Model-based versus model-free feeding control and water-quality monitoring for fish-growth tracking in aquaculture systems

IF 1.8 Q3 AUTOMATION & CONTROL SYSTEMS
Fahad Aljehani , Ibrahima N’Doye , Taous-Meriem Laleg-Kirati
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引用次数: 0

Abstract

This paper proposes model-based and model-free control approaches to monitor the feeding rate and water quality for fish-growth tracking in aquaculture systems. The representative fish-growth model is revisited, which describes the total biomass change by incorporating the fish population density and mortality. Due to the challenging task of measuring the total fish biomass and population data, the new dynamic population model is validated with individual fish-growth data for tracking control. Ammonia exposure is a significant challenge in the fish-population growth tracking problem, affecting fish health and survival. To address this challenge, traditional and optimal controllers are first designed to track the weight reference within suboptimal temperature and dissolved oxygen (DO) profiles under various un-ionized ammonia (UIA) exposure levels by manipulating relative feeding. Then, a Q-learning approach is proposed to learn an optimal feeding-control policy from simulated data on fish-growth weight trajectories while managing ammonia effects. The proposed Q-learning feeding control prevents fish mortality and achieves good tracking errors for fish weight under UIA levels. However, it maintains a relative food consumption that potentially underfeeds fish. Finally, an optimal predictive algorithm that includes the temperature, DO, and UIA is proposed to optimize the feeding and water quality of the dynamic fish-population growth process, indicating that fish mortality is decreased and food consumption is reduced in all cases of UIA exposure.

水产养殖系统中基于模型与无模型的鱼类生长跟踪饲养控制和水质监测
本文提出了基于模型和无模型的控制方法来监测水产养殖系统中鱼类生长跟踪的喂养率和水质。重新审视了具有代表性的鱼类生长模型,该模型通过结合鱼类种群密度和死亡率来描述总生物量的变化。由于测量鱼类总生物量和种群数据的任务具有挑战性,新的动态种群模型用个体鱼类生长数据进行了验证,用于跟踪控制。氨暴露是鱼类种群增长跟踪问题中的一个重大挑战,影响鱼类的健康和生存。为了应对这一挑战,首先设计了传统和最佳控制器,通过操纵相对进料,在各种非电离氨(UIA)暴露水平下,在次优温度和溶解氧(DO)分布范围内跟踪重量参考。然后,提出了一种Q学习方法,在管理氨效应的同时,从鱼类生长重量轨迹的模拟数据中学习最优喂养控制策略。所提出的Q学习喂养控制可以防止鱼类死亡,并在UIA水平下实现良好的鱼类体重跟踪误差。然而,它保持着相对的食物消耗,这可能会使鱼类吃不饱。最后,提出了一种包括温度、DO和UIA的最优预测算法,以优化鱼类种群动态增长过程的喂养和水质,表明在所有暴露于UIA的情况下,鱼类死亡率都降低了,食物消耗量也减少了。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IFAC Journal of Systems and Control
IFAC Journal of Systems and Control AUTOMATION & CONTROL SYSTEMS-
CiteScore
3.70
自引率
5.30%
发文量
17
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