• 제목/요약/키워드: Traffic Volume Data

검색결과 460건 처리시간 0.089초

고속도로 발생소음의 특성 분석 (Characteristics Analysis of Highway Traffic Noise)

  • 김철환;장태순;김득성
    • 한국소음진동공학회논문집
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    • 제22권12호
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    • pp.1191-1198
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    • 2012
  • Highway traffic noise is the one of the most frequent pollutant source of environmental claims in Korea for the last 10 years. For abating the noise from the highways, characteristics of highway noise source should be investigated and identified before performing the abatements. Highway noises are affected by traffic volume, vehicle types and speed, tyre and pavement types. In this study, highway noises which measured from different pavements have been analyzed and compared. Especially, the noise from the asphalt concrete pavement, cement concrete pavement and low-noise pavement have been measured simultaneously at the same traffic condition and compared each other. Hopefully, the data of the study may be used for abating highway noise and further studies.

고속도로 대기행렬길이 산정모형 개발을 위한 연속류 특성 분석 (A Study of Traffic Flow Characteristics for Estimating Queue-Length in Freeway)

  • 노재현;손봉수;도철웅;신치현
    • 대한교통학회지
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    • 제17권2호
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    • pp.179-191
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    • 1999
  • 고속도로의 교통혼잡을 관리하기 위해서는 근본적으로 혼잡지점 상류부의 진입교통량을 제어해야 한다. 이를 위한 효과적인 램프미터링 운영전략이나 고속도로 교통정보제공방안을 수립하기 위해서는 흔잡영향권(대기행렬 길이)에 관한 신뢰성 있는 데이터가 반드시 필요하다. 고속도로의 대기행렬길이를 산정하기 위해 일반적으로 충격파이론과 대기행렬이론을 제시하고 있으나, 이들은 실질적인 목적으로 사용하는데 현실적으로 여러 가지 한계점을 지니 고 있다. 본 논문은 고속도로상의 병목현상으로 인해 발생하는 대기행렬길이와 혼잡구간의 혼잡정도를 산정할 수 있는 모형개발을 위한 기초연구로서 혼잡상태의 연속류 특성을 분석하는데 목적이 있다. 이를 위해, 본 연구에서는 서울시 도시고속도로에서 비디오촬영을 통해 수집한 실제 데이터(본선 및 램프교통량, 밀도. 속도, 그리고 대기 행렬길이)를 이용하여 진입램프지점의 혼잡상태에서 대기행렬길이가 증가하는 과정을 분석하였다. 분석결과, 흔잡기간중의 대기행렬길이는 혼잡구간에 진입하는 교통량과 병목지점을 실제로 통과하는 교통량을 이용하여 추정이 가능함을 확인하였으며, 혼잡구간의 혼잡정도 역시 실시간으로 수집이 가능한 교통량 자료를 이용하여 신뢰성 있게 판단할 수 있는 분석방법을 제시하였다.

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차량 배출물로 인한 고속도로변 CO 및 TSP의 단기 오염 농도의 평가 (An Evaluation of Short-Term Concentrations of CO and TSP From Vehicle Emissions Near Highway)

  • 장미숙;이진홍
    • 한국대기환경학회지
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    • 제10권3호
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    • pp.197-202
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    • 1994
  • The research described in this paper is conducted to estimate the short-term concentrations of nonreactive pollutants such as CO and TSP from vehicle emissions near Kyungbu Highway. An emphasis is placed on the development of a model for a hourly traffic volume for each vehicle type, which is based on real traffic data. By using the model and the calculated emission factor due to vehicle speed for each vehicle type, the emission rate of CO and TSP for each traffic line is computed. The hourly emission rate and meteorological data are used to simulate by HIWAY-2 for the distance of 5m and 10m from the downwind edge of Kyungbu Highway located in relatively uncomplicated terrain.

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도시내 다차선도로의 교통류특성 및 모형 연구 - 한남대교 지역을 중심으로 - (Traffic Flow Characteristics and Model on Multi-lane Roads in Urban Areas)

  • 김성우;김동녕
    • 대한교통학회지
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    • 제14권2호
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    • pp.7-29
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    • 1996
  • Traffic flow characteristics is analysed on eight multi-lane roads which are unsignalized in urban areas. Data of traffic flow rates by classification and average speed were gathered every ten minutes interval for twenty-four hours. Machine (NC-90A) was used to acquire the field data. The major purpose of this study is to build up speed-density models on urban arterial roads. Five different kinds of models were tested. Those models are Greenshields' model, Greenberg's model, modified Greenberg's model, Underwood's model and Drake's model. The modified Greenberg's model fits best at six points and the Greenshield's model fits best two points out of eight points. The breakpoint(Kb) of modified Greenberg's model is between 10 and 32 pcphpl. Capacity drawn from speed-volume relationships were appeared to be arround 2,000 and 2,200 pcphpl at the Hannam Bridge and the Hannam Overpass and 1,100 and 1,700 pcphpl at Namsan Tunnel(No1) and the beginning point of Gyeong-Bu Expressway.

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${\cdot}$공간적 고해상도 자동차 배출량 모형의 개발 (Development of Vehicle Emission Model with a High Resolution in Time and Space)

  • 박성규;김신도;박기학
    • 한국환경보건학회지
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    • 제30권3호
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    • pp.293-299
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    • 2004
  • Traffic represents one of the largest sources of primary air pollutants in urban area. As a consequence, numerous abatement strategies are being pursued to decrease the ambient concentration of pollutants. A characteristics of most of the these strategies is a requirement for accurate data on both the quantity and spatial distribution of emissions to air in the form of an atmospheric emission inventory database. In the case of traffic pollution, such an inventory must be compiled using activity statistics and emission factors for vehicle types. The majority of inventories are compiled using passive data from either surveys or transportation models and by their very nature tend to be out-of-date by the time they are compiled. The study of current trends is towards integrating urban traffic control systems and assessments of the environmental effects of motor vehicles. In this study, a model of vehicle emission calculation by using real-time traffic data was studied. Traffic data, which are required on a street-by-street basis, is obtained from induction loops of traffic control system. It is possible that characteristics of hourly air pollutants emission rates is obtained from hourly traffic volume and speed. An emission rates model is allocated with a high resolution space by using geographic information system (GIS). Vehicle emission model was developed with a high resolution spatial, gridded and hourly emission rates.

신설 도시부 도로의 장래 교통량 변화를 반영한 교통사고 예측모형 개발 (Development of Traffic Accident Prediction Models Considering Variations of the Future Volume in Urban Areas)

  • 이수범;홍다희
    • 대한교통학회지
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    • 제23권3호
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    • pp.125-136
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    • 2005
  • 현재 도로사업의 타당성 조사 시 사용하는 교통사고 감소편익 산정시 도로등급별로 사고율을 일률적으로 적용하고 있고, 도로특성 및 V/C에 따른 특성이 고려되고 있지 못하고 있다. 이와 같은 문제점을 해결하기 위해 본 논문에서는 도로유형별 V/C 및 교통 특성을 반영하여 사고를 예측할 수 있는 모형을 개발하여 도로의 신설 및 개량에서 그 도로의 안전성을 평가할 수 있는 방법론을 제시하였다. 본 연구에서는 초기 단계로서 도시지역 도로를 대상으로 하여 모형을 개발하였다. 우선 도로유형별로 사고에 영향을 미치는 요인을 선정하였다. 이 때 선정 기준은 도로설계단계에서 획득할 수 있는 자료를 위주로 선정하였으며. 교통량, 중앙분리대의 유 무, 교차점수. 연결로수, 횡단신호등수 그리고 차로수를 선정하였다. 각 요인과 사고와의 관계를 분석해 본 결과 모두 통계적으로 유의한 수준에서 상관성이 있는 것으로 나타났다. 본 연구에서는 도로의 등급 및 V/C에 따라 4가지 유형으로 분류하고, 각각에 대하여 포아송 선형회귀식을 통하여 사고예측모형을 도출하였으며, 실제 자료를 이용하여 검증하였다. 검증결과 모형식의 결과가 실제 사고 자료에 대해 비교적 양호하게 추정력을 보이는 것으로 나타났다. 본 연구에서는 V/C에 따른 도로유형별 사고예측모형을 개발함으로써 도로의 물리적인 특성으로 인한 교통사고예측이 가능하고, 이 결과를 도로의 신설 및 개량에 대한 타당성 조사시 사고비용을 추정하는데 활용할 수 있을 것이라 판단된다. 본 연구에서 이용한 자료가 전라북도 한 지역으로 한정되어있어 전국적인 대표성을 지니는 데에는 한계가 있을 수 있다는 사실을 밝히고자한다.

복수공항시스템 분석을 통한 제주신공항 운영방안 연구 (Analysis of Multi-Airport System Application Measures for New Jeju Airport)

  • 전제형;박정민;이준오;송병흠
    • 한국항공운항학회지
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    • 제25권3호
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    • pp.89-100
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    • 2017
  • In order for the international aviation community to efficiently and safely manage the gradual increase of air passenger demand, direction suggestions of airport traffic prediction based on future airport capacity requirements, airport design and infrastructure establishment is utilized by airport traffic data that is m comparable internationally. It is a global trend to pursue more efficient airport operating system structure to accept air passenger demand through more realistic comparable data in order to escape from the structure of reckless airport establishment and infrastructure composition based on passenger demand predictions referring to simple statistical data that has existed in the past. This study aimed to seek effective operational measures for the New Jeju airport scheduled to be opened in 2025 by time-series analysis. This study also analysed airport operation strategies, air traffic distribution strategies, cargo volume increase rates and its effectiveness of airports adopting the multi-airport system that have similar operational practices and geographical conditions. This study sought the most appropriate multi airport system application measures for New Jeju airport to promote efficiency and international competitiveness.

시정거리에 따른 고속도로 교통류 특성 변화 연구 (A Study on Traffic-Flow Characteristic Changes on Expressway by Visibility)

  • 손영태;전진숙
    • 한국ITS학회 논문지
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    • 제12권6호
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    • pp.116-126
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    • 2013
  • 강설, 안개발생 등 기상상태의 변화는 운전자의 주행환경에 영향을 미치는 기상요인으로 기상악화 시 차량의 차두간격과 속도에 영향을 미치게 되어 도로용량을 감소시키고, 교통사고 발생으로 인한 차로감소 등의 상황을 유발하여 맑은 날보다 더 큰 혼잡을 발생시키는 것으로 분석되었다. 운전자의 시정을 감소시키는 기상악화는 통행속도가 높은 고속도로가 일반도로 보다 기상상태에 따른 통행속도 변화 민감도와 교통사고 심각도가 높게 나타나는 특성이 있다고 분석됨에 따라 고속도로의 교통류 특성변화에는 시정거리가 중요하게 작용하는 것으로 판단되었다. 따라서 본 연구에서는 통행속도가 높은 고속도로 기본구간의 교통류 특성에 영향을 미치는 주요 요인으로 교통량과 속도를 선정하였으며, 일정수준 이상의 교통량 확보가 가능한 수도권내 고속도로를 분석대상으로 선정하고 기상자료와 교통자료를 수집하여 시정거리 변화에 따른 고속도로 교통류 특성변화에 관한 연구를 수행하였다. 본 연구의 수행을 위하여 기존 문헌 고찰을 통해 자료수집 및 분석방법을 수립하고 고속도로의 시정거리 수준을 선정하며, 통계적 차이 검증을 수행하고 시정거리에 따른 고속도로의 교통류 특성 변화를 분석하여 용량 및 서비스 수준 분석 시 적용할 수 있는 방안을 강구하고자 한다.

진해만 침매터널 상부의 수중소음의 일변화 및 음향적 특성 (Daily change and acoustical characteristics of underwater noise on a submerged sea tunnel in Jinhae Bay, Korea)

  • 신현옥
    • 수산해양기술연구
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    • 제51권3호
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    • pp.461-473
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    • 2015
  • Jinhae Bay located in the southern of Korean Peninsular is an important spawning area in Korea. By some preliminary studies it was measured several times that adult Pacific codes (Gadus microcephalus) were passed (swimming layer: 15 to 18 m) over a submerged sea tunnel (sea bottom: about 30 m) rather than another immigration route when the Pacific codes were tagged surgically with an acoustic transmitters and released inside of the Bay. There is a possibility that the Pacific codes and the other fishes use the route on the sea tunnel as an immigration route are affected by a human-generated underwater noise around the sea tunnel due to the sea tunnel traffic. On this study the 25-hour measurements of the underwater noise level by water layer were conducted with a hydrophone attached on a portable CTD and an underwater noise level meter during four seasons, and the acoustical characteristics of the underwater noise was analyzed. The mean traffic volume for one hour at the sea tunnel on the spring was shown the largest value of 1,408 [standard deviation (SD): 855] vehicles among four seasons measurement. The next one was ordered on the autumn [1,145 (SD: 764)], winter [947 (SD: 598)] and summer [931 (SD: 558)] vehicles. Small size vehicle was formed 84.3% of the traffic volume, and ultra-small size, medium size, large size and extra-large size of the vehicle were taken possession of 8.7%, 3.2%, 2.0% and 1.8%, respectively. On the daily change of the noise level in vertical during four seasons the noise level of 5 m-layer was shown the highest value of 121.2 (SD: 3.6) dB (re $1{\mu}Pa$), the next one was 10 m-layer [120.7 (SD: 3.5)], 2 m- and 15 m-layer [120.3 (SD: 3.5 to 3.7)] and 1 m-layer [119.2 (SD: 3.6)] dB (re $1{\mu}Pa$). In relation with the seasonal change of the noise level the average noise level measured during autumn was shown the highest value of 123.9 (SD: 2.6) dB (re $1{\mu}Pa$), the next was during summer [121.4 (SD: 3.2)], spring [118.0 (SD: 3.4)] and winter [116.5 (SD: 5.1)] dB (re $1{\mu}Pa$). In results of eigenray computation when the real bathymetry data (complicate shape of sea bed) was applied the average number of eigenray was 2.68 times (eigenrays: 11.03 rays) higher than those of model bathymetry (flat and slightly sloped sea bottom). When the real bathymetric data toward inside (water depth becomes shallow according to a distance between the source of noise and hydrophone) of the Bay was applied on the eigenrays calculation the number of the eigenray was 1.31 times (eigenrays: 12.49 rays) larger than the real bathymetric data toward outside (water depth becomes deep with respect to the distance). But when the model bathymetric data toward inside of the Bay was applied the number of the eigenray was 1.05 times (eigenrays: 4.21 rays) larger than the model bathymetric data toward outside.

Big Data Based Dynamic Flow Aggregation over 5G Network Slicing

  • Sun, Guolin;Mareri, Bruce;Liu, Guisong;Fang, Xiufen;Jiang, Wei
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제11권10호
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    • pp.4717-4737
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    • 2017
  • Today, smart grids, smart homes, smart water networks, and intelligent transportation, are infrastructure systems that connect our world more than we ever thought possible and are associated with a single concept, the Internet of Things (IoT). The number of devices connected to the IoT and hence the number of traffic flow increases continuously, as well as the emergence of new applications. Although cutting-edge hardware technology can be employed to achieve a fast implementation to handle this huge data streams, there will always be a limit on size of traffic supported by a given architecture. However, recent cloud-based big data technologies fortunately offer an ideal environment to handle this issue. Moreover, the ever-increasing high volume of traffic created on demand presents great challenges for flow management. As a solution, flow aggregation decreases the number of flows needed to be processed by the network. The previous works in the literature prove that most of aggregation strategies designed for smart grids aim at optimizing system operation performance. They consider a common identifier to aggregate traffic on each device, having its independent static aggregation policy. In this paper, we propose a dynamic approach to aggregate flows based on traffic characteristics and device preferences. Our algorithm runs on a big data platform to provide an end-to-end network visibility of flows, which performs high-speed and high-volume computations to identify the clusters of similar flows and aggregate massive number of mice flows into a few meta-flows. Compared with existing solutions, our approach dynamically aggregates large number of such small flows into fewer flows, based on traffic characteristics and access node preferences. Using this approach, we alleviate the problem of processing a large amount of micro flows, and also significantly improve the accuracy of meeting the access node QoS demands. We conducted experiments, using a dataset of up to 100,000 flows, and studied the performance of our algorithm analytically. The experimental results are presented to show the promising effectiveness and scalability of our proposed approach.