scholarly journals Tasks and performance indicators of intelligent neural network support for decisions on managing labor potential of the fishery complex

Author(s):  
О.Г. Огий ◽  
В.Ю. Осипов ◽  
A.Б. Тристанов ◽  
Н.А. Жукова

Реализация стратегии развития рыбохозяйственного комплекса требует использования принципиально новой модели управления его социально-трудовой сферой, основанной на постоянном развитии: 1) человеческого потенциала, 2) производственной среды (процессов и технологий), 3 ) инструменты управления. Наиболее полным и эффективным решением этих задач является концепция управления трудовым потенциалом. Учитывая, что трудовой потенциал - это сложно формализуемый объект, требующий многомодельного подхода, для моделирования процессов управления им целесообразно использовать классические и новые искусственные нейронные сети. В статье представлена ​​многоуровневая структура показателей эффективности интеллектуальной нейросетевой поддержки принятия решений по управлению трудовым потенциалом рыбохозяйственного комплекса и сформулированы одна обобщенная и шестнадцать частных задач, решение которых осуществляется методами нейросетевого моделирования и направлено. при достижении заданных значений показателей эффективности. Implementation of the strategy for the development of the fishery complex requires the use of a fundamentally new model of management of its social and labor sphere, based on continuous development of: 1) human potential, 2) work environment (processes and technology), 3) management tools. The most complete and effective solution to these tasks is the concept of labor potential management. Taking into account that labor potential is a difficult-to-formalize object that requires a multi-model approach, it is advisable to use classical and new artificial neural networks to model the processes of managing it. The article presents a multi-level structure of efficiency indicators of intelligent neural network support for decisions on managing the labor potential of the fishery complex and formulates one generalized and sixteen particular tasks, solution of which is carried out by methods of neural network modeling and aimed at achieving specified values ​​of efficiency indicators.

2020 ◽  
pp. 1-12
Author(s):  
Wu Xin ◽  
Qiu Daping

The inheritance and innovation of ancient architecture decoration art is an important way for the development of the construction industry. The data process of traditional ancient architecture decoration art is relatively backward, which leads to the obvious distortion of the digitalization of ancient architecture decoration art. In order to improve the digital effect of ancient architecture decoration art, based on neural network, this paper combines the image features to construct a neural network-based ancient architecture decoration art data system model, and graphically expresses the static construction mode and dynamic construction process of the architecture group. Based on this, three-dimensional model reconstruction and scene simulation experiments of architecture groups are realized. In order to verify the performance effect of the system proposed in this paper, it is verified through simulation and performance testing, and data visualization is performed through statistical methods. The result of the study shows that the digitalization effect of the ancient architecture decoration art proposed in this paper is good.


2009 ◽  
Vol 29 (6) ◽  
pp. 1529-1531 ◽  
Author(s):  
Wei-ren SHI ◽  
Yan-xia WANG ◽  
Yun-jian TANG ◽  
Min FAN

2012 ◽  
Vol 34 (6) ◽  
pp. 1414-1419
Author(s):  
Qing-bing Sang ◽  
Zhao-hong Deng ◽  
Shi-tong Wang ◽  
Xiao-jun Wu

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