• 제목/요약/키워드: Spatial Analytics

검색결과 16건 처리시간 0.026초

시각적 공간분석학 기법을 활용한 지역별 수출화물 발생패턴 유형화 (Classification of Regional Export Freight Generation based on Geovisual Analytics)

  • 이정윤;안재성
    • Spatial Information Research
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    • 제15권3호
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    • pp.311-322
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    • 2007
  • 시각적 공간분석학은 인간의 공간인지 및 분석 능력을 최대한 발휘할 수 있는 다양한 시각화 도구를 개발함으로써 복잡한 시공간 데이터를 효율적으로 분석하는 학문으로, 궁극적으로는 인간의 추론능력과 시각적 분석도구의 효과적인 융합을 목적으로 한다. 시각적 공간분석학은 최적의 의사결정지원 도구를 개발하는 방법론으로 그 활용 범위가 매우 넓은데, 최근에는 지리적 시각화의 연구 전통을 계승하여 새로운 시각화 도구를 개발하고 다양한 분석을 통해 그 유용성을 확인하는 연구들이 시작되고 있다. 본 연구는 최근에 제안된 시각화 도구인 T 산포도와 전산분석법을 통합하여 우리나라 지역별 수출화물 발생패턴을 7개 유형으로 분석함으로써, 향후 공간의사결정 지원과정에서 시각적 공간분석학의 다양한 활용 가능성을 제시해주고 있다.

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공간 소셜 분석을 위한 마이크로블로그 데이터의 맵리듀스 기반 공간 집계 알고리즘 (A MapReduce based Algorithm for Spatial Aggregation of Microblog Data in Spatial Social Analytics)

  • 조현구;양평우;유기현;남광우
    • 정보과학회 논문지
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    • 제42권6호
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    • pp.781-790
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    • 2015
  • 인터넷과 모바일 환경의 발전에 따라 최근에는 마이크로블로그가 성행하고 있다. 마이크로블로그에는 부가적인 데이터가 담겨있다. 그 중 위치 정보에 대한 데이터를 포함하는 마이크로블로그 데이터를 공간 소셜 웹 객체라고 지칭한다. 이러한 마이크로블로그 데이터에 대한 일반 집계는 사용자별 데이터 집계 등이 있으나, 단일 정보에 대한 집계만 가능하다. 본 연구는 공간 소셜 웹 객체의 특성을 갖는 마이크로블로그 데이터의 공간 소셜 분석을 위해, 일반 집계와 공간 데이터를 결합하고 지오해시와 맵리듀스를 이용한 공간 집계에 대한 알고리즘을 제시한다. 이를 통해 의미있는 공간 소셜에 대한 분석의 기반을 마련하였다.

지역 특수성에 따른 오프라인·온라인 채널 성과의 이해 (Understanding Geographic Variation in Sales Performance through Offline and Online Channels)

  • 김지연;최정혜;정예림
    • 지식경영연구
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    • 제17권3호
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    • pp.45-64
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    • 2016
  • As the digital retail environement becomes prevalent, consumers are given greater opportunities to make purchases across physical and digital boundaries. Prior research emphasizes that the attractiveness of the digital or online channel is relatively determined by spatial specifics of physical locations. The overall market trend combined with prior research suggests that understanding spatial specifics becomes a key to managing both offline and online sales performance together. In this study, we focus on geographic variation in sales performance through offline and online channels and aim to investigate the channel-level sales difference between central and subsidiary areas. To this end, we obtain sales data of skincare and makeup products from a leading cosmetic company. Next, we examine spatial autocorrelations in data and then employ the spatial error models to study the effects of spatial specifics. The empirical findings are as follows. First, there are significant differences in category-specific and channel-level sales between central and subsidiary areas. Second, Moran's I statistics demonstrate the spatial autocorrelations of each variable. Third, spatial error models outperform simple regression models with lower AIC values. Finally, spatial specifics play a greater role in understanding online sales in subsidiary areas whereas they exert greater influence on offline sales in central areas. We believe our study advances the related theory and knowledge of multi-channel retailing and also contributes practically to location-dependent multi-channel strategies and sales data analytics.

공간분석·데이터마이닝 융합방법론을 통한 산업안전 취약지 등급화 방안 (Industrial Safety Risk Analysis Using Spatial Analytics and Data Mining)

  • 고경석;양재경
    • 산업경영시스템학회지
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    • 제40권4호
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    • pp.147-153
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    • 2017
  • The mortality rate in industrial accidents in South Korea was 11 per 100,000 workers in 2015. It's five times higher than the OECD average. Economic losses due to industrial accidents continue to grow, reaching 19 trillion won much more than natural disaster losses equivalent to 1.1 trillion won. It requires fundamental changes according to industrial safety management. In this study, We classified the risk of accidents in industrial complex of Ulju-gun using spatial analytics and data mining. We collected 119 data on accident data, factory characteristics data, company information such as sales amount, capital stock, building information, weather information, official land price, etc. Through the pre-processing and data convergence process, the analysis dataset was constructed. Then we conducted geographically weighted regression with spatial factors affecting fire incidents and calculated the risk of fire accidents with analytical model for combining Boosting and CART (Classification and Regression Tree). We drew the main factors that affect the fire accident. The drawn main factors are deterioration of buildings, capital stock, employee number, officially assessed land price and height of building. Finally the predicted accident rates were divided into four class (risk category-alert, hazard, caution, and attention) with Jenks Natural Breaks Classification. It is divided by seeking to minimize each class's average deviation from the class mean, while maximizing each class's deviation from the means of the other groups. As the analysis results were also visualized on maps, the danger zone can be intuitively checked. It is judged to be available in different policy decisions for different types, such as those used by different types of risk ratings.

Information Requirements for Model-based Monitoring of Construction via Emerging Big Visual Data and BIM

  • Han, Kevin K.;Golparvar-Fard, Mani
    • 국제학술발표논문집
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    • The 6th International Conference on Construction Engineering and Project Management
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    • pp.317-320
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    • 2015
  • Documenting work-in-progress on construction sites using images captured with smartphones, point-and-shoot cameras, and Unmanned Aerial Vehicles (UAVs) has gained significant popularity among practitioners. The spatial and temporal density of these large-scale site image collections and the availability of 4D Building Information Models (BIM) provide a unique opportunity to develop BIM-driven visual analytics that can quickly and easily detect and visualize construction progress deviations. Building on these emerging sources of information this paper presents a pipeline for model-driven visual analytics of construction progress. It particularly focuses on the following key steps: 1) capturing, transferring, and storing images; 2) BIM-driven analytics to identify performance deviations, and 3) visualizations that enable root-cause assessments on performance deviations. The information requirements, and the challenges and opportunities for improvements in data collection, plan preparations, progress deviation analysis particularly under limited visibility, and transforming identified deviations into performance metrics to enable root-cause assessments are discussed using several real world case studies.

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Methodology for Apartment Space Arrangement Based on Deep Reinforcement Learning

  • Cheng Yun Chi;Se Won Lee
    • Architectural research
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    • 제26권1호
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    • pp.1-12
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    • 2024
  • This study introduces a deep reinforcement learning (DRL)-based methodology for optimizing apartment space arrangements, addressing the limitations of human capability in evaluating all potential spatial configurations. Leveraging computational power, the methodology facilitates the autonomous exploration and evaluation of innovative layout options, considering architectural principles, legal standards, and client re-quirements. Through comprehensive simulation tests across various apartment types, the research demonstrates the DRL approach's effec-tiveness in generating efficient spatial arrangements that align with current design trends and meet predefined performance objectives. The comparative analysis of AI-generated layouts with those designed by professionals validates the methodology's applicability and potential in enhancing architectural design practices by offering novel, optimized spatial configuration solutions.

공간 데이터 분석 기반의 비즈니스의 혁신: 해외 사례 분석을 중심으로 (Business Innovation Through Spatial Data Analysis: A Multi-Case Analysis)

  • 함유근
    • 한국빅데이터학회지
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    • 제4권1호
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    • pp.83-97
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    • 2019
  • 서 및 통신 기술 발전으로 기업경영과 관련된 공간 데이터가 급증하고 있다. 공간 데이터는 이제 2차원적인 지리 데이터를 벗어나 3차원 이상의 공간에 관한 비정형 데이터로 진화하고 있다. 가상공간과 현실공간을 연결해야 하는 제4차산업혁명과 함께 기업들이 이를 활용할 기회도 크게 확대되고 있다. 최근의 해외 사례들의 분석 결과 특히 공간 속에 위치한 고객과 사물의 상황을 파악하여 맞춤화된 서비스를 제공하고, 위험관리를 하며, 더 나아가 업무 프로세스의 혁신도 공간 데이터 분석으로 가능해지고 있다. 향후 공간 속 사람과 사물 들 간의 관계 및 상황을 다양한 소스로부터의 공간 데이터를 결합하여 실시간으로 분석하는 비즈니스 혁신이 모든 분야에서 확대될 전망된다.

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Crime hotspot prediction based on dynamic spatial analysis

  • Hajela, Gaurav;Chawla, Meenu;Rasool, Akhtar
    • ETRI Journal
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    • 제43권6호
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    • pp.1058-1080
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    • 2021
  • Crime is not a completely random event but rather shows a pattern in space and time. Capturing the dynamic nature of crime patterns is a challenging task. Crime prediction models that rely only on neighborhood influence and demographic features might not be able to capture the dynamics of crime patterns, as demographic data collection does not occur frequently and is static. This work proposes a novel approach for crime count and hotspot prediction to capture the dynamic nature of crime patterns using taxi data along with historical crime and demographic data. The proposed approach predicts crime events in spatial units and classifies each of them into a hotspot category based on the number of crime events. Four models are proposed, which consider different covariates to select a set of independent variables. The experimental results show that the proposed combined subset model (CSM), in which static and dynamic aspects of crime are combined by employing the taxi dataset, is more accurate than the other models presented in this study.

The Big Data Analytics Regarding the Cadastral Resurvey News Articles

  • Joo, Yong-Jin;Kim, Duck-Ho
    • 한국측량학회지
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    • 제32권6호
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    • pp.651-659
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    • 2014
  • With the popularization of big data environment, big data have been highlighted as a key information strategy to establish national spatial data infrastructure for a scientific land policy and the extension of the creative economy. Especially interesting from our point of view is the cadastral information is a core national information source that forms the basis of spatial information that leads to people's daily life including the production and consumption of information related to real estate. The purpose of our paper is to suggest the scheme of big data analytics with respect to the articles of cadastral resurvey project in order to approach cadastral information in terms of spatial data integration. As specific research method, the TM (Text Mining) package from R was used to read various formats of news reports as texts, and nouns were extracted by using the KoNLP package. That is, we searched the main keywords regarding cadastral resurvey, performing extraction of compound noun and data mining analysis. And visualization of the results was presented. In addition, new reports related to cadastral resurvey between 2012 and 2014 were searched in newspapers, and nouns were extracted from the searched data for the data mining analysis of cadastral information. Furthermore, the approval rating, reliability, and improvement of rules were presented through correlation analyses among the extracted compound nouns. As a result of the correlation analysis among the most frequently used ones of the extracted nouns, five groups of data consisting of 133 keywords were generated. The most frequently appeared words were "cadastral resurvey," "civil complaint," "dispute," "cadastral survey," "lawsuit," "settlement," "mediation," "discrepant land," and "parcel." In Conclusions, the cadastral resurvey performed in some local governments has been proceeding smoothly as positive results. On the other hands, disputes from owner of land have been provoking a stream of complaints from parcel surveying for the cadastral resurvey. Through such keyword analysis, various public opinion and the types of civil complaints related to the cadastral resurvey project can be identified to prevent them through pre-emptive responses for direct call centre on the cadastral surveying, Electronic civil service and customer counseling, and high quality services about cadastral information can be provided. This study, therefore, provides a stepping stones for developing an account of big data analytics which is able to comprehensively examine and visualize a variety of news report and opinions in cadastral resurvey project promotion. Henceforth, this will contribute to establish the foundation for a framework of the information utilization, enabling scientific decision making with speediness and correctness.

Spatial Decision Support System for Residential Solar Energy Adoption

  • Ahmed O. Alzahrani;Hind Bitar;Abdulrahman Alzahrani;Khalaf O. Alsalem
    • International Journal of Computer Science & Network Security
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    • 제23권6호
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    • pp.49-58
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    • 2023
  • Renewable energy is not a new terminology. One of the fastest growing renewable energies is solar energy. The implementation of solar energy provides several advantages including the reduction of some of the environmental risks of fossil fuel consumption. This research elaborated the importance of the adaption of solar energy by developing a spatial decision support system (SDSS), while the Residential Solar Energy Adoption (RSEA) is an instantiation artifact in the form of an SDSS. As a GIS web-based application, RSEA allows stakeholders (e.g., utility companies, policymakers, service providers homeowners, and researchers) to navigate through locations on a map interactively. The maps highlight locations with high and low solar energy adoption potential that enables decision-makers (e.g., policymakers, solar firms, utility companies, and nonprofit organizations) to make decisions. A combined qualitative and quantitative methodological approach was used to evaluate the application's usability and user experience, and results affirmed the ability of the factors of utility, usefulness, and a positive user experience of the residential solar energy adoption of spatial decision support system (RSEA-SDSS). RSEA-SDSS in improving the decision-making process for potential various stakeholders, in utility, solar installations, policy making, and non-profit renewable energy domains.