综述与专题评论

人工神经网络在水产领域中的应用

  • 姜鹏飞 ,
  • 郑杰 ,
  • 陈瑶 ,
  • 孙娜 ,
  • 祁立波 ,
  • 李德阳 ,
  • 林松毅
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  • 1(大连工业大学 食品学院,国家海洋食品工程技术研究中心,辽宁 大连,116033)
    2(辽宁省海洋水产科学研究院,辽宁 大连,116023)
硕士,高级工程师(林松毅教授为通讯作者,E-mail:linsongyi730@163.com)

收稿日期: 2021-01-13

  修回日期: 2021-04-12

  网络出版日期: 2021-11-04

基金资助

国家重点研发计划“蓝色粮仓科技创新”重点专项(2019YFD0902000)

Application of artificial neural network in aquaculture

  • JIANG Pengfei ,
  • ZHENG Jie ,
  • CHEN Yao ,
  • SUN Na ,
  • QI Libo ,
  • LI Deyang ,
  • LIN Songyi
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  • 1(National Engineering Research Center of Seafood,School of Food Science and Technology, Dalian Polytechnic University,Liaoning 116033,China)
    2(Liaoning Ocean and Fisheries Science Research Institute,Liaoning 116023,China)

Received date: 2021-01-13

  Revised date: 2021-04-12

  Online published: 2021-11-04

摘要

人工神经网络作为一种预测模型,具有非线性信息处理能力,被广泛应用于自动化、医学、经济、化工等领域。该文总结了人工神经网络在水产品中的应用情况,包括水产养殖过程中物种识别、养殖环境监控、养殖技术管理以及水产加工过程中工艺条件的优化,同时总结了水产品中蛋白质、脂质、糖类等活性成分定量监控,并且以营养性、安全性和保藏性的角度对水产品进行品质评价。最后,在此基础上对人工神经网络在水产方面的应用进行了展望。

本文引用格式

姜鹏飞 , 郑杰 , 陈瑶 , 孙娜 , 祁立波 , 李德阳 , 林松毅 . 人工神经网络在水产领域中的应用[J]. 食品与发酵工业, 2021 , 47(19) : 288 -295 . DOI: 10.13995/j.cnki.11-1802/ts.026742

Abstract

Artificial neural networks as a kind of forecasting model,which has the non-linear information processing ability,are widely used in automation,medical treatment,economy,chemical industry and other fields.In this paper,we summarizes the application of artificial neural networks (ANN) in the aquatic products,including species identification,breeding environment explanation,breeding technology management.In addition,it mainly involves the quantitative monitoring of active ingredients such as protein,lipid,carbohydrate in aquatic products,and the quality of aquatic products is evaluated from the perspective of nutrition,safety and preservation.

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