Yang Xiao Ming, Li Yi Xin, Zhu Guo Ping
College of Marine Sciences, Shanghai Ocean University, Shanghai 201306, China.
National Engineering Research Center for Oceanic Fisheries, Shanghai 201306, China.
Ying Yong Sheng Tai Xue Bao. 2016 Dec;27(12):4052-4058. doi: 10.13287/j.1001-9332.201612.008.
As a key species in the Antarctic ecosystem, the spatial distribution of Antarctic krill (thereafter krill) often tends to present aggregation characteristics, which therefore reflects the spatial patterns of krill fishing operation. Based on the fishing data collected from Chinese krill fishing vessels, of which vessel A was professional krill fishing vessel and Vessel B was a fishing vessel which shifted between Chilean jack mackerel (Trachurus murphyi) fishing ground and krill fishing ground. In order to explore the characteristics of spatial distribution pattern and their ecological effects of two obvious different fishing fleets under a high and low nominal catch per unit effort (CPUE), from the viewpoint of spatial point pattern, the present study analyzed the spatial distribution characteristics of krill fishery in the northern Antarctic Peninsula from three aspects: (1) the two vessels' point pattern characteristics of higher CPUEs and lower CPUEs at different scales; (2) correlation of the bivariate point patterns between these points of higher CPUE and lower CPUE; and (3) correlation patterns of CPUE. Under the analysis derived from the Ripley's L function and mark correlation function, the results showed that the point patterns of the higher/lo-wer catch available were similar, both showing an aggregation distribution in this study windows at all scale levels. The aggregation intensity of krill fishing was nearly maximum at 15 km spatial scale, and kept stably higher values at the scale of 15-50 km. The aggregation intensity of krill fishery point patterns could be described in order as higher CPUE of vessel A > lower CPUE of vessel B >higher CPUE of vessel B > higher CPUE of vessel B. The relationship of the higher and lo-wer CPUEs of vessel A showed positive correlation at the spatial scale of 0-75 km, and presented stochastic relationship after 75 km scale, whereas vessel B showed positive correlation at all spatial scales. The point events of higher and lower CPUEs were synchronized, showing significant correlations at most of spatial scales because of the dynamics nature and complex of krill aggregation patterns. The distribution of vessel A's CPUEs was positively correlated at scales of 0-44 km, but negatively correlated at the scales of 44-80 km. The distribution of vessel B's CPUEs was negatively correlated at the scales of 50-70 km, but no significant correlations were found at other scales. The CPUE mark point patterns showed a negative correlation, which indicated that intraspecific competition for space and prey was significant. There were significant differences in spatial point pattern distribution between vessel A with higher fishing capacity and vessel B with lower fishing capacity. The results showed that the professional krill fishing vessel is suitable to conduct the analysis of spatial point pattern and scientific fishery survey.
南极磷虾作为南极生态系统中的关键物种,其空间分布往往呈现聚集特征,进而反映了磷虾捕捞作业的空间格局。基于中国磷虾捕捞船只收集的捕捞数据,其中A船是专业磷虾捕捞船,B船是一艘在智利竹荚鱼渔场和磷虾渔场之间转换作业的捕捞船。为了探究在高、低名义单位捕捞量(CPUE)情况下两种明显不同捕捞船队的空间分布格局特征及其生态效应,本研究从空间点格局的角度,从三个方面分析了南极半岛北部磷虾渔业的空间分布特征:(1)两艘船在不同尺度下高CPUE和低CPUE的点格局特征;(2)高CPUE点与低CPUE点之间的双变量点格局相关性;(3)CPUE的相关格局。在基于Ripley's L函数和标记相关函数的分析下,结果表明,高/低可捕捞量的点格局相似,在本研究窗口的所有尺度水平上均呈现聚集分布。磷虾捕捞的聚集强度在15 km空间尺度时接近最大值,并在15 - 50 km尺度保持较高且稳定的值。磷虾渔业点格局的聚集强度依次为:A船高CPUE > B船低CPUE > B船高CPUE > B船高CPUE。A船高、低CPUE之间的关系在0 - 75 km空间尺度呈正相关,在75 km尺度之后呈现随机关系,而B船在所有空间尺度均呈正相关。高、低CPUE的点事件是同步的,由于磷虾聚集模式的动态性和复杂性,在大多数空间尺度上显示出显著相关性。A船CPUE的分布在0 - 44 km尺度呈正相关,但在44 - 80 km尺度呈负相关。B船CPUE的分布在50 - 70 km尺度呈负相关,但在其他尺度未发现显著相关性。CPUE标记点格局呈负相关,这表明种内对空间和猎物的竞争显著。捕捞能力较高的A船和捕捞能力较低的B船在空间点格局分布上存在显著差异。结果表明,专业磷虾捕捞船适合进行空间点格局分析和科学渔业调查。