首页> 外文期刊>Journal of Applied Ichthyology >Progress in modeling quality in aquaculture: an application of the Self-Organizing Map to the study of skeletal anomalies and meristic counts in gilthead seabream (Sparus aurata, L. 1758).
【24h】

Progress in modeling quality in aquaculture: an application of the Self-Organizing Map to the study of skeletal anomalies and meristic counts in gilthead seabream (Sparus aurata, L. 1758).

机译:水产养殖质量建模方面的进展:自组织映射在金头鲷的骨骼异常和体位计数研究中的应用(Sparus aurata,L。1758)。

获取原文
获取原文并翻译 | 示例
           

摘要

One of the most common drawbacks of artificial life conditions imposed by aquaculture is the quite high presence of skeletal anomalies (SAs) in reared fish, which reduce both functional performances and marketing image/commercial value of the reared lots. Thus, skeletal malformations and their incidence are one of the most important factors affecting fish farmer's production costs, and several efforts have been due to develop appropriate tools in detecting patterns of co-variation among rearing parameters and fish quality. In this paper we explore the advantages of using Self-Organized Maps (SOMs) when dealing with the analysis of correlations between the pattern of SA presence and rearing parameters in gilthead seabream (Sparus aurata L.), that is a largely reared fish of high commercial value. SOM, which is one of the best known neural networks with unsupervised learning rules, were applied to develop a model of the occurrence of SAs, both in terms of type and quantity, in seabream lots from different rearing approaches (extensive, semi-intensive and intensive). The trained SOMs classified lots according to the variation observed in the different weights of SAs, but also allows the detection of a series of correspondence, namely between: (i) the patter of SAs occurrence and the different rearing approach currently used in seabream aquaculture; and (ii) the total SAs incidence and the variability of meristic counts, represent a completely independent dataset. Mesocosms resulted the best rearing approach to produce wild-like fish, whereas intensive rearing is characterized by the large presence of SA. Globally, results suggested that this approach is reliable to be used for estimate the distance between aquaculture products and the wild-like phenotype used as quality reference.
机译:水产养殖施加的人工生活条件的最常见缺点之一是,饲养鱼中骨骼异常(SAs)的含量很高,这既降低了养殖性能,又降低了养殖场的市场形象/商业价值。因此,骨骼畸形及其发生率是影响养鱼者生产成本的最重要因素之一,并且已经做出了一些努力来开发合适的工具来检测饲养参数和鱼类质量之间的协变模式。在本文中,我们探索了在处理金头鲷(Sparus aurata L.)中SA的存在方式与饲养参数之间的相关性时,使用自组织图(SOM)的优势,该鲷鱼是高饲养的高头鱼商业价值。 SOM是最著名的具有无监督学习规则的神经网络之一,被用于开发来自不同饲养方式(广泛,半密集和半饲养)的鲷鱼中SA发生的模型,无论是类型还是数量密集)。受过训练的SOM根据在不同SAs权重中观察到的变化对批次进行分类,但也可以检测到一系列对应关系,即:(i)SAs发生的模式与目前在鲷鱼养殖中使用的不同饲养方法之间; (ii)SA的总发生率和综合计数的可变性代表了一个完全独立的数据集。中等规模养殖是生产野生鱼类的最佳饲养方法,而密集养殖的特点是大量存在SA。在全球范围内,结果表明该方法可可靠地用于估算水产养殖产品与用作质量参考的野生型表型之间的距离。

著录项

相似文献

  • 外文文献
  • 中文文献
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号