A Cloud Computing Architecture to Map Trawling Activities Using Positioning Data

A. Galdelli, A. Mancini, A. Tassetti, C. F. Vega, E. Armelloni, G. Scarcella, G. Fabi, P. Zingaretti
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引用次数: 7

Abstract

Descriptive and spatially-explicit information on fisheries plays a key role for an efficient integrated management of the maritime activities and the sustainable use of marine resources. However, this information is today still hard to obtain and, consequently, is a major issue for implementing Marine Spatial Planning (MSP). Since 2002, the Automatic Identification System (AIS) has been undergoing a major development allowing now for a real time geo-tracking and identification of equipped vessels of more than 15m in length overall (LOA) and, if properly processed, for the production of adequate information for MSP. Such monitoring systems or other low-cost and low-burden solutions are still missing for small vessels (LOA < 12m), whose catches and fishing effort remain spatially unassessed and, hence, unregulated. In this context, we propose an architecture to process vessel tracking data, understand the behaviour of trawling fleets and map related fishing activities. It could be used to process not only AIS data but also positioning data from other low cost systems as IoT sensors that share their position over LoRa and 2G/3G/4G links. Analysis gives back important and verified data (overall accuracy of 92% for trawlers) and opens up development perspectives for monitoring small scale fisheries, helping hence to fill fishery data gaps and obtain a clearer picture of the fishing grounds as a whole.
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利用定位数据绘制拖网活动地图的云计算架构
关于渔业的描述性和明确的空间信息对海洋活动的有效综合管理和海洋资源的可持续利用起着关键作用。然而,这些信息今天仍然很难获得,因此,这是实施海洋空间规划(MSP)的一个主要问题。自2002年以来,自动识别系统(AIS)一直在进行重大发展,现在可以实时跟踪和识别总长度超过15米(LOA)的装备船舶,如果处理得当,可以为MSP提供足够的信息。对于小型船只(LOA < 12米)来说,这种监测系统或其他低成本和低负担的解决方案仍然缺乏,这些船只的渔获量和捕捞量仍然没有进行空间评估,因此不受监管。在这种情况下,我们提出了一个架构来处理船只跟踪数据,了解拖网船队的行为和绘制相关的捕捞活动。它不仅可以用于处理AIS数据,还可以处理来自其他低成本系统的定位数据,例如通过LoRa和2G/3G/4G链路共享位置的物联网传感器。分析提供了重要和经过验证的数据(拖网渔船的总体准确性为92%),并为监测小规模渔业开辟了发展前景,从而有助于填补渔业数据空白,并获得渔场整体的更清晰图景。
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