Dissolved oxygen prediction in prawn ponds from a group of one step predictors

被引:36
作者
Rahman A. [1 ]
Dabrowski J. [1 ]
McCulloch J. [1 ]
机构
[1] Data61, CSIRO
关键词
Forecasting; -; Errors; Lakes; Dissolution;
D O I
10.1016/j.inpa.2019.08.002
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
In this paper we have presented a novel approach to predict dissolved oxygen in prawn ponds. It is necessary to maintain dissolved oxygen above a certain level in the ponds for expected growth and survival of the prawns. An accurate prediction of dissolved oxygen can assist farmers to take necessary measures to maintain dissolved oxygen levels ideal for prawn growth. Existing approaches to dissolved oxygen prediction performs well on short term, however incurs high error on long term prediction. We propose a new approach where a group of predictors are developed where each model predicts a certain time stamps ahead. Each predictor is trained on sampled data so that it predicts a step ahead prediction only, however, the sampling process decides on the actual number of time stamp ahead prediction. Since step ahead predictor acts like a short term predictor, it incurs small error even at higher time stamp ahead prediction. Experimental results demonstrate that the proposed approach achieves significantly lower error on long term prediction compared to other existing approaches. © 2019
引用
收藏
页码:307 / 317
页数:10
相关论文
共 29 条
[1]  
Felix S.S., Advances in shrimp aquaculture management, (2009)
[2]  
Robertson C.E., (2006)
[3]  
Boyd C.E., Guidelines for aquaculture effluent management at the farm-level, Aquaculture, 226, 1-4, pp. 101-112, (2003)
[4]  
Ferreira N.C., Bonetti V., Seiffert W.Q., Hydrological and Water Quality Indices as management tools in marine shrimp culture, Aquaculture, 318, 3-4, pp. 425-433, (2011)
[5]  
Boyd C.E., Tucker C.S., Pond aquaculture water quality management, (1998)
[6]  
(2019)
[7]  
Han J.H., (2018)
[8]  
Khan U.T., Valeo C., A new fuzzy linear regression approach for dissolved oxygen prediction, Hydrol Sci J, 60, 6, pp. 1096-1119, (2005)
[9]  
Abba S.I., Hadi S.J., Abdullahi J., River water modelling prediction using multi-linear regression, artificial neural network, and adaptive neuro-fuzzy inference system techniques, Procedia Comput Sci, 120, pp. 75-82, (2017)
[10]  
Miao X., Deng C., Li X., Gao Y., He D., A hybrid neural network and genetic algorithm model for predicting dissolved oxygen in an aquaculture pond, Proc. International Conference on Web Information Systems and Mining (WISM), Sanya, pp. 415-419, (2010)