Prediction of Successful Harvest of Vaname Shrimp Pond at PT FEI With Machine Learning Approach

Iryanti Djaja, A. A.Arviansyah
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Abstract

The demand for shrimp from Indonesia continues to increase every year, thus creating greater interest in the shrimp farming industry. Although shrimp is relatively easy to farm, many variables affect the success of the harvest. The harvest in shrimp farming is calculated using % SR (Survival Rate). In our research, we used machine learning approaches, namely decision tree (DT) and k-Nearest Neighbor (KNN). DT and KNN will be used to predict whether we will have a successful harvest. From these predictions, we also provide suggestions for business improvements to utilize data. The expected result of such advice is that the business can improve its performance and get more consistent results.
利用机器学习方法预测PT FEI钒虾池成功收获
印度尼西亚对虾的需求每年都在持续增长,因此对虾养殖业产生了更大的兴趣。虽然虾相对容易养殖,但许多变量影响着收获的成功。对虾养殖的收获用% SR(存活率)计算。在我们的研究中,我们使用了机器学习方法,即决策树(DT)和k近邻(KNN)。DT和KNN将用来预测我们是否会获得成功的收获。根据这些预测,我们还提供了利用数据进行业务改进的建议。这种建议的预期结果是,企业可以改善其绩效并获得更一致的结果。
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