Litcius/Paper detail

Accurate Prediction of Dissolved Oxygen in Perch Aquaculture Water by DE-GWO-SVR Hybrid Optimization Model

Xingsheng Bao, Yilun Jiang, Lintong Zhang, Bo Liu, Linjie Chen, Wenqing Zhang, Lihang Xie, Xinze Liu, Fangfang Qu, Renye Wu

2024Applied Sciences15 citationsDOIOpen Access PDF

Abstract

In order to realize the accurate and reliable prediction of the change trend of dissolved oxygen (DO) content in California perch aquaculture water, this paper proposes a second-order hybrid optimization support vector machine (SVR) model based on Differential Evolution (DE) and Gray Wolf Optimizer (GWO), shortened to DE-GWO-SVR, to predict the DO content with the characteristics of nonlinear and non-smooth water quality data. Experimentally, data for the water quality, including pH, water temperature, conductivity, salinity, total dissolved solids, and DO, were collected. Pearson’s correlation coefficient (PPMCC) was applied to explore the correlation between each water quality parameter and DO content. The optimal DE-GWO-SVR model was established and compared with models based on SVR, back-propagation neural network (BPNN), and their optimization models. The results show that the DE-GWO-SVR model proposed in this paper can effectively realize the nonlinear prediction and global optimization performance. Its R2, MSE, MAE and RMSE can be up to 0.94, 0.108, 0.2629, and 0.3293, respectively, which is better than those of other models. This research provides guidance for the efficient prediction of DO in perch aquaculture water bodies for increasing the aquaculture effectiveness and reducing the aquaculture risk, providing a new exploratory path for water quality monitoring.

Topics & Concepts

AquacultureWater qualitySupport vector machineCorrelation coefficientSalinityPerchEnvironmental scienceComputer scienceArtificial intelligenceMachine learningFisheryFish <Actinopterygii>EcologyBiologyWater Quality Monitoring TechnologiesHydrological Forecasting Using AIWater Quality Monitoring and Analysis