Statistical analysis of the effects of environmental factors and fish species on class-sorted phytoplankton composition in aquaculture ponds in northern Thailand

Truc-Ly Le-Huynh, N. Iwami, N. Whangchai, Redel Gutierrez, K. Shimizu, T. Itayama
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Abstract

Understanding the phytoplankton in aquaculture ponds is critical for proper pond management. Despite the importance, the relationships between phytoplankton composition, cultured fish type, season, and nutrients were not well understood. This study statistically investigated these relationships in aquaculture ponds. Data collected at 21 tilapia and 13 catfish ponds in September 2009 (wet season), December 2009 (cold season), and March 2010 (hot season) in northern Thailand were used for the analysis. The statistical analysis showed that PO4-P and NH4-N concentrations in catfish ponds were significantly higher than in tilapia ponds (p < 0.05, Wilcoxon test). The cyanobacterial abundance in catfish ponds was significantly greater than in tilapia ponds (p < 0.05, Wilcoxon test). In the hot season (March), green algae were abundant (p < 0.05), while cyanobacteria were depleted (p < 0.05). Multiple linear regression model was applied to determine important factors for statistically explaining cyanobacterial abundance. The result indicated that the best model selected by AICc included season and pond type as factors influencing cyanobacterial abundance but not nutrients. However, since the effect of nutrients was included in the difference in nutrient concentration due to the difference in fish species in the ponds, it was speculated that nutrients were insignificant as explanatory variables. Furthermore, it was hypothesized that cyanobacterial abundance was reduced in March (hot season) because the predation of cyanobacteria by tilapia may be encouraged at high temperature.
环境因子和鱼种对泰国北部水产养殖池塘浮游植物分类组成影响的统计分析
了解水产养殖池塘中的浮游植物对正确的池塘管理至关重要。尽管具有重要意义,但浮游植物组成、养殖鱼类类型、季节和营养物质之间的关系尚未得到很好的理解。本研究对水产养殖池塘的这些关系进行了统计调查。分析使用了2009年9月(雨季)、2009年12月(寒冷季节)和2010年3月(炎热季节)在泰国北部21个罗非鱼和13个鲶鱼池塘收集的数据。统计分析表明,鲶鱼池中PO4-P和NH4-N浓度显著高于罗非鱼池(p < 0.05, Wilcoxon检验)。鲶鱼池蓝藻丰度显著高于罗非鱼池(p < 0.05, Wilcoxon检验)。在炎热季节(3月),绿藻丰富(p < 0.05),蓝藻减少(p < 0.05)。采用多元线性回归模型确定蓝藻丰度统计解释的重要因素。结果表明,AICc选择的最佳模型包括季节和池塘类型作为蓝藻丰度的影响因素,而不包括营养成分。但由于鱼种不同导致的营养物浓度差异中包含了营养物的影响,推测营养物作为解释变量不显著。此外,假设蓝藻丰度在3月(炎热季节)减少,因为罗非鱼在高温下可能会促进蓝藻的捕食。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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