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Modeling of water temperature, dissolved oxygen, and fish growth rate in stratified fish ponds using stochastic input variables.

机译:使用随机输入变量对分层鱼池中的水温,溶解氧和鱼生长速率进行建模。

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摘要

A computer model has been developed to simulate water temperature, dissolved oxygen, and fish growth in a stratified fishpond using stochastic weather variables as input. The model consists of generated weather variables and calculated water quality and fish growth rate. The weather variables are generated using Monte Carlo methods, and include solar radiation, air temperature, and wind speed and direction. The water quality parameters are state variables that include water temperature, dissolved oxygen (DO), phytoplankton (in terms of chlorophyll a, Chla), and total ammonia nitrogen (TAN). Water temperature and DO are predicted at three depths in the water column and the other state variables are assumed to be uniformly distributed. Fish growth rates are predicted under the effects of weather variables and water quality for various pond fertilization treatments. The model has been calibrated and validated using data from the Pond Dynamics/Aquaculture Collaborative Research Program (PD/A CRSP) database. To evaluate the model's performance for different pond management strategies and different locations, model simulations were compared to data collected from 36 fishponds with 11 fertilization treatments in Thailand, Rwanda, and Honduras sites.;The comparisons of simulations and observed data indicate that the model is capable of predicting water temperature and DO stratification and fish growth for simulations up to six months long. The simulated results indicate that water temperature and DO are affected by weather variables, especially solar radiation. Changes in Chla and DO are affected by environmental conditions and fish grazing. The stochastically generated weather variables have little influence on fish growth. Fish growth rate is affected by changes in Chla and fertilization rate because the model assumes that phytoplankton is the preferred food for tilapia.;The current model is limited by the uncertainty of available weather data and the corresponding limitations in the weather models. The model did not capture the Chla dynamics for some ponds for the Thailand site. These ponds also had a high variability in observed Chla for pond replicates, highlighting the complexity of the pond ecosystem. The fish growth simulations represent the effects of weather variables, DO and TAN concentrations.
机译:使用随机天气变量作为输入,已开发出计算机模型来模拟分层鱼塘中的水温,溶解氧和鱼类生长。该模型由生成的天气变量以及计算出的水质和鱼类生长速率组成。天气变量是使用蒙特卡洛方法生成的,包括太阳辐射,气温,风速和风向。水质参数是状态变量,包括水温,溶解氧(DO),浮游植物(以叶绿素a,Chla表示)和总氨氮(TAN)。预测水柱中三个深度处的水温和溶解氧,并假设其他状态变量均匀分布。在各种池塘施肥处理中,在天气变量和水质的影响下,可以预测鱼的生长速度。该模型已使用“池塘动力学/水产养殖合作研究计划”(PD / A CRSP)数据库中的数据进行了校准和验证。为了评估模型在不同池塘管理策略和不同地点的性能,将模型模拟与从泰国,卢旺达和洪都拉斯站点从11种施肥处理的36个鱼塘中收集的数据进行了比较;模拟和观察到的数据的比较表明模型是能够预测长达六个月的模拟水温,溶解氧分层和鱼类生长。模拟结果表明,水温和溶解氧受天气变量,特别是太阳辐射的影响。 Chla和DO的变化受环境条件和鱼类放牧的影响。随机生成的天气变量对鱼类生长影响很小。由于该模型假设浮游植物是罗非鱼的首选食物,因此鱼类的生长速度受Chla和受精率变化的影响。当前模型受可用天气数据的不确定性和天气模型中相应限制的限制。该模型未捕获泰国站点某些池塘的Chla动态。这些池塘在观察到的Chla中也具有很高的变异性,从而体现出池塘生态系统的复杂性。鱼的生长模拟代表天气变量,DO和TAN浓度的影响。

著录项

  • 作者

    Lu, Zhimin.;

  • 作者单位

    University of California, Davis.;

  • 授予单位 University of California, Davis.;
  • 学科 Engineering Agricultural.;Agriculture Fisheries and Aquaculture.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 258 p.
  • 总页数 258
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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