Department of Electrical and Computer Engineering, Texas A&M University, College Station, TX 79016, USA.
Department of Soil and Crop Sciences, Texas A&M University, College Station, TX 79016, USA.
Sensors (Basel). 2022 May 5;22(9):3510. doi: 10.3390/s22093510.
Nutrient regulation in aquaponic environments has been a topic of research for many years. Most studies have focused on appropriate control of nutrients in an aquaponic set-up, but very little research has been conducted on commercial-scale applications. In our model, the input data were sourced on a weekly basis from three commercial aquaponic farms in Southeast Texas over the course of a year. Due to the limited number of data points, dimensionality reduction techniques such as pairwise correlation matrix were used to remove the highly correlated predictors. Feature selection techniques such as the XGBoost classifier and Recursive Feature Elimination with ExtraTreesClassifier were used to rank the features in order of their relative importance. Ammonium and calcium were found to be the top two nutrient predictors, and based on the months in which lettuce was cultivated, the median of these nutrient values from the historical dataset served as the optimal concentration to be maintained in the aquaponic solution to sustain healthy growth of tilapia fish and lettuce plants in a coupled set-up. To accomplish this, Vernier sensors were used to measure the nutrient values and actuator systems were built to dispense the appropriate nutrient into the ecosystem via a closed loop.
水培环境中的营养调控是多年来的研究课题。大多数研究都集中在水培系统中适当控制营养物质,但很少有关于商业规模应用的研究。在我们的模型中,输入数据每周从德克萨斯州东南部的三个商业水培农场采集一次,为期一年。由于数据点数量有限,使用了成对相关矩阵等降维技术来去除高度相关的预测因子。特征选择技术,如 XGBoost 分类器和带有 ExtraTreesClassifier 的递归特征消除,用于根据相对重要性对特征进行排序。铵和钙被发现是前两种营养预测因子,并且根据种植生菜的月份,历史数据集的这些营养值的中位数作为在水培溶液中维持的最佳浓度,以维持在耦合设置中罗非鱼和生菜植物的健康生长。为了实现这一目标,使用 Vernier 传感器来测量营养值,并构建执行器系统通过闭环将适当的营养物质分配到生态系统中。