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首页> 外文期刊>Aquaculture Environment Interactions >Assessing the impact of aquaculture farms using remote sensing: an empirical neural network algorithm for Ildırı Bay, Turkey
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Assessing the impact of aquaculture farms using remote sensing: an empirical neural network algorithm for Ildırı Bay, Turkey

机译:使用遥感评估水产养殖场的影响:土耳其Ildırı湾的经验神经网络算法

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ABSTRACT: The potential impact of aquaculture on Ildırı Bay, Turkey, was assessed using remote sensing data collected over 37 d between September 2009 and February 2011. The dataset was improved by applying a local empirical neural network (NN) algorithm. Impact was evaluated in terms of total suspended matter (TSM) and Secchi disk depth (SDD) as effective variables showing changes in underwater light fields in each defined subarea. Subareas were farm sites with their peripheries (impact zones) and the whole study area for 2 different regions within the bay. Real-time datasets of TSM and SDD were obtained for 7 different days within the same period. To create an NN algorithm, the full swath of geo-located products (with 300 m resolution) from the MERIS sensor aboard ENVISAT was used along with in situ data. The NN algorithm showed good performance, with an accuracy of 97.46% for TSM and 99.58% for SDD. No significant (Fs 0.05) impact on the environment was observed; however, the time series analyses of similarities and anomalies showed that the impact zones have different temporal characteristics compared to the whole bay and vice versa. The highest particle concentrations and lowest light penetration occurred in the spring and summer. Water circulation patterns were identified as the major force determining the distribution and hence the source of particles and were also applied to reflect the particle loads introduced by feeding activity performed in aquaculture facilities. The influence of dissolved organic carbon to TSM and SDD indicates that the contribution of colored dissolved organic matter is another important variable for effective monitoring of aquaculture activity in the bay.
机译:摘要:使用2009年9月至2011年2月之间37 d内收集的遥感数据评估了水产养殖对土耳其Ildırı湾的潜在影响。通过应用本地经验神经网络(NN)算法对数据集进行了改进。根据总悬浮物(TSM)和Secchi圆盘深度(SDD)作为有效变量来评估影响,这些变量显示了每个定义分区中水下光场的变化。分区是具有周边(影响区)和整个研究区域的农业场所,位于海湾内的两个不同区域。在同一时期内连续7天获得了TSM和SDD的实时数据集。为了创建NN算法,将ENVISAT上MERIS传感器提供的全部地理定位产品(分辨率为300 m)与原位数据一起使用。 NN算法表现出良好的性能,TSM的准确度为97.46%,SDD的准确度为99.58%。没有观察到对环境有显着影响( F s

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