一种特征编码方法和云计算架构来映射钓鱼活动

A. Galdelli, A. Mancini, E. Frontoni, A. Tassetti
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引用次数: 2

摘要

监测鱼类种群和船队活动是海洋空间规划的关键。近年来,分别针对长度超过12米和15米的船只开发了船舶监测系统和自动识别系统,而小型船只(长度小于12米)仍然未被跟踪,并且在很大程度上不受管制,尽管它们占地中海所有捕鱼活动的83%。在本文中,我们提出了一种利用低成本的LoRa/蜂窝网络获取和处理小型船只定位数据的架构,以及一种可以轻松扩展到处理和绘制小型渔业地图的特征编码方法。特征编码方法使用马尔可夫链来模拟每艘船的连续行为状态(例如,捕鱼,蒸)之间的转换,并对其活动进行分类。使用k-fold和Leave One Boat Out交叉验证对该方法进行了评估,在这两种情况下,它都显著改善了捕鱼活动的分类。将这种低成本和开源技术与人工智能相结合,可以为沿海资源和渔业管理以及跨境海洋空间规划提供更综合和透明的平台。它使新的监测战略能够有效地包括小型船队,并支持设计面向最佳利用海洋资源的新政策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Feature Encoding Approach and a Cloud Computing Architecture to Map Fishing Activities
Monitoring fish stocks and fleets’ activities is key for Marine Spatial Planning. In recent years Vessel Monitoring System and Automatic Identification System have been developed for vessels longer than 12 and 15m in length, respectively, while small scale vessels (< 12m in length) remain untracked and largely unregulated, even though they account for 83% of all fishing activity in the Mediterranean Sea. In this paper we present an architecture that makes use of a low-cost LoRa/cellular network to acquire and process positioning data from small scale vessels, and a feature encoding approach that can be easily extended to process and map small scale fisheries. The feature encoding method uses a Markov chain to model transitions between successive behavioural states (e.g., fishing, steaming) of each vessel and classify its activity. The approach is evaluated using k-fold and Leave One Boat Out cross-validations and, in both cases, it results in significant improvements in the classification of fishing activities. The use of a such low-cost and open source technology coupled to artificial intelligence could open up potential for more integrated and transparent platforms to inform coastal resource and fisheries management, and cross-border marine spatial planning. It enables a new monitoring strategy that could effectively include small-scale fleets and support the design of new policies oriented to the optimal use of marine resources.
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