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A novel GIS-based tool for predicting coastal litter accumulation and optimising coastal cleanup actions

机译:一种基于GIS的新颖工具,可预测沿海垃圾堆积并优化沿海清理行动

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摘要

Effective site selection is a key component of maximising debris removal during coastal cleanup actions. We tested a GIS-based predictive model to identify marine litter hotspots in Lofoten, Norway based on shoreline gradient and shape. Litter density was recorded at 27 randomly selected locations with 5 transects sampled in each. Shoreline gradient was a limiting factor to litter accumulation when 35%. The curvature of the coastline correlated differently with litter density at different spatial scales. The greatest litter concentrations were in small coves located on larger headlands. A parsimonious model scoring sites on a scale of 1-5 based on shoreline slope and shape had the highest validation success. Sites unlikely to have high litter concentrations were successfully identified and could be avoided. The accuracy of hotspot identifications was more variable, and presumably more parameters influencing litter deposition, such as shoreline aspect relative to prevailing winds, should be incorporated.
机译:有效的选址是在沿海清洁行动中最大程度地清除碎片的关键组成部分。我们测试了基于GIS的预测模型,以基于海岸线的坡度和形状来识别挪威罗弗敦的海洋垃圾热点。在随机选择的27个位置记录了凋落物密度,每个位置采样了5个样点。当> 35%时,海岸线梯度是垃圾堆积的限制因素。在不同的空间尺度上,海岸线的曲率与垃圾密度有不同的相关性。凋落物浓度最大的是位于较大岬角的小海湾。根据海岸线的坡度和形状,以1-5为比例的简约模型评分站点具有最高的验证成功率。已成功确定了不太可能乱扔垃圾的地点,可以避免。热点识别的准确性更具可变性,应该考虑更多影响垫料沉积的参数,例如相对于盛行风的海岸线特征。

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