基于强化学习的混合GR-DQN模型在水产养殖鱼鳞病预测中的应用

Bhawna Kol , Khetavath Jairam Naik
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引用次数: 0

摘要

水产养殖是一个快速发展的产业,为不断增长的人口提供营养食品,并为各国带来可观的收入。水生动物的生存和健康需要保持良好的水质;否则,它可能引起许多疾病,如疖病、细菌性鳃病等。传统上可用的水质分析方法通常由于耗时和缺乏准确性而难以执行。本研究利用最优深度强化学习技术——混合门控循环单元(GRU)网络和深度q -网络(DQN),开发了一种新的方法,通过预测水产养殖环境中的鱼鳞病(白斑病)来分析水产养殖水质状况。带DQN的GRU深度学习模型通过逼近q值来帮助改进预测,并产生损失函数来指导学习过程;对预测正确的人给予奖励,从而提高疾病检测的正确率。在“Pondsdata”数据集上实现了混合GR-DQN模型,并与现有模型M-DQN进行了比较。在相同的数据集上,与现有模型M-DQN的84.16%的准确率相比,Hybrid GR-DQN的准确率达到了94.69%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Reinforcement Learning based Hybrid GR-DQN Model for Predicting Ichthyophthiriosis Disease in Aquaculture Through Water Quality Analysis
Aquaculture is a fast-growing industry that provides nutritious food to a growing population and generates substantial revenue for countries. The high water quality is required to be maintained for aquatic animal’s survival and health; otherwise, it may cause many diseases like Furunculosis, Bacterial gill disease, and others. Traditionally available methods for water quality analysis are typically difficult to perform due to being time-consuming and lacking accuracy. In this study, a new approach has been developed using an optimal deep reinforcement learning technique, Hybrid Gated Recurrent Unit (GRU) network with Deep Q-Network (DQN), to analyze the state of the water quality of aquaculture by predicting Ichthyophthiriosis (white spot diseases) in an aquaculture environment. The GRU deep learning model with DQN helps in improving the prediction by approximating Q-values and produces a loss function to guide the learning process; rewards are provided due to correct predictions, thereby disease detection corrected accuracy was enhanced. The proposed hybrid GR-DQN model was implemented on the “Pondsdata” dataset and compared the results with the existing model M-DQN. The Hybrid GR-DQN achieved 94.69% accuracy in comparison to the existing model M-DQN’s 84.16% accuracy on the same dataset.
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