详细信息
文献类型:会议论文
英文题名:Analysis of Machine Learning Methods for Water Quality Evaluation of Penaeus Vannamei
作者:Peng, Xiaohong[1]; Li, Zixin[1]; Ma, Zebin[1]; Zhang, Ying[1]
机构:[1] School of Mathematics and Computer Science, Guangdong Ocean University, Guangdong, Zhanjiang, China
会议论文集:Proceedings of the 2023 4th International Conference on Machine Learning and Computer Application, ICMLCA 2023
会议日期:October 27, 2023 - October 29, 2023
会议地点:Hangzhou, China
语种:英文
外文关键词:Aquaculture - Data mining - Decision trees - Deep learning - Farms - Learning systems - Nearest neighbor search - Quality control - Support vector machines
外文摘要:In global aquaculture, Penaeus vannamei stands out due to its immense economic importance. Water quality, being pivotal for its successful cultivation, demands precise evaluation techniques. This research undertook a meticulous systematic review and, leveraging data mining, crafted a rich dataset of 50,000 water quality samples pertinent to Penaeus vannamei. Diving deep into machine learning, we assessed four key algorithms: decision tree, Bayesian, k-nearest neighbor, and support vector machine, each tailored for intricate multi-feature multi-classification challenges. Of these, the Gaussian Parsimonious Bayes-based model was distinguished by its superior accuracy and efficiency. This study successfully applied machine learning techniques to develop a reliable and efficient water quality evaluation model for Penaeus vannamei farming, offering a scientific tool for the aquaculture industry and facilitating more efficient, scientifically informed farming management. This research contributes an innovative scientific approach and theoretical foundation for the sustainable growth of the aquaculture industry. ? 2023 ACM.
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