantic features of texts representing work activities. The proposed model enhances historical comparable project identification by systematically analyzing project scopes.

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항공기 제조업에서 생산계획 동기화를 통한 데이터기반 구매조달 및 재고관리 방안 연구 (A Scheme of Data-driven Procurement and Inventory Management through Synchronizing Production Planning in Aircraft Manufacturing Industry)

  • 유경열;최홍석;정대율
    • 한국정보시스템학회지:정보시스템연구
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    • 제30권1호
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    • pp.151-177
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    • 2021
  • Purpose This paper aims to improve management performance by effectively responding to production needs and reducing inventory through synchronizing production planning and procurement in the aviation industry. In this study, the differences in production planning and execution were first analyzed in terms of demand, supply, inventory, and process using the big data collected from a domestic aircraft manufacturers. This paper analyzed the problems in procurement and inventory management using legacy big data from ERP system in the company. Based on the analysis, we performed a simulation to derive an efficient procurement and inventory management plan. Through analysis and simulation of operational data, we were able to discover procurement and inventory policies to effectively respond to production needs. Design/methodology/approach This is an empirical study to analyze the cause of decrease in inventory turnover and increase in inventory cost due to dis-synchronize between production requirements and procurement. The actual operation data, a total of 21,306,611 transaction data which are 18 months data from January 2019 to June 2020, were extracted from the ERP system. All them are such as basic information on materials, material consumption and movement history, inventory/receipt/shipment status, and production orders. To perform data analysis, it went through three steps. At first, we identified the current states and problems of production process to grasp the situation of what happened, and secondly, analyzed the data to identify expected problems through cross-link analysis between transactions, and finally, defined what to do. Many analysis techniques such as correlation analysis, moving average analysis, and linear regression analysis were applied to predict the status of inventory. A simulation was performed to analyze the appropriate inventory level according to the control of fluctuations in the production planing. In the simulation, we tested four alternatives how to coordinate the synchronization between the procurement plan and the production plan. All the alternatives give us more plausible results than actual operation in the past. Findings Based on the big data extracted from the ERP system, the relationship between the level of delivery and the distribution of fluctuations was analyzed in terms of demand, supply, inventory, and process. As a result of analyzing the inventory turnover rate, the root cause of the inventory increase were identified. In addition, based on the data on delivery and receipt performance, it was possible to accurately analyze how much gap occurs between supply and demand, and to figure out how much this affects the inventory level. Moreover, we were able to obtain the more predictable and insightful results through simulation that organizational performance such as inventory cost and lead time can be improved by synchronizing the production planning and purchase procurement with supply and demand information. The results of big data analysis and simulation gave us more insights in production planning, procurement, and inventory management for smart manufacturing and performance improvement.

Streamlining ERP Deployment in Nepal's Oil and Gas Industry: A Case Analysis

  • Dipa Adhikari;Bhanu Shrestha;Surendra Shrestha;Rajan Nepal
    • International Journal of Advanced Culture Technology
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    • 제12권3호
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    • pp.140-147
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    • 2024
  • Oil and gas industry is a unique sector with complex activities, long supply chains and strict rules for the business. It is important to use enterprise resource planning (ERP) systems to address these challenges as it helps in simplifying operations, improving efficiency and facilitating evidence-based decision making. Nonetheless, successful integration of ERP systems in this industry involves careful planning, customization and alignment with specific business processes including regulatory requirements. Several critical factors, such as strong change management, support of top managers and training that works have been identified in the study. Amongst the hurdles are employee resistance towards the changes, data migration complications and integration with existing systems. Nonetheless, NOCL's ERP implementation resulted in significant improvements in operating efficiency, better data visibility and compliance management. It also led to a decrease in financial reporting timeframes, more accurate inventory tracking and improved decision-making capabilities. The study provides useful insights on how to optimize oil and gas sector ERP implementations; key among them is practical advice including strengthening change management strategies, prioritizing data security and collaborating with ERP vendors. The research highlights the importance of tailoring ERP solutions to specific industry needs as well as emphasizes the strategic role of ongoing monitoring/feedback for future benefits sustainability.