• 제목/요약/키워드: Passive tag

검색결과 152건 처리시간 0.017초

장흥댐에 설치되어 있는 어도와 담수어류의 이용 분석 (Freshwater Fish Utilization of Fishway Installed in the Jangheung Dam)

  • 윤주덕;김정희;주기재;서진원;;장민호
    • 생태와환경
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    • 제44권3호
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    • pp.264-271
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    • 2011
  • 댐이나 보와 같은 하천내 구조물의 건설시 어도의 설치는 어류의 이동에 있어서 중요한 역할을 한다. 탐진강에 건설되어 있는 장흥 다목적댐에는 어류의 상류로 이동을 원활히 하기 위해 엘리베이터식 어도에 포함되는 트럭식 댐체어도가 방류구 옆쪽에 위치하고 있다. 이러한 종류의 어도는 효율적으로 어류를 포집하기 위한 트랩이 함께 설치된다. 본 연구에서는 장흥댐에 설치되어 있는 어도 트랩의 어류 이용정도를 파악하기 위하여 PIT telemetry 방식을 적용, 총 15종 254개체의 어류에 tag을 삽입하여 모니터링을 하였다. 붕어, 떡붕어, 돌고기, 갈겨니, 피라미, 눈동자개 6종 36개체가 감지되어 14.2%의 감지율을 나타냈다. 붕어가 43개체 중 19개체가 감지되어 44.2%로 가장 높은 감지 비율을 보였고 돌고기는 14.3%의 비율을 나타냈으며, 갈겨니와 피라미는 각각 5%와 7.7%의 감지 비율을 나타냈다. 일부 개체들은 한번에 어도내로 이동하지 않고 장기간에 걸쳐 꾸준히 신호가 감지되었다. 이동한 개체들과 이동하지 않은 개체들 사이에 크기 (전장, 체장, 체중)는 차이가 없었으며(Mann-Whitney U test, p>0.05), 주로 댐에서 방류가 이루어지는 시간에 트랩으로 이동하는 것으로 파악되었다 (Mann-Whitney U test, p<0.001). 시간대별 분석에서는 주로 야간시간대보다 주간시간대에서 더 높은 감지빈도를 보였다(Mann-Whitney U test, p<0.001). 본 연구의 결과에 의하면, 어류가 트랩으로 이동하는 데는 방류시간과 같은 외적인 요소와 각 종별 생태적 특성(산란기, 주행성, 야행성)이 중요한 역할을 하고 있었다. 따라서 어류의 어도 이용율을 높이기 위해서는 어류의 생태적 특성을 고려하여 방류량과 더불어 방류시간, 방류시간대를 적절하게 변화시키는 전략적 방류가 필요할 것으로 판단된다.

폭소노미 사이트를 위한 랭킹 프레임워크 설계: 시맨틱 그래프기반 접근 (A Folksonomy Ranking Framework: A Semantic Graph-based Approach)

  • 박현정;노상규
    • Asia pacific journal of information systems
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    • 제21권2호
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    • pp.89-116
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    • 2011
  • In collaborative tagging systems such as Delicious.com and Flickr.com, users assign keywords or tags to their uploaded resources, such as bookmarks and pictures, for their future use or sharing purposes. The collection of resources and tags generated by a user is called a personomy, and the collection of all personomies constitutes the folksonomy. The most significant need of the folksonomy users Is to efficiently find useful resources or experts on specific topics. An excellent ranking algorithm would assign higher ranking to more useful resources or experts. What resources are considered useful In a folksonomic system? Does a standard superior to frequency or freshness exist? The resource recommended by more users with mere expertise should be worthy of attention. This ranking paradigm can be implemented through a graph-based ranking algorithm. Two well-known representatives of such a paradigm are Page Rank by Google and HITS(Hypertext Induced Topic Selection) by Kleinberg. Both Page Rank and HITS assign a higher evaluation score to pages linked to more higher-scored pages. HITS differs from PageRank in that it utilizes two kinds of scores: authority and hub scores. The ranking objects of these pages are limited to Web pages, whereas the ranking objects of a folksonomic system are somewhat heterogeneous(i.e., users, resources, and tags). Therefore, uniform application of the voting notion of PageRank and HITS based on the links to a folksonomy would be unreasonable, In a folksonomic system, each link corresponding to a property can have an opposite direction, depending on whether the property is an active or a passive voice. The current research stems from the Idea that a graph-based ranking algorithm could be applied to the folksonomic system using the concept of mutual Interactions between entitles, rather than the voting notion of PageRank or HITS. The concept of mutual interactions, proposed for ranking the Semantic Web resources, enables the calculation of importance scores of various resources unaffected by link directions. The weights of a property representing the mutual interaction between classes are assigned depending on the relative significance of the property to the resource importance of each class. This class-oriented approach is based on the fact that, in the Semantic Web, there are many heterogeneous classes; thus, applying a different appraisal standard for each class is more reasonable. This is similar to the evaluation method of humans, where different items are assigned specific weights, which are then summed up to determine the weighted average. We can check for missing properties more easily with this approach than with other predicate-oriented approaches. A user of a tagging system usually assigns more than one tags to the same resource, and there can be more than one tags with the same subjectivity and objectivity. In the case that many users assign similar tags to the same resource, grading the users differently depending on the assignment order becomes necessary. This idea comes from the studies in psychology wherein expertise involves the ability to select the most relevant information for achieving a goal. An expert should be someone who not only has a large collection of documents annotated with a particular tag, but also tends to add documents of high quality to his/her collections. Such documents are identified by the number, as well as the expertise, of users who have the same documents in their collections. In other words, there is a relationship of mutual reinforcement between the expertise of a user and the quality of a document. In addition, there is a need to rank entities related more closely to a certain entity. Considering the property of social media that ensures the popularity of a topic is temporary, recent data should have more weight than old data. We propose a comprehensive folksonomy ranking framework in which all these considerations are dealt with and that can be easily customized to each folksonomy site for ranking purposes. To examine the validity of our ranking algorithm and show the mechanism of adjusting property, time, and expertise weights, we first use a dataset designed for analyzing the effect of each ranking factor independently. We then show the ranking results of a real folksonomy site, with the ranking factors combined. Because the ground truth of a given dataset is not known when it comes to ranking, we inject simulated data whose ranking results can be predicted into the real dataset and compare the ranking results of our algorithm with that of a previous HITS-based algorithm. Our semantic ranking algorithm based on the concept of mutual interaction seems to be preferable to the HITS-based algorithm as a flexible folksonomy ranking framework. Some concrete points of difference are as follows. First, with the time concept applied to the property weights, our algorithm shows superior performance in lowering the scores of older data and raising the scores of newer data. Second, applying the time concept to the expertise weights, as well as to the property weights, our algorithm controls the conflicting influence of expertise weights and enhances overall consistency of time-valued ranking. The expertise weights of the previous study can act as an obstacle to the time-valued ranking because the number of followers increases as time goes on. Third, many new properties and classes can be included in our framework. The previous HITS-based algorithm, based on the voting notion, loses ground in the situation where the domain consists of more than two classes, or where other important properties, such as "sent through twitter" or "registered as a friend," are added to the domain. Forth, there is a big difference in the calculation time and memory use between the two kinds of algorithms. While the matrix multiplication of two matrices, has to be executed twice for the previous HITS-based algorithm, this is unnecessary with our algorithm. In our ranking framework, various folksonomy ranking policies can be expressed with the ranking factors combined and our approach can work, even if the folksonomy site is not implemented with Semantic Web languages. Above all, the time weight proposed in this paper will be applicable to various domains, including social media, where time value is considered important.