Identification of variables affecting production outcome in prawn ponds: A machine learning approach
A Rahman, S Arnold, JJ Dabrowski - Computers and electronics in …, 2019 - Elsevier
A Rahman, S Arnold, JJ Dabrowski
Computers and electronics in agriculture, 2019•ElsevierA number of variables can affect the harvest yield in prawn ponds including dissolved
oxygen, ammonia, pH, nitrite, and so on. A set of industry standards are there to maintain
these variables within specific ranges for maintaining ideal growing environments for the
prawns. However recent harvest results in a prominent prawn farm in South East Asia have
shown different performance across ponds even after maintaining these variables within the
industry standard ranges. An experiment was conducted recently to collect data on different …
oxygen, ammonia, pH, nitrite, and so on. A set of industry standards are there to maintain
these variables within specific ranges for maintaining ideal growing environments for the
prawns. However recent harvest results in a prominent prawn farm in South East Asia have
shown different performance across ponds even after maintaining these variables within the
industry standard ranges. An experiment was conducted recently to collect data on different …
Abstract
A number of variables can affect the harvest yield in prawn ponds including dissolved oxygen, ammonia, pH, nitrite, and so on. A set of industry standards are there to maintain these variables within specific ranges for maintaining ideal growing environments for the prawns. However recent harvest results in a prominent prawn farm in South East Asia have shown different performance across ponds even after maintaining these variables within the industry standard ranges. An experiment was conducted recently to collect data on different influence variables (mentioned above) by measuring them at different times over the whole prawn growing season. We have conducted a set of analytical experiments on this data set using machine learning methods to answer three questions: (1) What level of predictive power do the influence variables have i.e. how well they can differentiate between good and bad performing ponds, (2) What is the relative importance of influence variables in predicting pond performance, and (3) How the perceived variables influence the harvest metrics. The paper presents a set of machine learning based analytical approaches undertaken to answer these questions.
Elsevier
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