Private Vehicles Greenhouse Gas Emission Estimation at Street Level for Berlin Based on Open Data

Veit Ulrich, Josephine Brückner, M. Schultz, S. Vardag, C. Ludwig, J. Fürle, M. Zia, S. Lautenbach, A. Zipf
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引用次数: 1

Abstract

As one of the major greenhouse gas (GHG) emitters that has not seen significant emission reductions in the previous decades, the transportation sector requires special attention from policymakers. Policy decisions, thereby need to be supported by traffic emission assessments. Estimations of traffic emissions often rely on huge amounts of actual traffic data whose availability is limited, hampering the transferability of the estimation approaches in time and space. Here, we propose a high-resolution estimation of traffic emissions, which is based entirely on open data, such as the road network and points of interest derived from OpenStreetMap (OSM). We estimated the annual average daily GHG emissions from individual motor traffic for the OSM road network in Berlin by combining the estimated Annual Average Daily Traffic Volume (AADTV) with respective emission factors. The AADTV was calculated by simulating car trips with the open routing engine Openrouteservice, weighted by activity functions based on statistics of the German Mobility Panel. Our estimated total annual GHG emissions were 7.3 million t CO2 equivalent. The highest emissions were estimated for the motorways and major roads connecting the city center with the outskirts. The application of the approach to Berlin showed that the method could reflect the traffic pattern. As the input data is freely available, the approach can be applied to other study areas within Germany with little additional effort.
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基于开放数据的柏林街道私家车温室气体排放估算
作为温室气体(GHG)的主要排放源之一,交通运输行业在过去几十年里没有出现显著的减排,需要政策制定者的特别关注。因此,政策决定需要得到交通排放评估的支持。交通排放的估计往往依赖于大量的实际交通数据,而这些数据的可用性有限,妨碍了估计方法在时间和空间上的可转移性。在这里,我们提出了一种高分辨率的交通排放估计,它完全基于开放数据,例如来自OpenStreetMap (OSM)的道路网络和兴趣点。通过将估计的年平均每日交通量(AADTV)与各自的排放因子相结合,我们估计了柏林OSM路网中个人机动车的年平均每日温室气体排放量。AADTV通过使用开放路由引擎openroutesservice模拟汽车行程来计算,并根据德国移动小组的统计数据通过活动函数加权。我们估计的年温室气体排放总量为730万吨二氧化碳当量。据估计,高速公路和连接市中心和郊区的主要道路的排放量最高。该方法在柏林的应用表明,该方法能较好地反映交通模式。由于输入数据是免费提供的,因此可以将该方法应用于德国境内的其他研究领域,几乎不需要额外的努力。
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