• 제목/요약/키워드: Land Improvement Effect

검색결과 182건 처리시간 0.02초

천연기념물 제374호 제주 평대리 비자나무 숲의 보존·관리방향 설정을 위한 기초연구 (A Basic Study on the Establishment of Preservation and Management for Natural Monument(No.374) Pyeongdae-ri Torreya nucifera forest of Jeju)

  • 이원호;김동현;김재웅;오해성;최병기;이종성
    • 한국전통조경학회지
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    • 제32권1호
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    • pp.93-106
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    • 2014
  • 본 연구는 천연기념물 제374호 제주 평대리 비자나무 숲의 입지환경, 식생자원과 이용 및 관리현황을 조사하고, 현재 적용되는 관리구역에 대한 등급을 설정한 것으로써 다음과 같은 결과를 도출하였다. 첫째, 제주 평대리 비자나무 숲은 토지이용형태가 농업지역으로 변화하면서 대상지 주변지역으로의 개발압력에 의한 영향이 우려되며, 비자나무 숲 내 곶자왈지대는 종 다양성을 확보할 수 있는 기반요소로 원형보존의 관리계획 설정 및 지형의 변화를 야기하는 개발행위는 배제되어야 한다. 둘째, 제주 평대리 비자나무 숲의 소산식물상은 총 91과 263속 353종 41변종 8품종의 402분류군이 조사되었다. 이 중 환경부 지정 법정 멸종위기식물종 중 멸종위기식물 I II급에 해당하는 식물의 분포가 확인되었으나 현재의 서식처 변화 및 종의 병해, 불법 남획 등에 따른 개체 소실에 의해 비자나무 숲 내 종의 절멸 위험도 존재하므로 제주 평대리 비자나무 숲의 관리방안 설정 시 우선적으로 보호되어야 할 대상으로 고려되어야 한다. 셋째, 비자나무가 상관을 대표하는 식생구조를 나타내고 있으나, 노거수 위주의 영속적 관리와 보존전략은 빈약한 연령구조를 야기하였으며, 일부 구역의 인위적 관리에 의한 숲의 건조화, 자연적 천이에 의한 비자나무의 입지 감소 등의 문제점이 발생하는 바, 수목밀도의 조절 및 후계목 증식 등 제주 평대리 비자나무 숲의 특성을 유지할 수 있는 방안의 마련이 필요하다. 넷째, 이용에 따른 탐방로의 훼손이 발견되었으며, 특히 화산송이길의 훼손 및 분담율이 높게 나타났다. 따라서 화산송이의 단순한 보충보다는 현행 탐방로 외에 추가적인 관광루트 개발을 통한 분담율 완화 방안이 고려되어야 한다. 섯째, 제주 평대리 비자나무 숲의 관광요소 중 높은 선호도를 나타내는 식물적 요소는 이용에 관한 압력이 민감하게 작용하고, 비영속적인 특성상 지속적 모니터링이 필요하며, 추가적 관광요소 개발과 동시에 현재 높은 선호도를 나타내는 요소를 적극 활용하는 등의 방안이 마련되어야 한다. 여섯째, 보호강도별 중요도에 따라 I등급 지역은 존속개체군의 유지와 서식처의 훼손을 방지하고, II등급 지역은 연차별 숲의 재생을 위주로 관리방향을 설정하며, III등급 지역은 비자나무 시범림이나 후계목 증식을 위한 지역으로 설정되어야 한다. IV등급 지역은 고유 식생의 교란이 많이 발생하는 곳으로 부분별 휴식년제의 도입이 필요하다. V등급 지역은 비자나무 숲의 관광활용을 위한 서비스 공간 적지에 속한다. 상이한 등급의 지역 인접에 따른 가장자리효과에 대한 방안으로는 상대적으로 등급이 낮은 곳에 환경간섭을 피하기 위한 버퍼존의 설치와 주기적 모니터링이 요구된다.

Computer Aided Innovation 역량이 연구개발역량에 미치는 효과: 국내 중소기업을 대상으로 (The Effects of the Computer Aided Innovation Capabilities on the R&D Capabilities: Focusing on the SMEs of Korea)

  • 심재억;변무장;문효곤;오재인
    • Asia pacific journal of information systems
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    • 제23권3호
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    • pp.25-53
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    • 2013
  • This study analyzes the effect of Computer Aided Innovation (CAI) to improve R&D Capabilities empirically. Survey was distributed by e-mail and Google Docs, targeting CTO of 235 SMEs. 142 surveys were returned back (rate of return 60.4%) from companies. Survey results from 119 companies (83.8%) which are effective samples except no-response, insincere response, estimated value, etc. were used for statistics analysis. Companies with less than 50billion KRW sales of entire researched companies occupy 76.5% in terms of sample traits. Companies with less than 300 employees occupy 83.2%. In terms of the type of company business Partners (called 'partners with big companies' hereunder) who work with big companies for business occupy 68.1%. SMEs based on their own business (called 'independent small companies') appear to occupy 31.9%. The present status of holding IT system according to traits of company business was classified into partners with big companies versus independent SMEs. The present status of ERP is 18.5% to 34.5%. QMS is 11.8% to 9.2%. And PLM (Product Life-cycle Management) is 6.7% to 2.5%. The holding of 3D CAD is 47.1% to 21%. IT system-holding and its application of independent SMEs seemed very vulnerable, compared with partner companies of big companies. This study is comprised of IT infra and IT Utilization as CAI capacity factors which are independent variables. factors of R&D capabilities which are independent variables are organization capability, process capability, HR capability, technology-accumulating capability, and internal/external collaboration capability. The highest average value of variables was 4.24 in organization capability 2. The lowest average value was 3.01 in IT infra which makes users access to data and information in other areas and use them with ease when required during new product development. It seems that the inferior environment of IT infra of general SMEs is reflected in CAI itself. In order to review the validity used to measure variables, Factors have been analyzed. 7 factors which have over 1.0 pure value of their dependent and independent variables were extracted. These factors appear to explain 71.167% in total of total variances. From the result of factor analysis about measurable variables in this study, reliability of each item was checked by Cronbach's Alpha coefficient. All measurable factors at least over 0.611 seemed to acquire reliability. Next, correlation has been done to explain certain phenomenon by correlation analysis between variables. As R&D capabilities factors which are arranged as dependent variables, organization capability, process capability, HR capability, technology-accumulating capability, and internal/external collaboration capability turned out that they acquire significant correlation at 99% reliability level in all variables of IT infra and IT Utilization which are independent variables. In addition, correlation coefficient between each factor is less than 0.8, which proves that the validity of this study judgement has been acquired. The pair with the highest coefficient had 0.628 for IT utilization and technology-accumulating capability. Regression model which can estimate independent variables was used in this study under the hypothesis that there is linear relation between independent variables and dependent variables so as to identify CAI capability's impact factors on R&D. The total explanations of IT infra among CAI capability for independent variables such as organization capability, process capability, human resources capability, technology-accumulating capability, and collaboration capability are 10.3%, 7%, 11.9%, 30.9%, and 10.5% respectively. IT Utilization exposes comprehensively low explanatory capability with 12.4%, 5.9%, 11.1%, 38.9%, and 13.4% for organization capability, process capability, human resources capability, technology-accumulating capability, and collaboration capability respectively. However, both factors of independent variables expose very high explanatory capability relatively for technology-accumulating capability among independent variable. Regression formula which is comprised of independent variables and dependent variables are all significant (P<0.005). The suitability of regression model seems high. When the results of test for dependent variables and independent variables are estimated, the hypothesis of 10 different factors appeared all significant in regression analysis model coefficient (P<0.01) which is estimated to affect in the hypothesis. As a result of liner regression analysis between two independent variables drawn by influence factor analysis for R&D capability and R&D capability. IT infra and IT Utilization which are CAI capability factors has positive correlation to organization capability, process capability, human resources capability, technology-accumulating capability, and collaboration capability with inside and outside which are dependent variables, R&D capability factors. It was identified as a significant factor which affects R&D capability. However, considering adjustable variables, a big gap is found, compared to entire company. First of all, in case of partner companies with big companies, in IT infra as CAI capability, organization capability, process capability, human resources capability, and technology capability out of R&D capacities seems to have positive correlation. However, collaboration capability appeared insignificance. IT utilization which is a CAI capability factor seemed to have positive relation to organization capability, process capability, human resources capability, and internal/external collaboration capability just as those of entire companies. Next, by analyzing independent types of SMEs as an adjustable variable, very different results were found from those of entire companies or partner companies with big companies. First of all, all factors in IT infra except technology-accumulating capability were rejected. IT utilization was rejected except technology-accumulating capability and collaboration capability. Comprehending the above adjustable variables, the following results were drawn in this study. First, in case of big companies or partner companies with big companies, IT infra and IT utilization affect improving R&D Capabilities positively. It was because most of big companies encourage innovation by using IT utilization and IT infra building over certain level to their partner companies. Second, in all companies, IT infra and IT utilization as CAI capability affect improving technology-accumulating capability positively at least as R&D capability factor. The most of factor explanation is low at around 10%. However, technology-accumulating capability is rather high around 25.6% to 38.4%. It was found that CAI capability contributes to technology-accumulating capability highly. Companies shouldn't consider IT infra and IT utilization as a simple product developing tool in R&D section. However, they have to consider to use them as a management innovating strategy tool which proceeds entire-company management innovation centered in new product development. Not only the improvement of technology-accumulating capability in department of R&D. Centered in new product development, it has to be used as original management innovative strategy which proceeds entire company management innovation. It suggests that it can be a method to improve technology-accumulating capability in R&D section and Dynamic capability to acquire sustainable competitive advantage.